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The impact of non-frozen turbulence on the modelling of the noise from serrated trailing edges

Published online by Cambridge University Press:  12 August 2024

H. Tian
Affiliation:
State Key Laboratory for Turbulence and Complex Systems, College of Engineering, Peking University, No. 5 Yiheyuan Road, Haidian District, Beijing 100871, PR China
B. Lyu*
Affiliation:
State Key Laboratory for Turbulence and Complex Systems, College of Engineering, Peking University, No. 5 Yiheyuan Road, Haidian District, Beijing 100871, PR China Laoshan Laboratory, Qingdao 266100, PR China
*
Email address for correspondence: [email protected]

Abstract

Serrations are commonly employed to mitigate the turbulent boundary layer trailing-edge noise. However, significant discrepancies persist between model predictions and experimental observations. In this paper, we show that this results from the frozen turbulence assumption. A fully developed turbulent boundary layer over a flat plate is first simulated using the large-eddy simulation method, with the turbulence at the inlet generated using the digital filter method. The space–time correlations and spectral characteristics of wall pressure fluctuations are examined. The simulation results demonstrate that the coherence function decays in the streamwise direction, deviating from the constant value of unity assumed in the frozen turbulence assumption. By considering an exponential decay function, we relax the frozen turbulence assumption and develop a prediction model that accounts for the intrinsic non-frozen nature of turbulent boundary layers. To facilitate a direct comparison with frozen models, a correction coefficient is introduced to account for the influence of non-frozen turbulence. The comparison between the new and original models demonstrates that the new model predicts lower noise reductions, aligning more closely with the experimental observations. The physical mechanism underlying the overprediction of the noise model assuming frozen turbulence is discussed. The overprediction is due to the decoherence of the phase variation along the serrated trailing edge. Consequently, the ratio of the serration amplitude to the streamwise frequency-dependent correlation length is identified as a crucial parameter in determining the correct prediction of far-field noise.

Type
JFM Papers
Copyright
© The Author(s), 2024. Published by Cambridge University Press

1. Introduction

Trailing-edge (TE) noise is a major concern in various industrial applications, including wind turbines, cooling fans and turbo-machinery. As a turbulent boundary layer convects past a trailing edge, pressure fluctuations beneath the boundary layer scatter into sound, leading to noise emissions. Inspired by the silent flight of owls (Jaworski & Peake Reference Jaworski and Peake2020), serrated trailing edges have emerged as a promising approach to reduce this noise.

Extensive research has been conducted to investigate the effectiveness of serrated trailing edges in reducing noise. Howe (Reference Howe1991a,Reference Howeb) first developed an analytical model to predict the scattered noise from serrated trailing edges, and found that sharp sawtooth serrations are effective in suppressing TE noise. However, the experimental studies conducted by Gruber (Reference Gruber2012) showed that Howe's model significantly overpredicted the noise reduction due to TE serrations. Based on a Fourier expansion technique, Lyu, Azarpeyvand & Sinayoko (Reference Lyu, Azarpeyvand and Sinayoko2016) extended the theory of Amiet (Reference Amiet1976) to sawtooth trailing edges. Their model yielded a more realistic noise reduction prediction compared to Howe's model. It was shown that the mechanism underlying the noise reduction was the destructive interference effects of the scattered pressure due to the presence of serrations. Two parameters were identified to be important in effectively reducing TE noise. Recently, Ayton (Reference Ayton2018) presented an analytical model based on the Wiener–Hopf method, and applied this model to five test-case TE geometries. Furthermore, Lyu & Ayton (Reference Lyu and Ayton2020) simplified Ayton's model by approximating the infinite interval involving two infinite sums, and the resulting model consumes much less time when evaluated. However, as a semi-infinite flat plate was assumed, the solution was strictly two-dimensional (2-D) – the predicted sound pressure decays as $1/\sqrt {r}$, where $r$ is the cylindrical radial distance of the observer – rendering it difficult to use in applications involving rotating blades (Lyu Reference Lyu2023). In most practical applications, however, blades are in a state of rotation during their operation, such as the propellers of drones. Halimi, Marinus & Larbi (Reference Halimi, Marinus and Larbi2019) investigated the broadband noise from a small remotely piloted aircraft (RPA) propeller with sawtooth serrations using the first-order approximation of Lyu's model. Tian & Lyu (Reference Tian and Lyu2022) conducted a theoretical investigation on the noise emitted from three kinds of rotating serrated blades using the second-order approximation. The three-dimensional (3-D) directivity patterns of an isolated flat plate were found to be important for the far-field noise characteristics of a rotating blade. A comprehensive review of the TE noise and noise reduction studies can be found in a recent paper by Lee et al. (Reference Lee, Ayton, Bertagnolio, Moreau, Chong and Joseph2021).

Despite the valuable insights provided by theoretical models, indispensable discrepancies still exist between the latest analytical predictions and experimental results (Oerlemans et al. Reference Oerlemans, Fisher, Maeder and Kögler2009; Arce-León et al. Reference Arce-León, Ragni, Pröbsting, Scarano and Madsen2016; Zhou et al. Reference Zhou, Liu, Zhong, Fang and Zhang2020). In a recent study, Zhou et al. (Reference Zhou, Liu, Zhong, Fang and Zhang2020) conducted anechoic wind tunnel experiments to investigate the effect of serration shape and flexibility on TE noise. Their findings demonstrated that the new analytical model proposed by Lyu & Ayton (Reference Lyu and Ayton2020) still notably overpredicted the noise reduction capacity achieved by serrations. Given that all these analytical prediction models rely on the statistics of the wall pressure fluctuations as inputs, an accurate characterization of these fluctuations is crucial to an accurate noise prediction.

Comprehensive reviews on the features of the wall pressure fluctuations can be found in the works of Willmarth (Reference Willmarth1975) and Bull (Reference Bull1996). In general, the temporal and spatial characteristics of the wall pressure fluctuations on a flat plate can be described in terms of the wavenumber–frequency spectrum, which exhibits two distinct regions. The first region is called the acoustic domain (Blake Reference Blake2012; Gloerfelt & Berland Reference Gloerfelt and Berland2013), where the phase speed is equal to or greater than the speed of sound, enabling efficient radiation to the far field. The second region, referred to as the convected domain, comprises wave components that travel at speeds slower than the speed of sound. Pressure fluctuations in the convected domain exhibit significantly higher magnitudes compared to those observed in the acoustic domain, and are related to the scattering process of the TE noise. In practice, semi-empirical wall pressure spectrum models are commonly used in analytical noise predictions, such as the Corcos model (Corcos Reference Corcos1964), the Chase model (Chase Reference Chase1987), and the Goody model (Goody Reference Goody2004). Semi-empirical models are usually formulated empirically according to certain scaling laws. Hwang, Bonness & Hambric (Reference Hwang, Bonness and Hambric2009) conducted a comparison of the frequency spectra calculated using nine semi-empirical models, and found that the Goody model could provide the best overall estimation for zero pressure gradient flows. This conclusion was also confirmed by Lee (Reference Lee2018), and a new empirical model was developed in Lee's work that could provide more accurate results for both flat plates and aerofoils. Recently, the TNO model has shown promise in obtaining the surface pressure wavenumber–frequency spectrum (Stalnov, Chaitanya & Joseph Reference Stalnov, Chaitanya and Joseph2016), and could potentially improve noise prediction performance compared to other empirical models (Mayer et al. Reference Mayer, Lyu, Jawahar and Azarpeyvand2019).

One of the most important assumptions made in modelling the turbulent flow is Taylor's hypothesis of frozen turbulence (Taylor Reference Taylor1938). Taylor hypothesized that the spatial patterns of turbulent motions are carried past a fixed point at the convection velocity without changing significantly. The frozen turbulence assumption depicted a simple scenario that could provide significant convenience in developing analytical models. However, the applicability of this assumption was open to some debate. Lin (Reference Lin1953) has shown that this hypothesis is not applicable in cases of high shear flows, such as turbulent boundary layers and the mixing region of a jet. The large-scale shear flows induce the distortions of small eddies as they are carried downstream (Zhao & He Reference Zhao and He2009). Subsequently, numerous studies have focused on assessing the validity and improving Taylor's hypothesis (Fisher & Davies Reference Fisher and Davies1964; Wills Reference Wills1964; Dennis & Nickels Reference Dennis and Nickels2008; Del Álamo & Jiménez Reference Del Álamo and Jiménez2009; Renard & Deck Reference Renard and Deck2015; He, Jin & Yang Reference He, Jin and Yang2017). Fisher & Davies (Reference Fisher and Davies1964) pointed out that when intensity is high, different turbulent spectral components appear to travel at different speeds. Furthermore, under the frozen turbulence assumption, the energy spectrum obtained in a frame of reference moving with the convection velocity contains only components of zero frequency. However, the experimental results of Fisher & Davies (Reference Fisher and Davies1964) showed that the energy was spread over a considerable band of frequencies for the shear flows. In the region of high shear stress within a turbulent channel flow, Del Álamo & Jiménez (Reference Del Álamo and Jiménez2009) showed that the phase velocity of the modes with long wavelengths was higher than the local mean velocity. They also proposed a method to determine the convection velocity that relies solely on the spectral information in the temporal or spatial direction. Considering that the frozen turbulence assumption implied a first-order approximation, He & Zhang (Reference He and Zhang2006) developed an elliptic model based on a second-order approximation. Two characteristic velocities were utilized in this model, i.e. a convection velocity and a velocity that characterizes the distortion of flow patterns. The elliptic model can be used to reconstruct space–time correlations from temporal correlations, and has been validated in turbulent channel flows (Zhao & He Reference Zhao and He2009), turbulent boundary layers (Wang, Guan & Jiang Reference Wang, Guan and Jiang2014) and turbulent Rayleigh–Bénard convection (He et al. Reference He, Funfschilling, Nobach, Bodenschatz and Ahlers2012).

For the prediction of TE noise, most previous analytical models adopted the frozen turbulence assumption to facilitate a quick estimation, which may be a potential contributor to the discrepancies between models and experiments. Recently, several experimental and numerical studies (Avallone, Pröbsting & Ragni Reference Avallone, Pröbsting and Ragni2016; Avallone et al. Reference Avallone, Van Der Velden, Ragni and Casalino2018; Zhou et al. Reference Zhou, Liu, Zhong, Fang and Zhang2020; Pereira et al. Reference Pereira, Avallone, Ragni and Scarano2022) have called into question the use of the frozen turbulence assumption. Therefore, it is necessary to explore to what extent the frozen turbulence assumption approximates the real turbulent statistics and to develop methods for incorporating the non-frozen effect in noise prediction models.

This paper is structured as follows. Section 2 shows a statistical description of wall pressure fluctuations. Section 3 describes the numerical set-up employed to simulate a fully-developed turbulent boundary layer. The correlation and spectral features of wall pressure fluctuations are examined. Subsequently, in § 4, a new model that accounts for the non-frozen effect is proposed, and the corresponding prediction results are presented. Section 5 elucidates the physical mechanism behind the noise reduction when non-frozen turbulence is taken into consideration. The final section concludes the present paper and lists our future work.

2. The statistical description of the wall pressure fluctuations

In this paper, we will consider a turbulent boundary layer that develops on a flat plate under a zero mean pressure gradient. In TE noise modelling, the statistical spectrum of the wall pressure fluctuations beneath a turbulent boundary layer is often used as an input. We define some of the key quantities in this section. The space–time correlation of the wall pressure fluctuations $p^\prime (\boldsymbol {x},t)$ at position $\boldsymbol {x}=(x,z)$ at time $t$ is defined by

(2.1)\begin{equation} Q_{pp}(\boldsymbol{x},t;\boldsymbol{\xi},\tau) = \langle\, p^\prime(\boldsymbol{x},t)\,p^\prime(\boldsymbol{x}+\boldsymbol{\xi},t+\tau)\rangle, \end{equation}

where $\boldsymbol {\xi }=(\xi,\eta )$, $\xi$ and $\eta$ are the spatial separations in the streamwise and spanwise directions respectively, and $\tau$ is the time delay. As the turbulent boundary layer develops slowly in the streamwise direction, the flow field may be regarded as homogeneous in the directions parallel to the wall and stationary in time within the scales of interest. Thus we have $Q_{pp}(\boldsymbol {x},t;\boldsymbol {\xi },\tau )\approx Q_{pp}(\boldsymbol {\xi },\tau )$. The correlation coefficient is then defined by

(2.2)\begin{equation} R_{pp}(\xi,\eta,\tau) = \dfrac{Q_{pp}(\xi,\eta,\tau)}{Q_{pp}(0,0,0)}. \end{equation}

The streamwise and spanwise integral lengths can be defined as

(2.3)\begin{gather} \varLambda_x = \int_{-\infty}^{\infty}|R_{pp}(\xi,0,0)|\,\mathrm{d}\xi, \end{gather}
(2.4)\begin{gather} \varLambda_z = \int_{-\infty}^{\infty}|R_{pp}(0,\eta,0)|\,\mathrm{d}\eta. \end{gather}

The spectral density of wall pressure fluctuations can be obtained by performing the Fourier transform of the space–time correlation. In the frequency domain, the single-point spectrum $\phi (\omega )$ is expressed as

(2.5)\begin{equation} \phi(\omega)=\dfrac{1}{2{\rm \pi}}\int_{-\infty}^{\infty}Q_{pp}(0,0,\tau)\,\mathrm{e}^{-\mathrm{i}\omega \tau}\,\mathrm{d}\tau, \end{equation}

where $\omega =2{\rm \pi} f$ is the angular frequency, and $f$ is the frequency. Similarly, the cross-spectral density is defined by

(2.6)\begin{equation} G_{pp}(\xi,\eta,\omega)=\dfrac{1}{2{\rm \pi}}\int_{-\infty}^{\infty}Q_{pp}(\xi,\eta,\tau)\,\mathrm{e}^{-\mathrm{i}\omega\tau}\,\mathrm{d}\tau. \end{equation}

Making use of the single-point spectrum and the cross-spectral density, the coherence function can be defined as

(2.7)\begin{equation} \gamma^2(\xi,\eta,\omega)=\dfrac{|G_{pp}(\xi,\eta,\omega)|^2}{\phi(\omega)^2}. \end{equation}

In (2.3) and (2.4), we have defined the streamwise and spanwise integral lengths based on the correlation coefficients, which are independent of frequency. However, it is known that the spatial correlation of the pressure fluctuations varies with frequency. Therefore, we introduce the frequency-dependent correlation lengths defined as

(2.8)\begin{gather} l_x(\omega)= \int_{0}^{\infty}\gamma(\xi,0,\omega)\,\mathrm{d}\xi, \end{gather}
(2.9)\begin{gather} l_z(\omega)= \int_{0}^{\infty}\gamma(0,\eta,\omega)\,\mathrm{d}\eta. \end{gather}

As will be seen, the characteristics of $l_{x,z}$ differ significantly from those of $\varLambda _{x,z}$, and they have significant implications in noise predictions.

To obtain the wavenumber–frequency spectrum of the wall pressure fluctuations, we perform spatial Fourier transforms on the cross-spectral density, resulting in the definition of the wavenumber–frequency spectrum,

(2.10)\begin{equation} \varPi(k_1,k_2,\omega)=\dfrac{1}{(2{\rm \pi})^2}\int_{-\infty}^{\infty}\int_{-\infty}^{\infty}G_{pp}(\xi,\eta,\omega) \exp({\mathrm{i}(k_1\xi+k_2\eta)})\,\mathrm{d}\xi\,\mathrm{d}\eta, \end{equation}

where $k_1$ and $k_2$ are wavenumbers in the streamwise and spanwise directions, respectively.

The wavenumber–frequency spectrum describes the spectral distribution of energy in wall pressure fluctuations and serves as a key input in TE noise prediction models. The highest levels of pressure fluctuations typically occur within a specific region centred around $k_1=\omega /U_c$, $k_2=0$, where $U_c$ is the convection velocity. This region is the so-called convective ridge. The idea that slowly distorting eddies are convected downstream by the mean flow at a fixed velocity is useful in the study of turbulent shear flows, and is particularly important in the research of aerodynamic noise (Wills Reference Wills1964). Various approaches exist for defining the convection velocity (Hussain & Clark Reference Hussain and Clark1981), and a comprehensive review of the convection velocity datasets in turbulent shear flows was conducted by Renard & Deck (Reference Renard and Deck2015). In general, the convection velocity should not be treated as a constant value. This is because eddies of different sizes can convect at different velocities, and so do the eddies with different time scales. Therefore, in general, the convection velocity can be expressed as a function of time delay $\tau$ and streamwise separation $\xi$, or as a function of frequency $\omega$ and streamwise wavenumber $k_1$ in the spectral domain.

Obtaining a well-resolved space–time flow field database is often challenging or impractical in real-world scenarios. As a result, it becomes necessary to reconstruct the wavenumber–frequency spectrum from either the space or time datasets based on the statistical characteristics of the turbulent boundary layer. Taylor (Reference Taylor1938) proposed the well-known hypothesis that turbulent eddies convect uniformly and unchangingly past a fixed point as if the spatial patterns of the flow field are ‘frozen’. Under this frozen turbulence assumption, the correlation function satisfies (Bull Reference Bull1967)

(2.11)\begin{equation} Q_{pp}(\xi,\eta,\tau)=Q_{pp}(\xi-U_c\tau,\eta,0). \end{equation}

The streamwise coherence function can be found readily as a constant from (2.7), i.e.

(2.12)\begin{equation} \gamma(\xi,0,\omega)=1. \end{equation}

This implies that the eddy patterns exhibit perfect coherence in the streamwise direction at all frequencies as they convect downstream. The frozen turbulence assumption has been employed widely due to its simplicity in modelling the wavenumber–frequency spectrum. However, in a real turbulent boundary layer, the eddies undergo distortions caused by the mean shear (Fisher & Davies Reference Fisher and Davies1964). This implies that the streamwise coherence would decay as $\xi$ increases. In such cases, assuming a constant streamwise coherence function may introduce large errors when used in noise prediction models. Therefore, gaining a more comprehensive understanding of the spatial coherence of wall pressure fluctuations, especially the frequency-dependent correlation lengths, is crucial. In the next section, a numerical investigation will be conducted to examine in detail the characteristics of wall pressure fluctuations.

3. Numerical simulation of a turbulent boundary layer

3.1. Numerical set-up

To investigate the space–time correlations and spectral characteristics of wall pressure fluctuations, we use the wall-resolved large-eddy simulation (LES) method to simulate a fully-developed turbulent boundary layer over a flat plate. Considering that in many applications where TE noise is important the Mach number is relatively low, we choose to perform an incompressible simulation. Compared to the direct numerical simulation (DNS) method, LES require fewer grid points for wall-resolved simulations (Schlatter et al. Reference Schlatter, Li, Brethouwer, Johansson and Henningson2010), leading to less computational resource demands. The LES method solves the spatially filtered Navier–Stokes equations using a subgrid-scale (SGS) model. For incompressible flows, the filtered momentum and continuity equations can be expressed as

(3.1)\begin{gather} \dfrac{\partial \bar{u}_i}{\partial t}+\dfrac{\partial}{\partial x_j}(\bar{u}_i\bar{u}_j)=-\dfrac{1}{\rho_0}\,\dfrac{\partial\bar{p}}{\partial x_i}+\nu\,\dfrac{\partial^2\bar{u}_i}{\partial x_j\,\partial x_j}-\dfrac{\partial \tau_{ij}}{\partial x_j},\quad i=1,2,3, \end{gather}
(3.2)\begin{gather} \dfrac{\partial \bar{u}_j}{\partial x_j}=0, \end{gather}

where the overbar denotes filtered variables with a filter width $\Delta$, $t$ is the time, $u_i$ is the velocity component in the $x_i$-direction (also denoted as $u$, $v$ or $w$), $\rho _0$ is the density, $p$ is the pressure, and $\nu$ is the kinematic viscosity. The contributions from SGS components are represented through the SGS stresses $\tau _{ij}=\overline {u_iu_j}-\bar {u}_i\bar {u}_j$, which need to be modelled. Following the eddy-viscosity assumption, the SGS stress can be modelled as

(3.3)\begin{equation} \tau_{ij}-\tfrac{1}{3}\,\delta_{ij}\tau_{kk}=-2\nu_T\bar{{\mathsf{S}}}_{ij}, \end{equation}

where $\delta _{ij}$ is the Kronecker delta, and $\bar {{\mathsf{S}}}_{ij} = (\partial \bar {u}_i/\partial x_j+\partial \bar {u}_j/\partial x_i)/2$ is the large-scale strain-rate tensor. The SGS viscosity $\nu _{T}$ can be calculated using various models. In this study, the wall-adapting local eddy-viscosity (WALE) model (Nicoud & Ducros Reference Nicoud and Ducros1999) is used due to its ability to account for the wall effect on the turbulent structure. The value of $\nu _T$ is obtained as

(3.4) \begin{equation} \nu_T =C_w^2\varDelta^2\,\dfrac{({\mathsf{S}}_{ij}^d{\mathsf{S}}_{ij}^d)^{{3}/{2}}}{(\bar{{\mathsf{S}}}_{ij}\bar{{\mathsf{S}}}_{ij})^{{5}/{2}}+({\mathsf{S}}_{ij}^d{\mathsf{S}}_{ij}^d)^{{5}/{4}}}, \end{equation}

where $C_w$ is a constant coefficient, and ${\mathsf{S}}_{ij}^d$ is the traceless symmetric part of the square of the velocity gradient tensor,

(3.5)\begin{equation} {\mathsf{S}}_{ij}^d=\tfrac{1}{2}\left(\bar{{\mathsf{g}}}_{ij}^2+\bar{{\mathsf{g}}}_{ji}^2\right)-\tfrac{1}{3}\delta_{ij}\bar{{\mathsf{g}}}_{kk}^2. \end{equation}

Here, $\bar {{\mathsf{g}}}_{ij}={\partial \bar {u}_i}/{\partial x_j}$.

For the turbulent inlet boundary condition, we use the synthetic turbulent inflow generator. The generator employs a 2-D filter to produce spatially correlated 2-D slices of data. The instantaneous velocity on the slice is computed as

(3.6)\begin{equation} u_i=\bar{u}_i+{\mathsf{a}}_{ij}\varPsi_j, \end{equation}

where $\varPsi _j$ denotes the filtered fluctuating velocity field, and ${\mathsf{a}}_{ij}$ is the amplitude tensor, which is related to the Reynolds stresses tensor ${\mathsf{R}}_{ij}$ by

(3.7) \begin{equation} {\mathsf{a}}_{ij} = \begin{bmatrix} \sqrt{{\mathsf{R}}_{11}} & 0 & 0\\ \dfrac{{\mathsf{R}}_{21}}{{\mathsf{a}}_{11}} & \sqrt{{\mathsf{R}}_{22}-{\mathsf{a}}_{21}^2} & 0\\ \dfrac{{\mathsf{R}}_{31}}{{\mathsf{a}}_{11}} & \dfrac{{\mathsf{R}}_{32}-{\mathsf{a}}_{22}{\mathsf{a}}_{31}}{{\mathsf{a}}_{22}} & \sqrt{{\mathsf{R}}_{33}-{\mathsf{a}}_{31}^2-{\mathsf{a}}_{32}^2}\\ \end{bmatrix}. \end{equation}

By applying spatial and temporal filters to the random array sequences, we can introduce the desired temporal and spatial correlations in the instantaneous velocity fluctuations. The spatial turbulent length scale is defined by the two-point correlation, which is given by

(3.8)\begin{equation} L_i^j(\boldsymbol{x})=\int_0^\infty\dfrac{\overline{u_i'(\boldsymbol{x})\,u_i'(\boldsymbol{x}+\boldsymbol{e}_jr)}}{\overline{u_i'(\boldsymbol{x})\,u_i'(\boldsymbol{x})}}\,\mathrm{d}r, \end{equation}

where $r$ is the spatial separation in the $j$-direction, and $u_i'(\boldsymbol {x})$ denotes the velocity fluctuations. The parameters required to generate a turbulent inlet condition using the digital filter method (DFM) include the profiles of the mean velocity, turbulent Reynolds stresses and turbulent length scales. These parameters can be obtained through various approaches, such as precursor DNS, modelling from a Reynolds-averaged Navier–Stokes computation, or measurements from experiments. In this work, the mean velocity and turbulent Reynolds stresses are obtained from the DNS data provided by Schlatter & Örlü (Reference Schlatter and Örlü2010). The Reynolds number at the inlet, based on the momentum thickness $\theta$ and the free-stream velocity $U_0$, is set to 1410. Regarding the turbulent length scale $L_u^x$, a constant value may be prescribed. Following Wang et al. (Reference Wang, Vita, Fraga, Lyu, Wang and Hemida2022), $L_u^x$ is set to the boundary layer thickness scaled by a factor 0.6, and other turbulent length scales can be prescribed based on $L_u^x$. Table 1 shows the nine turbulent length scales used at the inlet with the DFM, where $\delta _{in}$ denotes the boundary layer thickness at the inlet.

Table 1. Turbulent length scales used in the inlet boundary condition.

The numerical simulation in this study is conducted using OpenFOAM-v2206. The computational domain, as illustrated in figure 1, has dimensions $50\delta _{in}\times 3.3\delta _{in}\times 3\delta _{in}$ in the streamwise ($x$), wall-normal ($y$), and spanwise ($z$) directions, respectively. The mesh cells are distributed exponentially along the $y$-axis and placed uniformly along the streamwise and spanwise directions. Table 2 lists detailed parameters employed in this study. To ensure grid independence, both fine and coarse meshes are tested, and the results of the grid independence test can be found in Appendix A.

Figure 1. Computational domain of the LES and an instantaneous flow field from the inlet to $19\delta _{in}$ downstream. The flow is visualized using the Q-criterion ($Q=2.5\times 10^4$) and coloured by the streamwise velocity (with levels increasing, the colour changes from blue to red).

Table 2. Grid information and free-stream velocity for the LES of a spatially developing turbulent boundary layer.

For the velocity boundary condition, a slip condition is used on the top wall, while a no-slip condition is imposed on the bottom wall. In the lateral direction, a periodic boundary condition is employed to simulate an infinite domain. At the outlet, the inletOutlet boundary condition is imposed. Regarding the pressure boundary conditions, all boundaries are set to zero gradient except for the top boundary, where a fixed pressure is prescribed.

3.2. Numerical results

In this subsection, we present the simulation results of a spatially developing turbulent boundary layer using the LES method. The turbulent statistics are obtained after the flow field reaches a statistically stationary state. The LES data are used to show the spatial evolution of the flow structures, validate the flow statistics, and examine the statistical characteristics of wall pressure fluctuations.

3.2.1. Flow field

An instantaneous flow field is visualized using an isosurface of the Q-criterion, as shown in figure 1. The computational domain is sufficiently long in the streamwise direction, and the flow region from the inlet to $19\delta _{in}$ downstream is selected for visualization. It can be seen that the unsteady flow structures generated at the inlet are not physical. But these unphysical structures quickly decay and the flow becomes more physical after approximately $10 \delta _{in}$. Similar phenomena can be seen in figure 2, where instantaneous snapshots of the flow field are displayed. Figure 2(a) shows the side view of the instantaneous streamwise velocity field in the $x$$y$ plane, while figure 2(b) shows the overview in the $x$$z$ plane located at $y=0.3\delta _{in}$. The visualization demonstrates that artificial turbulent structures are instigated at the inlet, preserved for a short distance downstream, and subsequently replaced by more physical structures.

Figure 2. Instantaneous snapshots of the streamwise velocity: (a) side view in the $x$$y$ plane, and (b) overview in the $x$$z$ plane at $y=0.3\delta _{in}$.

Flow statistics are obtained by averaging over the spanwise direction $z$ and time $t$. Therefore, the streamwise velocity can be decomposed into $u=U+u^\prime$, where $U$ and $u^\prime$ denote the mean velocity and the fluctuating velocity, respectively. The wall shear stress can be calculated as $\tau _w=\mu (\mathrm {d}U/\mathrm {d} y)|_{y=0}$, where $\mu$ is the dynamic viscosity. The friction velocity is defined as $u_{\tau }=\sqrt {\tau _w/\rho _0}$, and the characteristic length is given by $l_{\star }=\nu /u_{\tau }$. Therefore, the mean velocity and distance normal to the wall can be expressed in non-dimensional forms as $U^+=U/u_{\tau }$ and $y^+=y/l_{\star }$, respectively. In the subsequent analysis, the streamwise location $x=40\delta _{in}$ is used as the reference position. Table 3 provides the parameters of the turbulent boundary layer at this position.

Table 3. Turbulent boundary layer parameters at the streamwise location $x=40\delta _{in}$.

Figure 3 shows the distributions of the mean velocity and turbulent Reynolds stress components. The simulated mean velocity exhibits good agreement with values obtained by Wang et al. (Reference Wang, Vita, Fraga, Lyu, Wang and Hemida2022) using the dynamic Smagorinsky model, as shown in figure 3(a). In the near-wall region, the simulated mean velocity profile collapses well with the linear law. However, in the logarithmic region, both the simulation results of the present study and Wang et al. (Reference Wang, Vita, Fraga, Lyu, Wang and Hemida2022) slightly deviate from the log law. From figure 3(b), we can see that the simulated velocity fluctuations and Reynolds shear stress are in good agreement with DNS results. Slight deviations from the DNS profile can be seen for the ${u^{\prime +}_{rms}}$ profile in both the present study and the work of Wang et al. (Reference Wang, Vita, Fraga, Lyu, Wang and Hemida2022), which might be attributed to the artificial inflow-boundary condition employed in these two works. Nevertheless, figure 3 shows that the present LES capture essential flow physics.

Figure 3. Profiles of mean flow statistics at $x=40\delta _{in}$: (a) velocity and (b) Reynolds shear stress as well as streamwise, spanwise and wall-normal velocity fluctuations.

3.2.2. Properties of wall pressure fluctuations

In this part, we examine the statistical characteristics of wall pressure fluctuations. The key properties for noise predictions such as the frequency-dependent correlation lengths are presented here, and other properties, such as space–time correlations, can be found in Appendix B.

Figure 4 shows the single-point spectrum of the pressure fluctuations obtained using Welch's method (Welch Reference Welch1967) and normalized by the dynamic pressure $q_{\infty }=\rho _0U_0^2/2$ and the displacement thickness $\delta ^\ast$. The simulated pressure spectrum exhibits two distinct regimes: a $-1$ scaling regime, and a $-5$ scaling regime. The $-1$ scaling is associated with the eddies present in the logarithmic region of the boundary layer. These eddies contribute to the energy distribution in the low-frequency range of the spectrum. On the other hand, the $-5$ scaling, appeared in the high-frequency range, is related to the presence of smaller-scale eddies within the buffer layer (Blake Reference Blake2012).

Figure 4. Single-point spectrum scaled with outer parameters.

The mean convection velocity $\bar {U}_c$ can be estimated by determining the time delay $\tau$ corresponding to the correlation peak shown in figure 25 of Appendix B for a fixed spatial separation $\xi$, i.e.

(3.9)\begin{equation} \bar{U}_c(\xi)=\dfrac{\xi}{\tau}. \end{equation}

On the other hand, to obtain a frequency-dependent convection velocity, we can use the cross-spectral density $G_{pp}(\xi,\eta,\omega )$, which is a complex function (Gloerfelt & Berland Reference Gloerfelt and Berland2013). Let $\theta _p(\xi,\omega )$ denotes the phase of $G_{pp}(\xi,0,\omega )$. Then the phase velocity $U_{cp}(\xi,\omega )$ can be determined by (Farabee & Casarella Reference Farabee and Casarella1991)

(3.10)\begin{equation} U_{cp}(\xi,\omega)=-\dfrac{\omega \xi}{\theta_p(\xi,\omega)}. \end{equation}

The cross-spectral density can be written as

(3.11)\begin{equation} G_{pp}(\xi,\eta,\omega)=|G_{pp}(\xi,\eta,\omega)|\,\mathrm{e}^{-\mathrm{i}\xi\omega/U_{cp}(\xi,\omega)}. \end{equation}

The exponential term in (3.11) represents the convection behaviour of turbulent eddies, where the phase velocity is expected to be dependent on the frequency $\omega$ and the separation distance $\xi$.

Figure 5(a) shows the comparison between the simulated mean convection velocity and the experimental measurements by Bull (Reference Bull1967). It can be seen that there is good agreement between the two. As the streamwise separation increases, the mean convection velocity also increases and approaches 0.8. Note that most serration amplitudes are within $10\unicode{x2013}20\delta ^\ast$. The variation of the mean convection velocity $\bar {U}_c$ is very small in these distances. Figure 5(b) shows the variations of the phase velocity as functions of frequency for various fixed streamwise separations. The convection velocities calculated using the empirical models proposed by Smol'yakov (Reference Smol'yakov2006) and Bies (Reference Bies1966) (see Appendix C) are also shown for comparison. It is evident that the phase velocity increases with increasing streamwise separation, and as the frequency increases, the phase velocity rises rapidly, reaches a peak velocity, and then decays slowly. This suggests that the assumption of frozen turbulence, which assumes that all eddies in the turbulent boundary layer convect at the same velocity, is not strictly valid (Farabee & Casarella Reference Farabee and Casarella1991). Both the Smol'yakov model and the Bies model agree with the numerical results at intermediate and high frequencies, but the Bies model fails to capture the characteristics at low frequencies.

Figure 5. (a) Comparison of the mean convection velocity. (b) Phase velocity as a function of frequency for fixed streamwise separations with increment $1.6\delta ^\ast$ as well as convection velocities calculated using the Smol'yakov model and the Bies model.

Figure 6 examines the streamwise and spanwise coherences of pressure fluctuations. We see that the contour shapes of the coherence functions in the two directions are similar. For a fixed non-zero separation, the coherence increases with the increase of frequency and then decays. This behaviour indicates that the low-frequency components, associated with large-scale structures, maintain their coherence over longer distances, while the high-frequency components lose their coherence more rapidly with increasing separation. In particular, for the non-dimensional frequency $\omega \delta ^\ast /U_0>1$, the wall pressure fluctuations quickly lose their coherence as the separation increases, indicating that the perfect coherence assumed by the frozen turbulence might lead to significant errors. The coherence contours provide valuable information for determining the frequency-dependent correlation lengths.

Figure 6. (a) Streamwise and (b) spanwise coherences of wall pressure fluctuations.

Equations (2.8) and (2.9) provide the definitions of the streamwise and spanwise frequency-dependent correlation lengths. However, in practical applications, curve-fitting approaches are often employed. For each discrete frequency, the frequency-dependent correlation lengths can be assumed in exponential forms, i.e.

(3.12)\begin{gather} \gamma(\xi,0,\omega)=\mathrm{e}^{-|\xi|/l_x(\omega)}, \end{gather}
(3.13)\begin{gather} \gamma(0,\eta,\omega)=\mathrm{e}^{-|\eta|/l_z(\omega)}. \end{gather}

In figure 7, the frequency-dependent correlation lengths in the streamwise and spanwise directions are plotted as functions of frequency. Three empirical models, i.e. the Corcos model (Corcos Reference Corcos1964), the Smol'yakov model (Smol'yakov Reference Smol'yakov2006), and the Hu model (Hu Reference Hu2021) are also shown for comparisons, whose formulations can be found in Appendix D. It can be seen that both correlation lengths increase slightly as frequency increases in the low-frequency range. When the frequency further increases, $l_x(\omega )$ and $l_z(\omega )$ decay rapidly. All three empirical models exhibit similar decay trends within the intermediate- and high-frequency ranges. However, the Smol'yakov model and the Hu model could capture the characteristics at low frequencies. In addition, at higher frequencies, we can see that the simulated correlation lengths decay slowly and even increase. This phenomenon can also be found in the study of Van Der Velden et al. (Reference Van Der Velden, Van Zuijlen, De Jong and Bijl2015), and a mesh refinement may be helpful to obtain improved decay tendencies of the frequency-dependent correlation lengths in this regime.

Figure 7. Frequency-dependent correlation lengths in (a) the streamwise direction and (b) spanwise direction.

An interesting observation is that for the same frequency, $l_x(\omega )>l_z(\omega )$. This is in contrast to the streamwise frequency-independent correlation length $\varLambda _x$, which is smaller than the spanwise correlation length $\varLambda _z$. This phenomenon can be attributed to the convection of turbulence in the streamwise direction. Considering the definition of the frequency-dependent correlation length, we have

(3.14)\begin{equation} l_x(\omega)=\int_{0}^{\infty}\dfrac{|G_{pp}(\xi,0,\omega)|}{\phi(\omega)}\,\mathrm{d}\xi. \end{equation}

From (3.14), we can see that $l_x(\omega )$ characterizes the correlation that eliminates the effect of the streamwise convection of turbulent eddies. Physically, this represents the correlation length measured in a coordinate frame that moves with the eddy.

Introducing the complex form of the cross-spectral density, the space–time correlation in the streamwise direction can be written as

(3.15)\begin{equation} Q_{pp}(\xi,0,\tau)=\int_{-\infty}^{\infty}|G_{pp}(\xi,0,\omega)|\exp({\mathrm{i\omega}(\tau-\xi/U_{cp}(\xi,\omega))})\,\mathrm{d}\omega. \end{equation}

Therefore, the frequency-independent correlation length reads

(3.16)\begin{equation} \varLambda_x=\dfrac{1}{Q_{pp}(0,0,0)}\int_{-\infty}^{\infty} \left|\int_{-\infty}^{\infty}|G_{pp}(\xi,0,\omega)|\exp({-\mathrm{i\omega}\xi/U_{cp}(\xi,\omega)})\,\mathrm{d}\omega\right|\mathrm{d}{\xi}. \end{equation}

Comparing (3.14) and (3.16), it is clear that the calculation of the streamwise frequency-independent correlation length $\varLambda _x$ takes into account the influence of the convection of turbulent structures. On the other hand, the frequency-dependent correlation length $l_x(\omega )$ does not. Since the convection of eddies contributes to the decay of the correlation, it is possible that $\varLambda _x < \varLambda _z$ even though $l_x(\omega )>l_y(\omega )$.

In this part, we have examined two important features of wall pressure fluctuations that are omitted by the frozen turbulence assumption. First, the convection velocity is not strictly constant. Second, the eddies lose their coherence as they convect downstream, leading to a finite streamwise correlation length. These two characteristics are important non-frozen properties and must be accounted for in the modelling of the far-field noise emitted from serrated trailing edges.

4. Acoustic prediction

4.1. Model establishment

With the properties of wall pressure fluctuations and the numerical results discussed above, we are in a position to consider the influence of non-frozen turbulence on the noise prediction for serrated trailing edges. As shown in figure 8, consider a flat plate encountering a uniform flow. The plate has chord length $c$, span $d$, and a trailing edge with serrations of amplitude $2h$ and wavelength $\lambda$.

Figure 8. Schematic of a flat plate with TE serrations.

According to Lyu et al. (Reference Lyu, Azarpeyvand and Sinayoko2016), for a general wall pressure fluctuation characterized by its wavenumber–frequency spectrum $\varPi (k_1, k_2, \omega )$, the far-field acoustic power spectral density $S_{pp}$ at the observer position $\boldsymbol {X}_0=(X_0,Y_0,Z_0)$ is found to be

(4.1)\begin{align} S_{pp}(\boldsymbol{X}_0,\omega)=\left(\dfrac{\omega Y_0c}{4{\rm \pi} c_0S_0^2}\right)^22{\rm \pi} d\sum_{m=-\infty}^{\infty}\int_{-\infty}^{\infty}|\mathcal{L}(k_1,2m{\rm \pi}/\lambda,\omega)|^2\,\varPi(k_1,2m{\rm \pi}/\lambda,\omega)\,\mathrm{d}k_1, \end{align}

where $c_0$ is the speed of sound, $S_0^2=X_0^2+(1-M_0^2)(Y_0^2+Z_0^2)$, $M_0$ is the Mach number of the flow, and $\mathcal {L}$ is the response function, which could be calculated iteratively. Note that there is no assumption regarding the frozen property of the wall pressure fluctuations here. More details about this model can be found in Lyu et al. (Reference Lyu, Azarpeyvand and Sinayoko2016).

It can be seen from (4.1) that the formulation relies on the wavenumber–frequency spectrum as input, and involves an infinite integral over the streamwise wavenumber $k_1$. While this integral can be evaluated numerically, such an approach would be computationally demanding. Furthermore, obtaining an accurate wavenumber–frequency spectrum $\varPi (k_1,k_2,\omega )$ is challenging in both numerical simulations and experimental measurements. To achieve a convenient prediction and determine the physical impact of non-frozen turbulence on TE noise, we aim to develop a simplified model based on the characteristics of wall pressure fluctuations. Specifically, we approximate the cross-spectral density using a variable-separation form:

(4.2)\begin{equation} G_{pp}(\xi,\eta,\omega)=\gamma(\xi,0,\omega)\,\mathrm{e}^{-\mathrm{i}\xi\omega/U_c(\omega)}\,G_{pp}(0,\eta,\omega). \end{equation}

This form is similar to the Corcos model (Corcos Reference Corcos1964), which was initially developed by fitting experimental data and has since been widely used in the modelling of wall pressure fluctuations. However, the Corcos model is more stringent as it assumes that the normalized cross-spectral density can be represented by a function that depends on a single dimensionless variable. Here, the convection velocity is expressed as a function of the angular frequency, while its dependency on the streamwise separation is neglected for simplicity.

By performing Fourier transforms, the wavenumber–frequency spectrum can be written as

(4.3)\begin{align} \varPi(k_1,k_2,\omega)&=\dfrac{1}{(2{\rm \pi})^2}\int_{-\infty}^{\infty}\int_{-\infty}^{\infty}\gamma(\xi,0,\omega)\,\mathrm{e}^{-\mathrm{i}\xi\omega/U_c(\omega)}\,G_{pp}(0,\eta,\omega)\,\mathrm{e}^{\mathrm{i}k_1\xi}\,\mathrm{e}^{\mathrm{i}k_2\eta}\,\mathrm{d}\xi\,\mathrm{d}\eta\nonumber\\ &=\phi_x(k_1,\omega)\,\phi_z(k_2,\omega), \end{align}

where

(4.4)\begin{equation} \phi_x(k_1,\omega) = \dfrac{1}{2{\rm \pi}}\int_{-\infty}^{\infty}\gamma(\xi,0,\omega)\,\mathrm{e}^{-\mathrm{i}\xi\omega/U_c(\omega)}\,\mathrm{e}^{\mathrm{i}k_1\xi}\,\mathrm{d}\xi \end{equation}

and

(4.5)\begin{equation} \phi_z(k_2,\omega)=\dfrac{1}{2{\rm \pi}}\int_{-\infty}^{\infty}G_{pp}(0,\eta,\omega)\,\mathrm{e}^{\mathrm{i}k_2\eta}\,\mathrm{d}\eta. \end{equation}

Here, $\phi _z(k_2,\omega )$ is the spanwise wavenumber–frequency spectrum, while $\phi _x(k_1,\omega )$ denotes the effects of both the coherence decay and the convection of turbulent eddies. Thus $S_{pp}$ can be shown to be

(4.6) \begin{align}& S_{pp}(\boldsymbol{X}_0,\omega)\notag\\ &\quad =\left(\dfrac{\omega Y_0c}{4{\rm \pi} c_0S_0^2}\right)^22{\rm \pi} d\sum_{m=-\infty}^{\infty}\int_{-\infty}^{\infty}|\mathcal{L}(k_1,2m{\rm \pi}/\lambda,\omega)|^2\,\phi_x(k_1,\omega)\,\mathrm{d}k_1\,\phi_z(2m{\rm \pi}/\lambda,\omega). \end{align}

Equation (4.6) shows that the form of $\phi _x$ plays an important role in estimating the integral and hence the far-field sound.

Under the frozen turbulence assumption, as discussed in § 2, the streamwise coherence function is equal to 1, and the convection velocity is assumed to be a constant value. This implies that all eddies convect at the same velocity while maintaining their coherence. As a result, the cross-spectral density is found to be

(4.7)\begin{equation} G_{pp}(\xi,\eta,\omega)=G_{pp}(0,\eta,\omega)\,\mathrm{e}^{-\mathrm{i}\omega\xi/U_c}. \end{equation}

It follows that

(4.8)\begin{equation} \phi_x(k_1,\omega)=\delta(k_1-\omega/U_c). \end{equation}

Substituting (4.8) into (4.6), we recover

(4.9)\begin{equation} S_{pp}(\boldsymbol{X}_0,\omega)=\left(\dfrac{\omega Y_0c}{4{\rm \pi} c_0S_0^2}\right)^22{\rm \pi} d\sum_{m=-\infty}^{\infty}|\mathcal{L}(\bar{k}_1,2m{\rm \pi}/\lambda,\omega)|^2\,\phi_z(2m{\rm \pi}/\lambda,\omega), \end{equation}

where $\bar {k}_1=\omega /U_c$. Equation (4.9) is identical to (2.56) in Lyu et al. (Reference Lyu, Azarpeyvand and Sinayoko2016). In this case, a given frequency $\omega$ is assumed to be associated with a specific wavenumber $\bar {k}_1$ through the convection velocity $U_c$. Therefore, only the convection of eddies is considered, while the streamwise distortion is neglected. In terms of noise prediction models, the sound response function $\mathcal {L}$ sees only the value at the convective wavenumber $\bar {k}_1$. This simplification may be the reason why most analytical models overestimate the noise reduction of serrated trailing edges. It is worth noting that in the present work, the frozen turbulence refers to the idea that the wall pressure fluctuation pattern convects downstream as if it is frozen, which is widely used in the TE noise modelling. Since the wall pressure is the imprint of turbulence of various scales within the boundary layer, the frozen pressure fluctuation pattern implies that eddies of different sizes must convect at the same speed. Otherwise, the pressure fluctuation pattern would change and a coherence decay would occur.

To account for the non-frozen nature of the turbulent boundary layer quantitatively, a coherence decay function is needed. We use

(4.10)\begin{equation} \gamma(\xi,0,\omega)=\mathrm{e}^{-|\xi|/l_x(\omega)}, \end{equation}

as informed by (3.12). By employing this approximation, we can evaluate the integral in (4.6) and obtain

(4.11)\begin{equation} \phi_x(k_1,\omega)=\dfrac{l_x(\omega)}{{\rm \pi}[1+(k_1-\omega/U_c(\omega))^2\,l_x^2(\omega)]}. \end{equation}

Equation (4.11) incorporates the decay of streamwise coherence caused by the distortion of turbulent eddies as they convect downstream. It can be seen that wavenumbers around $\omega /U_c(\omega )$ still play a significant role in shaping the spectrum; however, the contribution to the spectrum is not limited to a one-to-one correspondence between a given frequency and a specific wavenumber. This spreading phenomenon is a notable spectral characteristic of the wall pressure fluctuations beneath a turbulent boundary. In the following analysis, we adopt the notation $\tilde {k}_1(\omega )$ to represent the frequency-dependent convective wavenumber, i.e. $\tilde {k}_1(\omega )=\omega /U_c(\omega )$. This parameter represents the dominant wavenumber on the frequency of $\omega$.

To obtain the acoustic prediction, we need to evaluate the integral of $|\mathcal {L}|^2\phi _x$ over the streamwise wavenumber $k_1$. As mentioned at the beginning of this subsection, rather than relying on numerical techniques, we aim to obtain a compact estimation for the integral, enabling a convenient prediction and determining the physical impact of non-frozen turbulence on TE noise.

4.2. Approximation of the model

According to the mean value theorem for integrals (Stewart Reference Stewart2011), for a given frequency $\omega$ and spanwise mode $m$, there exists a characteristic streamwise wavenumber $k_{1,m}^\ast (\omega )$ such that

(4.12)\begin{align} \int_{-\infty}^{\infty}|\mathcal{L}(k_1,2m{\rm \pi}/\lambda,\omega)|^2\,\phi_x(k_1,\omega) \,\mathrm{d}k_1=|\mathcal{L}(k_{1,m}^\ast(\omega),2m{\rm \pi}/\lambda,\omega)|^2 \int_{-\infty}^{\infty}\phi_x(k_1,\omega)\,\mathrm{d}k_1. \end{align}

Substituting the expression for $\phi _x$ given in (4.11) into (4.12) and recognizing that

(4.13)\begin{equation} \int_{-\infty}^{\infty}\dfrac{l_x(\omega)}{{\rm \pi}[1+(k_1-\tilde{k}_1(\omega))^2\,l_x^2(\omega)]}\,\mathrm{d}k_1=1, \end{equation}

we have

(4.14)\begin{equation} \int_{-\infty}^{\infty}|\mathcal{L}(k_1,2m{\rm \pi}/\lambda,\omega)|^2\,\phi_x(k_1,\omega)\,\mathrm{d}k_1 =|\mathcal{L}(C_m(\omega)\,\tilde{k}_1(\omega),2m{\rm \pi}/\lambda,\omega)|^2. \end{equation}

Substituting (4.14) into (4.6), we see that the resulting non-frozen model is identical to the frozen model apart from the introduction of a correction coefficient $C_m(\omega )=k_{1,m}^\ast (\omega )/\tilde {k}_1(\omega )$ to the dominant convection wavenumber. For a given frequency, by determining the correction coefficient $C_m$, the far-field noise can be calculated using essentially the same frozen prediction model. However, due to the complex nature of the response function, determining this coefficient is challenging. Therefore, in subsequent analysis, we aim to find a convenient approximation for $|\mathcal {L}|^2$. From the analysis of Lyu et al. (Reference Lyu, Azarpeyvand and Sinayoko2016), it is known that

(4.15)\begin{equation} |\mathcal{L}|^2\sim O(|a_m|^2), \end{equation}

where

(4.16)\begin{equation} a_m=\dfrac{\mathrm{e}^{\mathrm{i}m{\rm \pi}/2}}{2}\,\mathrm{sinc}(k_1h-m{\rm \pi}/2) +\dfrac{\mathrm{e}^{-\mathrm{i}m{\rm \pi}/2}}{2}\,\mathrm{sinc}(k_1h+m{\rm \pi}/2). \end{equation}

Examining the shape of $|a_m|^2$, we see that it can be very well approximated by

(4.17)\begin{equation} H_m(k_1h)=\dfrac{1}{4}\left(\dfrac{1}{(k_1h+m{\rm \pi}/2)^2+\tilde{m}} +\dfrac{1}{(k_1h-m{\rm \pi}/2)^2+\tilde{m}}\right), \end{equation}

where

(4.18)\begin{equation} \tilde{m}=1-\dfrac{1}{m{\rm \pi}+2}. \end{equation}

It can be seen that $H_m$ is a purely algebraic function of $k_1h$. Therefore, the correction coefficient can be determined analytically by solving

(4.19)\begin{equation} H_m(C_m\tilde{k}_1h)=\int_{-\infty}^{\infty}H_m(k_1h)\,\phi_x(k_1,\omega)\,\mathrm{d}k_1. \end{equation}

The integral in (4.19) can be found analytically to be $I_m/4$, and the expression for $I_m$ can be written as

(4.20a)$$\begin{gather} I_m=\dfrac{I_{m1}+I_{m2}}{I_{m3}+I_{m4}}+\dfrac{I_{m5}+I_{m6}}{I_{m7}+I_{m8}}, \end{gather}$$
(4.20b)$$\begin{gather}I_{m1}=4\sqrt{\tilde{m}}(4\tilde{m}+{\rm \pi}^2 m^2+4{\rm \pi} m\sigma_2+4\sigma_2^2-4\sigma_1^2), \end{gather}$$
(4.20c)$$\begin{gather}I_{m2}=4(-4\tilde{m} \sigma_1+{\rm \pi}^2 m^2\sigma_1+4{\rm \pi} m\sigma_1\sigma_2+4\sigma_1\sigma_2^2+4\sigma_1^3), \end{gather}$$
(4.20d)$$\begin{gather}I_{m3}=\sqrt{\tilde{m}}\,(16\tilde{m}^2+8({\rm \pi} m+2\sigma_2-2\sigma_1 )({\rm \pi} m+2\sigma_2+2\sigma_1)\tilde{m}+{\rm \pi}^4 m^4+8{\rm \pi}^3\sigma_2 m^3), \end{gather}$$
(4.20e)$$\begin{gather}\begin{aligned}I_{m4}&=\sqrt{\tilde{m}}\,(24{\rm \pi}^2 m^2\sigma_2^2+8{\rm \pi}^2 m^2\sigma_1^2+32{\rm \pi} m\sigma_2^3+32{\rm \pi} m\sigma_1^2\sigma_2\notag\\ &\quad +16\sigma_2^4+32\sigma_1^2\sigma_2^2+16\sigma_1^4), \end{aligned}\end{gather}$$
(4.20f)$$\begin{gather}I_{m5}=4\sqrt{\tilde{m}}\,(4\tilde{m}+{\rm \pi}^2 m^2-4{\rm \pi} m\sigma_2+4\sigma_2^2-4\sigma_1^2), \end{gather}$$
(4.20g)$$\begin{gather}I_{m6}=4(-4\tilde{m} \sigma_1+{\rm \pi}^2 m^2\sigma_1-4{\rm \pi} m\sigma_1\sigma_2+4\sigma_1\sigma_2^2+4\sigma_1^3), \end{gather}$$
(4.20h)$$\begin{gather}I_{m7}=\sqrt{\tilde{m}}\,(16\tilde{m}^2+8({\rm \pi} m-2\sigma_2-2\sigma_1 )({\rm \pi} m-2\sigma_2+2\sigma_1)\tilde{m}+{\rm \pi}^4 m^4-8{\rm \pi}^3\sigma_2 m^3), \end{gather}$$
(4.20i)$$\begin{gather}\begin{aligned}I_{m8}&=\sqrt{\tilde{m}}\,(24{\rm \pi}^2 m^2\sigma_2^2+8{\rm \pi}^2 m^2\sigma_1^2-32{\rm \pi} m\sigma_2^3-32{\rm \pi} m\sigma_1^2\sigma_2\notag\\ &\quad +16\sigma_2^4+32\sigma_1^2\sigma_2^2+16\sigma_1^4), \end{aligned} \end{gather}$$

where $\sigma _1=h/l_x$ and $\sigma _2=\tilde {k}_1h$. Subsequently, the correction coefficient $C_m$ can be computed as

(4.21)\begin{equation} C_m=\left.\sqrt{\dfrac{m^2{\rm \pi}^2}{4}-\tilde{m}+\dfrac{1+\sqrt{1+m^2{\rm \pi}^2I_m-m^2{\rm \pi}^2\tilde{m} I_m^2}}{I_m}}\right/\sigma_2. \end{equation}

It can be seen that the correction coefficient $C_m$ is determined by $\sigma _1$ and $\sigma _2$ only. Note, however, that introducing a correction coefficient is simply to facilitate a quick evaluation. Therefore, we do not expect $C_m$ to be strictly accurate.

With the introduction and evaluation of $C_m$, the far-field noise spectrum is shown to be

(4.22)\begin{align} S_{pp}(\boldsymbol{X}_0,\omega)=\left(\dfrac{\omega Y_0c}{4{\rm \pi} c_0S_0^2}\right)^22{\rm \pi} d\sum_{m=-\infty}^{\infty}|\mathcal{L}(C_m(\omega)\,\tilde{k}_1(\omega),2m{\rm \pi}/\lambda,\omega)|^2\,\phi_z(2m{\rm \pi}/\lambda,\omega). \end{align}

Equation (4.22) is purposely cast into the same form as the frozen model so that the effects of non-frozen turbulence can be accounted for conveniently by a single correction coefficient $C_m(\omega )$. In the following subsections, we will show the prediction results obtained using (4.22), along with a discussion of the rationality behind the approximations used in this subsection.

4.3. Prediction results

Using the new model that incorporates the impact of non-frozen turbulence, we can now predict the far-field noise. We apply the model to flat plates with straight and serrated trailing edges, and use parameters similar to those employed in the preceding numerical simulations. In particular, the Mach number is chosen to be $M_0=0.03$, while the chord length of the flat plate is chosen as $c=1.12$ m. The streamwise correlation length $l_x(\omega )$ and the spanwise wavenumber–frequency spectrum $\phi _z(k_2,\omega )$ are both obtained from the numerical simulation. Smol'yakov's model is selected to compute the frequency-dependent convection velocity for the new model. For the frozen model, the same computed spanwise wavenumber–frequency spectrum and a constant convection velocity $U_c=0.7U_0$ are used. The non-dimensionalized form of the far-field power spectral density,

(4.23)\begin{equation} \varPsi(\boldsymbol{X},\omega)=\dfrac{2{\rm \pi}\, S_{pp}(\boldsymbol{X},\omega)}{C_\ast(\rho_0v_\ast^2)^2\,(d/c_0)}, \end{equation}

is used to facilitate a direct comparison with results from frozen models, where $C_\ast \approx 0.1553$ and $v_\ast \approx 0.03U_0$.

Figure 9 presents the predicted far-field noise using both the frozen and non-frozen models. Here, we use $kc$ to represent the dimensionless frequency, where $k=\omega /c_0$. The observer is located at $90^\circ$ above the trailing edge, and the distance between the observer and the trailing edge is equal to the chord length $c$. The serration amplitudes are set to $2h/c=0.05$ and $2h/c=0.1$, while the aspect ratio remains constant, i.e. $\lambda /h=0.1$. It can be seen that there are minimal discrepancies between the results obtained using these two models for straight trailing edges. As will be discussed in the following analysis, the correction due to non-frozen turbulence goes to zero for straight trailing edges. The slight difference between the two curves is attributed to the frequency-dependent convection velocity used in the new model. Figure 9 shows that the frequency-dependent variation of the convection velocity has a limited influence. Significant noise reductions predicted by the frozen model can be seen within the intermediate-frequency range for serrated trailing edges, especially for the longer serration. However, the new model that accounts for non-frozen turbulence predicts less pronounced noise reductions. One important feature shown in figure 9 is that the noise reduction level reduces at high frequencies, which will be discussed further in the rest of the paper. It is also shown that the long serration with the same slope performs better than the short one.

Figure 9. Predicted far-field noise produced by the straight and serrated trailing edges: (a) $\lambda /h=0.1$, $2h/c=0.05$, and (b) $\lambda /h=0.1$, $2h/c=0.1$.

The directivity patterns predicted by frozen and non-frozen models for different Mach numbers and frequencies are shown in figure 10. The frozen model assumes a constant convection velocity $U_c=0.7U_0$. It can be seen that the presence of serrated trailing edges significantly influences the directivity patterns, especially at higher frequencies (see figures 10b,d). Similar to those observed in figure 9, the new model predicts reduced levels of noise reduction, while the shapes of the directivity patterns remain similar. From figure 10, we can also see that the noise reduction effects are more pronounced in the regions located in front of and behind the flat plate.

Figure 10. Directivity patterns for straight and serrated trailing edges predicted using frozen and non-frozen models: (a) $\lambda /h=0.1$, $2h/c=0.05$, $kc=6.5$; (b) $\lambda /h=0.1$, $2h/c=0.05$, $kc=22.5$; (c) $\lambda /h=0.1$, $2h/c=0.1$, $kc=6.5$; and (d) $\lambda /h=0.1$, $2h/c=0.1$, $kc=22.5$.

In the prediction results shown above, the frequency-dependent correlation length and the spanwise wavenumber–frequency spectrum are obtained through numerical simulations. However, considering the high cost associated with computational fluid dynamics or experimental investigations, the use of empirical models may be more convenient for practical applications. For example, we can use Chase's model to estimate the spanwise wavenumber–frequency spectrum, which is given by (Chase Reference Chase1987; Howe Reference Howe1991b)

(4.24)\begin{equation} \phi_z(k_2,\omega)\approx\dfrac{4C_\ast\rho_0^2v_\ast^4(\omega/U_c)^2\delta^4}{U_c\left(((\omega/U_c)^2+k_2^2)\delta^2+\chi^2\right)^2}. \end{equation}

Here, $\chi \approx 1.33$, and the boundary layer thickness $\delta$ is estimated using $\delta /c=0.382\,Re_c^{-1/5}$, where $Re_c$ represents the Reynolds number based on the chord length. Again, the Smol'yakov model (Smol'yakov Reference Smol'yakov2006) can be used to obtain the streamwise correlation length. Therefore, the new model demonstrates applicability across a broader range of scenarios.

To further investigate the accuracy of the new model, a comparison is conducted between the predicted noise reduction and that from experimental measurements by Gruber (Reference Gruber2012). Predictions from earlier models are also included for comparison. The experimental study used a NACA 65(12)-10 aerofoil at a $5^\circ$ angle of attack with free-stream velocity $U_0=40\ {\rm m}\ {\rm s}^{-1}$. The aerofoil has chord length 0.15 m, and the serration amplitude is $2h/c=0.2$. Two different sizes of serrations were used, namely $\lambda /h=0.6$ and $\lambda /h=0.1$. The observer is located at $90^\circ$ above the aerofoil.

Figure 11 shows the comparison of the noise reduction $\Delta \mathrm {SPL}=10\log _{10}(S_{pp}|_b/S_{pp}|_s)$, where $S_{pp}|_b$ and $S_{pp}|_s$ denote the far-field spectral density for the straight and serrated trailing edges, respectively. In the experiments, noise reductions are observed at intermediate frequencies, albeit not exceeding approximately 5 dB. Conversely, noise increment appears at high frequencies. This phenomenon is consistent with the observations reported in the experiments conducted by Oerlemans et al. (Reference Oerlemans, Fisher, Maeder and Kögler2009), which investigated full-scale serrated wind turbine blades. Howe's model exhibits a significant overprediction of the noise reduction, reaching a maximum $\Delta {\rm SPL}$ of $30$ dB for the narrow serration (see figure 11b). On the other hand, Lyu's original model demonstrates a more realistic prediction, but overestimation is still pronounced. Comparatively, the discrepancies between the prediction using the new model and the experimental measurements are considerably smaller for both serrations. Therefore, we see that the frozen turbulence assumption contributes significantly to the overestimation of noise reduction. Interestingly, as shown in figure 11(a), noise increase at high frequencies is also predicted by the new model. This increment phenomenon has been attributed to the presence of a cross-flow between serration teeth (Gruber Reference Gruber2012). However, the present model suggests another possible cause of the noise increase at high frequencies at this observer angle.

Figure 11. Comparison of the noise reduction predictions from analytical models with experimental measurements by Gruber (Reference Gruber2012): (a) $\lambda /h=0.6$ and (b) $\lambda /h=0.1$.

It can be seen from figure 9 that the long serration with the same slope can lead to more noise reduction. Here, we explore further the effects of the serration geometry by considering an extensive set of the serration amplitude and wavelength. Figure 12 shows the comparison of the noise reduction as a function of the normalized half-amplitude $h/\lambda$ between the analytical models and Gruber's experiments (Gruber Reference Gruber2012). According to Gruber (Reference Gruber2012), the serration wavelength remains unchanged, and the Strouhal number is defined as $St=f\delta /U_0$. The incoming flow velocity is $40\ {\rm m}\ {\rm s}^{-1}$, while the angle of attack of the aerofoil is $0^\circ$. The noise reduction is calculated using equation (2.2) of Gruber (Reference Gruber2012). As can be seen from figure 12(a), for $St=0.17$, the measured noise reduction increases with the increase of the half-amplitude. Both Lyu's model using the frozen turbulence assumption and the new model yield similar noise reduction results compared to the experiment for large amplitudes. However, when $h/\lambda$ is small, noise increases are predicted by both models, which is possibly caused by the inaccurate Chase's model. From figure 12(b), we can see that with the increase of the Strouhal number, the predicted noise reduction agrees much better with experimental results compared to the frozen model. In general, the noise reductions predicted by the two models increase with the increase of the half-amplitude. The apparent deviation in figures 12(c,d) between the new model and the experimental result is likely due to the new flow features caused by serrations that are not included in the model, as already discussed for figure 11.

Figure 12. Comparison of noise reductions predicted by analytical models and obtained from the experiments for four values of the Strouhal number: (a) $St=0.17$, (b) $St=0.45$, (c) $St=0.9$ and (d) $St=1.4$.

Figure 13 shows the comparison of the noise reduction predicted by analytical models and measured from experiments by Gruber (Reference Gruber2012) for four aspect ratios, i.e. 0.1, 0.2, 0.47 and 0.83. The serration amplitude takes a constant value. It is shown from figure 13(a) that the noise reduction measured from experiments generally increases with the decrease of the aspect ratio. The analytical models predict similar trends, as shown in figures 13(b,c). Both the experimental and analytical results show that with the decrease of aspect ratio from 0.2 to 0.1, the increase of noise reduction is not significant in the intermediate-frequency range. The noise reduction predicted by the new model is confined to approximately 8 dB, which is consistent with the experimental measurements. However, up to 15 dB noise reduction is predicted by the frozen model, which is much larger than in experiments. Notably, the non-frozen model predicted a decrease trend at high frequencies, which can also be seen in Gruber's experiments. On the contrary, the noise reduction predicted by the frozen model continually increases in the high-frequency range. It is worth noting that since the empirical wavenumber–frequency model would inevitably deviate from the experiment, achieving a quantitative agreement between the non-frozen model and experiments within the whole frequency range is quite challenging. In addition, the prediction model does not account for the additional flow features introduced by serrations, leading to discrepancies with experimental measurements, especially at high frequencies. However, figures 1113 clearly show that including the impact of non-frozen turbulence can significantly improve the predicted noise reductions, particularly within the frequency range of validity.

Figure 13. Comparison of noise reductions predicted by analytical models and obtained from the experiments for four values of $\lambda$: (a) Gruber's experiments; (b) predicted using the new model; and (c) predicted using Lyu's original model.

4.4. Discussions on the correction coefficient and the approximation

Equation (4.22) shows that the effect of non-frozen turbulence is captured by a single coefficient $C_m(\omega )$, which is determined by two dimensionless parameters $\sigma _1=h/l_x$ and $\sigma _2=\tilde {k}h$. We can therefore study its variation and gain a better understanding of the consequence of including non-frozen turbulence. Figure 14 presents the variation of the correction coefficient $C_m$ as a function of $\sigma _1$ and $\sigma _2$. As shown in § 4.2, $\sigma _1$ is defined as the ratio of the half-amplitude to the frequency-dependent correlation length, while $\sigma _2$ represents the non-dimensional frequency. From figure 14(a), we can see that for $m=0$, the correction coefficient $C_m$ initially decreases and then increases with the increase of $\sigma _1$ when $\sigma _2$ is small. However, when $\sigma _2$ attains large values, $C_m$ decreases monotonically. This implies that at high frequencies, more correctness is needed for the serrations with larger amplitudes. As shown in figure 14(b), when $\sigma _1$ is set to 0, $C_m$ maintains a value of 1, indicating that no correction is needed for the straight trailing edge. When $\sigma _1$ is larger, $C_m$ initially decreases and then remains virtually constant. This suggests that for serrated trailing edges, the correctness is nearly frequency-independent in the high-frequency range. For $m=3$, as shown in figures 14(c,d), $C_m$ continues to exhibit minor changes for large values of $\sigma _2$. However, the variation is more significant than for $m=0$ when $\sigma _2$ is small.

Figure 14. Correction coefficient $C_m$ as a function of $\sigma _1$ and $\sigma _2$: (a,b) $m=0$ and (c,d) $m=3$. Note that the variations of $C_m$ are plotted from $\sigma _2=3$ in (b,d).

To understand why the frozen turbulence assumption tends to overestimate the noise reduction, we can study the integrand shown in (4.6) and its approximation in detail. To achieve that, the response function $|\mathcal {L}|^2$ and its approximation function $H_m$, as well as the shape of $\phi _x$ under non-frozen turbulence condition, are shown in figures 15 and 16. Note that the response function has been scaled by a constant factor for clearer comparison, without affecting the validity of the approximation. In addition, as pointed out by Amiet (Reference Amiet1978), the incorporation of the incident pressure raises the far-field sound by 6 dB. Here, the response function of only the scattered pressure is considered. The vertical solid line indicates the convective wavenumber, while the vertical dashed line denotes the corrected wavenumber. In the following analysis, the chord length is set to 1 m, and the observer is positioned at $90^\circ$ above the flat plate.

Figure 15. Comparison of the approximation functions $H_m$ and $|\mathcal {L}|^2$ multiplied by a constant value, and the shape of $\phi _x$ at $600$ Hz with $M_0=0.03$: (a) $m=0$, $\lambda /h=1$, $2h/c=0.05$; (b) $m=9$, $\lambda /h=1$, $2h/c=0.05$; (c) $m=0$, $\lambda /h=0.2$, $2h/c=0.1$; and (d) $m=9$, $\lambda /h=0.2$, $2h/c=0.1$. The vertical solid line and vertical dashed line indicate the convective wavenumber and the corrected wavenumber, respectively.

Figure 16. Comparison of the approximation functions $H_m$ and $|\mathcal {L}|^2$ multiplied by a constant value, and the shape of $\phi _x$ at $2500\, {\rm Hz}$ with $M_0=0.2$: (a) $m=0$, $\lambda /h=1$, $2h/c=0.05$; (b) $m=9$, $\lambda /h=1$, $2h/c=0.05$; (c) $m=0$, $\lambda /h=0.2$, $2h/c=0.1$; and (d) $m=9$, $\lambda /h=0.2$, $2h/c=0.1$. The vertical solid line and vertical dashed line indicate the convective wavenumber and the corrected wavenumber, respectively.

In figure 15, the comparison results at frequency $f=600\, {\rm Hz}$ with Mach number $M_0=0.03$ are presented. It can be seen that the response function exhibits peaks near $k_1=0$ for $m=0$, but two peaks for $m=9$. The approximation function $H_m$ accurately captures the main shape of the response function, particularly for $m=9$, indicating the validity of the approximation.

As anticipated, it can be seen that the function $\phi _x$ exhibits a clear ridge at the convective wavenumber $\tilde {k}_1$. Since the calculation of far-field sound involves integrating the product of $|\mathcal {L}|^2$ and $\phi _x$ over the wavenumber $k_1$ (see (4.6)), it is evident that the values near the peaks of both the response function and the convective ridge are important to the integral. However, assuming frozen turbulence results in the form of the Dirac delta function for $\phi _x$. Therefore, only the value of the response function at $\bar {k}_1$ is used, neglecting the influence of the shape of the response function. In contrast, when the turbulent boundary layer is not frozen, the shapes of both the response function and the convective ridge play important roles. For instance, as shown in figure 15(a), the peaks of the response function and the convective ridge are sufficiently far away and the peaks near both $k_1=0$ and $k_1=\omega /U_c(\omega )$ contribute significantly to the integral. But if the single value $|\mathcal {L}(\bar {k}_1,k_2,\omega )|^2$ is used to represent the value of the integral as assumed by the frozen turbulence, then the predicted far-field sound would become significantly lower than when using the integral value. Conversely, if the peaks of the response function and the convective ridge are close to each other (see figure 15b), then the frozen turbulence assumption tends to predict a higher result. However, as shown in (4.22), the overall far-field noise is the sum of contributions from all spanwise modes. It is known that the contribution of higher modes is less significant compared to lower modes. Therefore, for intermediate and high frequencies, where the peaks of the response function of the dominant modes and the convective ridge are not closely aligned, the analytical models assuming frozen turbulence would predict lower noise levels for serrated trailing edges. With regard to the impact of serration sizes, it can be seen from figures 15(c,d) that the shape of the response function is sharper for longer serrations. Thus more correctness in the convective wavenumber may be needed for longer serrations.

To examine the effect of the Mach number, we present a similar comparison with a higher Mach number $M_0=0.2$ at frequency $f=2500\, {\rm Hz}$, as shown in figure 16. It can be seen that with an increased Mach number, the convective ridge exhibits a sharper peak. Moreover, the convection velocity also increases with the increase of the Mach number. As shown in figure 16(a), the peaks of the response function and the convective ridge become closer compared to the results shown in figure 15, despite the frequency being increased from $600\, {\rm Hz}$ to $2500\, {\rm Hz}$. This indicates that less correctness in the convective wavenumber may be needed for higher Mach numbers. Figure 17 shows the products of the response function and the convective ridge as well as of the approximation function and the convective ridge corresponding to figures 16(c,d). For $m=0$, both product results exhibit two peaks, and the peak near the zero wavenumber is higher. Consequently, the corrected wavenumber is smaller than the convective wavenumber. For $m=9$, the peak near the convective wavenumber dominates the products, resulting in the corrected wavenumber being very close to the convective wavenumber. It is worth noting again that the final prediction result is calculated by integrating all the spanwise modes. Therefore, the influence of the approximation deviation for $m=0$ is limited.

Figure 17. Product of the response function and the convective ridge at $2500\, {\rm Hz}$ with $M_0=0.2$: (a) $m=0$, $\lambda /h=0.2$, $2h/c=0.1$; and (b) $m=9$, $\lambda /h=0.2$, $2h/c=0.1$. The vertical solid line and vertical dashed line indicate the convective wavenumber and the corrected wavenumber, respectively.

In conclusion, we see that the frozen turbulence assumption may lead to lower or higher sound predictions for different spanwise modes, depending on the distance between the peaks of the response function and the convective ridge. However, when considering the collective contribution of all modes, lower noise levels would be predicted for serrated trailing edges in the intermediate- and high-frequency ranges. In other words, the frozen turbulence assumption results in an overestimated noise reduction, especially for long serrations and at low Mach numbers. This work concentrates on the impact of non-frozen turbulence on the noise from serrated trailing edges. Strictly speaking, the frozen turbulence assumption also affects the noise modelling for straight edges. However, from the above analysis, we show that the shape of the response function is heavily dependent on the serration amplitude. Therefore, the influence of non-frozen turbulence for the serrated trailing edge is much larger than for the straight one. In fact, the frozen turbulence assumption serves as a sufficiently good approximation for baseline scattering (Sandberg & Sandham Reference Sandberg and Sandham2008; Lee et al. Reference Lee, Ayton, Bertagnolio, Moreau, Chong and Joseph2021). As the serration amplitude $2h$ increases, the assumption becomes less accurate, and it is the extra loss of accuracy that we aim to correct using the correction coefficient $C_m$ introduced in this paper. Therefore, as $h\rightarrow 0$, $C_m\rightarrow 1$, implying that no further correction is needed. Thus this paper does not aim to show that the frozen turbulence is a good approximation for straight edges, but rather uses it as a fact. And $C_m=1$ merely means no further correction is needed because $h=0$ and the frozen and non-frozen models are set to become approximately identical simply by construction.

It is worth noting that the new model proposed in this study may have limited effectiveness when applied to very low frequencies. The first reason is that the phase velocity demonstrates significant variations within this frequency range, as shown in figure 5(b). The second reason is that the exponential decay function assumed in the previous analysis may not accurately capture the behaviour of the coherence loss. In this case, the introduction of a Gaussian phase decay term might be helpful to provide a more appropriate description of the coherence decay (Palumbo Reference Palumbo2013). Nevertheless, in practical applications, it is the intermediate-frequency range that is of most interest, because this is where noise reduction occurs.

5. Physical mechanism

In § 4.4, a mathematical examination was conducted to explain the impact of the frozen turbulence assumption. In this section, we aim to elucidate the underlying physical mechanism related to noise reduction using non-frozen turbulence.

Previous work has shown that the physical mechanism behind the noise reduction can be attributed to the destructive interference of the scattered pressure (Lyu et al. Reference Lyu, Azarpeyvand and Sinayoko2016). To explore the efficiency of this interference, we show the scattered surface pressure distributions at a fixed frequency $2000\, {\rm Hz}$ with the Mach number $M_0=0.2$ in figure 18. The scattered surface pressure is obtained by evaluating the real part of equation (2.39) presented in the study of Lyu et al. (Reference Lyu, Azarpeyvand and Sinayoko2016), and detailed formulations can also be found in this work. The horizontal and vertical axes are scaled by the spanwise and streamwise frequency-dependent correlation lengths obtained using the Smol'yakov model, respectively. Hence the distance between adjacent parallel dashed lines denotes the correlation length at this particular frequency.

Figure 18. The scattered surface pressure distribution at a fixed frequency $f=2000\, {\rm Hz}$: (a) $k_1h=2$, (b$k_1h=6$, (c) $k_1h=12$ and (d) $k_1h=20$. The distance between two adjacent dashed lines denotes the correlation length at this frequency.

As shown in figures 18(a,b), little phase variation appears when $k_1h$ attains a small value, indicating a weak noise reduction. However, as $k_1h$ increases, significant phase variation along the serration edges can be observed (see figures 18c,d). The interference resulting from this phase variation leads to noise reductions in the far field. Under the frozen turbulence assumption, the streamwise correlation length is assumed to be infinitely large. Consequently, the phase variations along the entire serration edges are considered to contribute to the destructive interference (assuming that spanwise coherence is sufficiently large for now). However, in realistic non-frozen flows, only the phase variation within the streamwise correlation length is effective in the destructive interference. From figures 18(c,d), it can be seen that the serration amplitudes are 2–5 times larger than the streamwise correlation lengths, highlighting the significance of considering the streamwise length scale for accurate noise predictions.

In the above discussion, we purposely ignored the effects of spanwise correlation length for a simpler illustration. In realistic flows, both the spanwise and streamwise correlation lengths are important in determining the efficiency of the destructive interference. In fact, we can see from figure 18 the 2-D grids formed by the dashed lines that represent the streamwise and spanwise correlation lengths. It is within the same grid that the phase variation is effective. The 2-D grid reflects the 3-D structures of the turbulent flow. It can be seen that with the increase of $k_1h$, the grids become denser, indicating that the effective area of destructive interference is smaller. Therefore the non-frozen correction must be included, particularly at high frequencies. At high frequencies, the streamwise and spanwise correlation lengths are relatively small, thus the effective area of the destructive interference is heavily restricted by the streamwise and spanwise correlation lengths.

To provide further clarity on the phase variation along the serration edges, we plot the real and imaginary parts of the scattered pressure for different values of $k_1h$ in figure 19. The streamwise coordinates are normalized by half the amplitude of the serration $h$. Similarly, the distance between adjacent dashed lines corresponds to the streamwise correlation length. It can be seen from figure 19(a) that the real part remains negative for $k_1h=2$, and the imaginary part exhibits a phase that changes sign over the serration edge. Although the correlation length is larger than the serration amplitude, the noise reduction effect is not significant due to the insignificant phase variations. In figure 19(b), for $k_1h=6$, the phase differences of the scattered pressure are more significant, especially for the imaginary part. When $k_1h$ becomes larger, as shown in figures 19(c,d), strong variation can be seen for both the real and imaginary parts along the serration edge. However, it can be seen that these variations are less pronounced within a streamwise correlation length. Therefore, the interference effectiveness is not as strong as that assumed by the frozen turbulence. This explains physically why the frozen turbulence assumption tends to overestimate the noise reduction when employed in noise prediction models.

Figure 19. The real and imaginary parts of the scattered pressure on the serrated edge at a fixed frequency $f=2000\, {\rm Hz}$: (a) $k_1h=2$, (b) $k_1h=6$, (c) $k_1h=12$ and (d) $k_1h=20$. The distance between two adjacent dashed lines denotes the streamwise correlation length at this frequency.

In the case of leading-edge noise problems, where the inflow is typically uniform, the turbulent upwash velocity spectra can be captured accurately by various models, such as the von Kármán spectrum model (Amiet Reference Amiet1975; Narayanan et al. Reference Narayanan, Chaitanya, Haeri, Joseph, Kim and Polacsek2015). By assuming frozen turbulence, analytical prediction models can provide realistic results for the noise emitted from leading-edge serrations (Lyu & Azarpeyvand Reference Lyu and Azarpeyvand2017). However, this is not the case for TE serrations. As the turbulent boundary layer develops on a flat plate or an aerofoil, the turbulent eddies undergo severe distortions due to the strong shear stress, leading to significant streamwise coherence decay. Therefore, the impact of non-frozen turbulence must be taken into account. As shown in this study, a finite streamwise correlation length is introduced into the noise prediction model, resulting in significantly improved prediction accuracy.

In practical applications, the statistical characteristics of wall pressure fluctuations on an aerofoil can be different from those on a flat plate due to the influence of many factors, such as the aerofoil camber and angle of attack. Caiazzo et al. (Reference Caiazzo, Pargal, Wu, Sanjose, Yuan and Moreau2023) examined the statistics of flows under mean zero pressure gradient (ZPG) and adverse pressure gradient (APG) on a curved surface using the DNS method. Results showed that the strong APG had a significant impact on wall pressure statistics. Streamwise cross-correlations were observed to decay rapidly with increasing streamwise separation when moving downstream from ZPG to APG, indicating shorter coherence in the APG region than in the ZPG region. On the other hand, the decay of spanwise coherence was much slower. These phenomena imply that for turbulent boundary layers with strong APG, the efficiency of destructive interference is different from ZPG. The change of the effective region has important implications for the serration design.

6. Conclusion

This study investigates the impact of non-frozen turbulence on the noise prediction model for serrated trailing edges by analysing the statistical characteristics of wall pressure fluctuations. A fully developed turbulent boundary layer is simulated using LES, with the turbulence at the inlet generated by the digital filter method. The accuracy of the simulated mean flow statistics is validated against DNS and a previous study by Wang et al. (Reference Wang, Vita, Fraga, Lyu, Wang and Hemida2022). The simulation results demonstrate that as the spatial separations increase, the streamwise–spanwise correlation contour changes from circular to oval. Additionally, the space–time correlation contour lines concentrate into a narrow band. The mean convection velocity increases with the increase of streamwise separation, while the phase velocities for a fixed streamwise separation initially increase and then decay with increasing frequency. Coherence function contours for both streamwise and spanwise directions are presented. The variation of the streamwise frequency-dependent correlation length indicates that the infinite streamwise correlation length assumed by frozen turbulence is not appropriate.

Lyu's model for serrated trailing edges is used as the basis for developing a non-frozen noise prediction model. This model involves integrating the product of the response function and the wavenumber–frequency spectrum over the streamwise wavenumber. Based on the statistical analysis of wall pressure fluctuations, an exponential coherence decay function is assumed, departing from the constant value employed under the frozen turbulence assumption. By examining the properties of the response function, an approximation function is introduced, allowing for the inclusion of a correction coefficient to account for the impact of non-frozen turbulence. Two non-dimensional parameters are identified to be critical for the non-frozen correctness, i.e. $\sigma _1=h/l_x$ and $\sigma _2=\tilde {k}h$. The far-field sound spectra for different serration sizes demonstrate that the new model predicts lower noise reduction. Comparative analysis with the experimental measurements of Gruber (Reference Gruber2012) demonstrates that the new model has significantly better prediction capability. Results also show that sharper serrations can lead to more noise reduction. Through an examination of the response function and the convective ridge, it is shown that the far-field noise depends on the relative positions of their peaks.

The physical mechanism underlying the overprediction of noise models employing the frozen turbulence assumption is found to be an overestimated destructive interference of the scatted pressure. As the non-dimensional parameter $k_1h$ increases, the streamwise correlation length becomes shorter than the amplitude of the serration. Only the phase variations within a streamwise correlation length can result in effective destructive interference. Consequently, the far-field noise is larger compared to that predicted under the frozen turbulence assumption. This highlights the importance of the non-dimensional parameter $h/l_x$ as a crucial factor in determining the efficiency of destructive interference along the serration edge.

It should be noted that the installation of serrations may alter the flow field near the trailing edge. The spectral properties of wall pressure fluctuations may also change near the serrations, as shown in the experimental works of Ayton et al. (Reference Ayton, Szoke, Paruchuri, Devenport and Alexander2021) and Pereira et al. (Reference Pereira, Avallone, Ragni and Scarano2022). Ayton et al. (Reference Ayton, Szoke, Paruchuri, Devenport and Alexander2021) suggested that taking account of a weaker high-frequency decay rate of the wall pressure spectrum for serrated TE edges could also produce a reduced noise reduction. However, Pereira et al. (Reference Pereira, Avallone, Ragni and Scarano2022) showed that the variation of the wall pressure spectrum from the root towards the tip of the serration was not significant, which was bound to 3 dB. Therefore, we believe that the key mechanism to explain the overprediction is the coherence decay due to the non-frozen turbulence.

The present model is applicable to predict the far-field TE noise from aerofoils with serrated trailing edges. However, it relies on an accurate wavenumber–frequency spectrum as its input. In addition, this model does not account for the effects of new flow features such as the cross-flow. Compared to previous frozen models, the present model exhibits significantly improved noise reduction predictions, but deviation from the experiments can still be seen, particularly in the high-frequency regime. An accurate modelling or measurement of the wavenumber–frequency spectrum may also help to reduce the deviation from experiments. Improvement may also be expected by incorporating the impact of additional flow features due to serrations. In future works, this model may be extended to investigate the noise from rotating blades, which has received much attention in applications such as fans and unmanned aerial vehicles.

Acknowledgement

The first author (H.T.) would like to express gratitude to Dr Y. Wang at Huairou Laboratory for fruitful discussions on numerical simulations.

Funding

The authors acknowledge financial support from Laoshan Laboratory under grant no. LSKJ202202000.

Declaration of interests

The authors report no conflict of interest.

Appendix A. Mesh convergence test

To evaluate the convergence of the computational mesh, we use three different meshes: coarse, middle and fine. These grid sizes are listed in table 4. The resulting mean velocity, fluctuating velocities and the Reynolds shear stress computed using these three meshes are shown in figures 20 and 21. We can see that the discrepancies between the results obtained with the fine and middle meshes are generally smaller compared to those between the middle and coarse meshes. Therefore, middle-size mesh is used in the simulation.

Table 4. Mesh parameters for different mesh sizes.

Figure 20. Comparison of the mean velocities calculated using the three meshes.

Figure 21. Comparison of the mean flow variables calculated using the three meshes: (a) streamwise velocity fluctuation; (b) wall-normal velocity fluctuation; (c) spanwise velocity fluctuation; and (d) Reynolds shear stress.

Appendix B. Temporal and spatial correlations of wall pressure fluctuations

Figure 22 shows the spatial correlations of wall pressure fluctuations in the streamwise and spanwise directions, respectively. It can be seen that both correlations decay rapidly with increasing separation. However, the spanwise correlation remains positive throughout the shown range, while the streamwise correlation changes sign at $\xi /\delta ^\ast \approx 3.9$, which aligns with the findings of Bull (Reference Bull1967). The decay of the spanwise correlation shown may be improved by using a larger computational domain but should suffice for the present study. Figure 23 presents the contour plot of the two-point spatial correlation. The overall pattern is similar to the observations reported by Bull (Reference Bull1967), where the contours are nearly circular for small separations, indicating near isotropy of the field. However, as the separations increase, the contours elongate in the spanwise direction, indicating increasing anisotropy. This elongation is likely attributed to large-scale flow structures and implies that $\varLambda _z$ is larger than $\varLambda _x$. In the streamwise direction, negative areas can be seen, consistent with the behaviour depicted in figure 22(a).

Figure 22. One-dimensional spatial correlations: (a) streamwise direction and (b) spanwise direction.

Figure 23. Contours of the spatial correlation $R_{pp}(\xi,\eta,0)$. Solid lines denote zero and positive isocontours: 0, 0.1, 0.2, 0.3, 0.4, 0.5, 0.6, 0.7, 0.8 and 0.9. The dashed lines denote negative isocontours of $-$0.1.

An important characteristic of non-frozen turbulence is the presence of elliptic patterns in the contours of the space–time correlation $R_{pp}(\xi,0,\tau )$, as illustrated in figure 24. In contrast, under the assumption of frozen turbulence, the contours degrade to parallel straight lines. As shown in figure 24, the concentration of contour lines into a narrow band suggests that the development of flow structures downstream includes both convection and decay. Figure 25 presents the space–time correlations for various fixed streamwise separations as a function of time delay. It can be seen that the correlation peak decreases as the streamwise separation increases. This behaviour indicates a decaying correlation between the pressure fluctuations as separation distance increases. This contrasts directly with a non-decaying correlation implied in the frozen turbulence assumption (see (2.11)).

Figure 24. Contours of the space–time correlation $R_{pp}(\xi,0,\tau )$; levels are from 0.1 to 0.9 with an increment of 0.1.

Figure 25. Space–time correlation as a function of time delay for various fixed streamwise separations with an increment of $0.7\delta ^\ast$.

Appendix C. Empirical convection velocity models

The Bies model is given by (Bies Reference Bies1966)

(C1)\begin{equation} \dfrac{U_c(\omega)}{U_0}=\left(\dfrac{U_0}{\omega\delta^\ast}\right)^{0.055}-0.3. \end{equation}

The Smol'yakov model is given by (Smol'yakov Reference Smol'yakov2006)

(C2)\begin{equation} \dfrac{U_c(\omega)}{U_0}=\dfrac{1.6\omega\delta^\ast{/}U_0}{1+16(\omega\delta^\ast{/}U_0)^2}+0.6. \end{equation}

Appendix D. Empirical frequency-dependent correlation length models

The Corcos model (Corcos Reference Corcos1964) can be written as

(D1)\begin{equation} l_{x,z}(\omega)=\dfrac{U_c}{\alpha_{x,z}\omega}, \end{equation}

where $\alpha _x=0.11$, $\alpha _z=0.73$ and $U_c=0.7U_0$ are used.

The Smol’yakov model can be expressed as (Smol'yakov Reference Smol'yakov2006)

(D2)\begin{equation} l_{x,z}(\omega)=\dfrac{U_c}{\alpha_{x,z}\omega}\,A^{-1}, \end{equation}

with

(D3)\begin{equation} A=\left[1-\dfrac{\beta U_c}{\omega\delta^\ast}+\left(\dfrac{\beta U_c}{\omega \delta^\ast}\right)^2\right]^{1/2}. \end{equation}

Here, $\alpha _x=0.124$, $\alpha _z=0.8$ and $\beta =0.25$. The convection velocity is determined by employing (C2), and $\delta ^\ast$ is approximated using $\delta ^\ast /c\approx 0.048/Re_c^{1/5}$.

Based on Goody's model (Goody Reference Goody2004), Hu (Reference Hu2021) proposed an expression for the frequency-dependent correlation length, which can be written as

(D4)\begin{equation} \frac{l_x(\omega)}{\delta^*}=\frac{a\left(\omega \delta^* / U_0\right)^{0.3}}{(b+(\omega \delta^* / U_0)^{3.854})^{0.389}}, \end{equation}

with $a=1.357 \ln (Re_\theta )-6.713$ and $b=1.183\,Re_\theta ^{-0.593}$. And

(D5)\begin{equation} \frac{l_z(\omega)}{\delta^*}=\frac{a(\omega \delta^* / U_0)^{1.0}}{(b+(\omega \delta^* / U_0)^{3.073})^{0.651}}, \end{equation}

with $a=0.079 \ln (Re_\theta )+0.155$ and $b=0.348\,Re_\theta ^{-0.495}$.

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Figure 0

Table 1. Turbulent length scales used in the inlet boundary condition.

Figure 1

Figure 1. Computational domain of the LES and an instantaneous flow field from the inlet to $19\delta _{in}$ downstream. The flow is visualized using the Q-criterion ($Q=2.5\times 10^4$) and coloured by the streamwise velocity (with levels increasing, the colour changes from blue to red).

Figure 2

Table 2. Grid information and free-stream velocity for the LES of a spatially developing turbulent boundary layer.

Figure 3

Figure 2. Instantaneous snapshots of the streamwise velocity: (a) side view in the $x$$y$ plane, and (b) overview in the $x$$z$ plane at $y=0.3\delta _{in}$.

Figure 4

Table 3. Turbulent boundary layer parameters at the streamwise location $x=40\delta _{in}$.

Figure 5

Figure 3. Profiles of mean flow statistics at $x=40\delta _{in}$: (a) velocity and (b) Reynolds shear stress as well as streamwise, spanwise and wall-normal velocity fluctuations.

Figure 6

Figure 4. Single-point spectrum scaled with outer parameters.

Figure 7

Figure 5. (a) Comparison of the mean convection velocity. (b) Phase velocity as a function of frequency for fixed streamwise separations with increment $1.6\delta ^\ast$ as well as convection velocities calculated using the Smol'yakov model and the Bies model.

Figure 8

Figure 6. (a) Streamwise and (b) spanwise coherences of wall pressure fluctuations.

Figure 9

Figure 7. Frequency-dependent correlation lengths in (a) the streamwise direction and (b) spanwise direction.

Figure 10

Figure 8. Schematic of a flat plate with TE serrations.

Figure 11

Figure 9. Predicted far-field noise produced by the straight and serrated trailing edges: (a) $\lambda /h=0.1$, $2h/c=0.05$, and (b) $\lambda /h=0.1$, $2h/c=0.1$.

Figure 12

Figure 10. Directivity patterns for straight and serrated trailing edges predicted using frozen and non-frozen models: (a) $\lambda /h=0.1$, $2h/c=0.05$, $kc=6.5$; (b) $\lambda /h=0.1$, $2h/c=0.05$, $kc=22.5$; (c) $\lambda /h=0.1$, $2h/c=0.1$, $kc=6.5$; and (d) $\lambda /h=0.1$, $2h/c=0.1$, $kc=22.5$.

Figure 13

Figure 11. Comparison of the noise reduction predictions from analytical models with experimental measurements by Gruber (2012): (a) $\lambda /h=0.6$ and (b) $\lambda /h=0.1$.

Figure 14

Figure 12. Comparison of noise reductions predicted by analytical models and obtained from the experiments for four values of the Strouhal number: (a) $St=0.17$, (b) $St=0.45$, (c) $St=0.9$ and (d) $St=1.4$.

Figure 15

Figure 13. Comparison of noise reductions predicted by analytical models and obtained from the experiments for four values of $\lambda$: (a) Gruber's experiments; (b) predicted using the new model; and (c) predicted using Lyu's original model.

Figure 16

Figure 14. Correction coefficient $C_m$ as a function of $\sigma _1$ and $\sigma _2$: (a,b) $m=0$ and (c,d) $m=3$. Note that the variations of $C_m$ are plotted from $\sigma _2=3$ in (b,d).

Figure 17

Figure 15. Comparison of the approximation functions $H_m$ and $|\mathcal {L}|^2$ multiplied by a constant value, and the shape of $\phi _x$ at $600$ Hz with $M_0=0.03$: (a) $m=0$, $\lambda /h=1$, $2h/c=0.05$; (b) $m=9$, $\lambda /h=1$, $2h/c=0.05$; (c) $m=0$, $\lambda /h=0.2$, $2h/c=0.1$; and (d) $m=9$, $\lambda /h=0.2$, $2h/c=0.1$. The vertical solid line and vertical dashed line indicate the convective wavenumber and the corrected wavenumber, respectively.

Figure 18

Figure 16. Comparison of the approximation functions $H_m$ and $|\mathcal {L}|^2$ multiplied by a constant value, and the shape of $\phi _x$ at $2500\, {\rm Hz}$ with $M_0=0.2$: (a) $m=0$, $\lambda /h=1$, $2h/c=0.05$; (b) $m=9$, $\lambda /h=1$, $2h/c=0.05$; (c) $m=0$, $\lambda /h=0.2$, $2h/c=0.1$; and (d) $m=9$, $\lambda /h=0.2$, $2h/c=0.1$. The vertical solid line and vertical dashed line indicate the convective wavenumber and the corrected wavenumber, respectively.

Figure 19

Figure 17. Product of the response function and the convective ridge at $2500\, {\rm Hz}$ with $M_0=0.2$: (a) $m=0$, $\lambda /h=0.2$, $2h/c=0.1$; and (b) $m=9$, $\lambda /h=0.2$, $2h/c=0.1$. The vertical solid line and vertical dashed line indicate the convective wavenumber and the corrected wavenumber, respectively.

Figure 20

Figure 18. The scattered surface pressure distribution at a fixed frequency $f=2000\, {\rm Hz}$: (a) $k_1h=2$, (b$k_1h=6$, (c) $k_1h=12$ and (d) $k_1h=20$. The distance between two adjacent dashed lines denotes the correlation length at this frequency.

Figure 21

Figure 19. The real and imaginary parts of the scattered pressure on the serrated edge at a fixed frequency $f=2000\, {\rm Hz}$: (a) $k_1h=2$, (b) $k_1h=6$, (c) $k_1h=12$ and (d) $k_1h=20$. The distance between two adjacent dashed lines denotes the streamwise correlation length at this frequency.

Figure 22

Table 4. Mesh parameters for different mesh sizes.

Figure 23

Figure 20. Comparison of the mean velocities calculated using the three meshes.

Figure 24

Figure 21. Comparison of the mean flow variables calculated using the three meshes: (a) streamwise velocity fluctuation; (b) wall-normal velocity fluctuation; (c) spanwise velocity fluctuation; and (d) Reynolds shear stress.

Figure 25

Figure 22. One-dimensional spatial correlations: (a) streamwise direction and (b) spanwise direction.

Figure 26

Figure 23. Contours of the spatial correlation $R_{pp}(\xi,\eta,0)$. Solid lines denote zero and positive isocontours: 0, 0.1, 0.2, 0.3, 0.4, 0.5, 0.6, 0.7, 0.8 and 0.9. The dashed lines denote negative isocontours of $-$0.1.

Figure 27

Figure 24. Contours of the space–time correlation $R_{pp}(\xi,0,\tau )$; levels are from 0.1 to 0.9 with an increment of 0.1.

Figure 28

Figure 25. Space–time correlation as a function of time delay for various fixed streamwise separations with an increment of $0.7\delta ^\ast$.