Hostname: page-component-586b7cd67f-t8hqh Total loading time: 0 Render date: 2024-11-23T05:50:43.225Z Has data issue: false hasContentIssue false

Size distribution of a drop undergoing breakup at moderate Weber numbers

Published online by Cambridge University Press:  24 March 2023

Someshwar Sanjay Ade
Affiliation:
Center for Interdisciplinary Program, Indian Institute of Technology Hyderabad, Kandi, 502 284 Sangareddy, Telangana, India
Lakshmana Dora Chandrala*
Affiliation:
Department of Mechanical and Aerospace Engineering, Indian Institute of Technology Hyderabad, Kandi, 502 284 Sangareddy, Telangana, India
Kirti Chandra Sahu*
Affiliation:
Department of Chemical Engineering, Indian Institute of Technology Hyderabad, Kandi, 502 284 Sangareddy, Telangana, India
*
Email addresses for correspondence: [email protected], [email protected]
Email addresses for correspondence: [email protected], [email protected]

Abstract

The size distribution of child droplets resulting from a dual-bag fragmentation of a water drop is investigated using shadowgraphy and digital in-line holography techniques. It is observed that parent drop fragmentation contributes to the atomisation of tiny child droplets, whereas core drop disintegration predominantly results in larger fragments. Despite the complexity associated with dual-bag fragmentation, we demonstrate that it exhibits a bi-modal size distribution. In contrast, the single-bag breakup undergoes a tri-modal size distribution. We employ the analytical model developed by Jackiw & Ashgriz (J. Fluid Mech., vol. 940, 2022, A17) for dual-bag fragmentation that convincingly predicts the experimentally observed droplet volume probability density. We also estimate the temporal evolution of child droplet production in order to quantitatively illustrate the decomposition into initial and core breakups. Furthermore, we confirm that the analytical model adequately predicts the droplet size distribution for a range of Weber numbers.

Type
JFM Papers
Copyright
© Indian Institute of Technology Hyderabad, India, 2023. Published by Cambridge University Press

1. Introduction

Droplet fragmentation and resulting child droplet size distribution (DSD) are important for a wide range of industrial applications, such as combustion, surface coating, pharmaceutical production, disease transmission modelling and artificial rain technology, to name a few (Villermaux Reference Villermaux2007; Raut et al. Reference Raut, Konwar, Murugavel, Kadge, Gurnule, Sayyed, Todekar, Malap, Bankar and Prabhakaran2021; Xu, Wang & Che Reference Xu, Wang and Che2022). They are also essential for understanding natural phenomena such as clouds and rainfall (Villermaux & Bossa Reference Villermaux and Bossa2009; Villermaux & Eloi Reference Villermaux and Eloi2011).

In an airstream, a drop undergoes different breakup modes, such as vibrational, bag, bag–stamen, multi-bag, shear and catastrophic breakup modes, due to the competition between the aerodynamic and surface tension forces (Pilch & Erdman Reference Pilch and Erdman1987; Guildenbecher, López-Rivera & Sojka Reference Guildenbecher, López-Rivera and Sojka2009; Suryaprakash & Tomar Reference Suryaprakash and Tomar2019; Soni et al. Reference Soni, Kirar, Kolhe and Sahu2020). The Weber number, defined as ${{We}} \equiv \rho _a U^2 d_0/\sigma$, is used to characterise the droplet breakup phenomenon in a continuous airstream. Here, $\rho _a$, $\sigma$, $U$ and $d_0$ denote the air density, interfacial tension, average velocity of the airstream and equivalent spherical diameter of the drop, respectively. The critical Weber number $({{We}}_{cr})$ at which the transition from the vibrational to the bag breakup occurs is approximately 12 and 6 in the cross-flow (Taylor Reference Taylor1963; Kulkarni & Sojka Reference Kulkarni and Sojka2014; Soni et al. Reference Soni, Kirar, Kolhe and Sahu2020) and opposite-flow (Villermaux & Bossa Reference Villermaux and Bossa2009) configurations, respectively. For the intermediate Weber numbers ($28 \le {{We}} \le 41$), Cao et al. (Reference Cao, Sun, Li, Liu and Yu2007) were the first to observe dual-bag breakup mode by performing shadowgraph and high-speed imaging. Boggavarapu et al. (Reference Boggavarapu, Ramesh, Avulapati and Ravikrishna2021) investigated fragmentation of water and surrogate fuels droplets and observed bag, bag–stamen, dual-bag and multi-bag breakup modes at different Weber numbers. Catastrophic fragmentation occurs when the drop explodes into a cluster of tiny fragments at very high Weber numbers. Recently, Kirar et al. (Reference Kirar, Soni, Kolhe and Sahu2022) studied the fragmentation of a drop under a swirl airstream using the shadowgraphy technique for a fixed Weber number. They found a new breakup mechanism termed as ‘retracting bag breakup’ for intermediate swirl strength. In this breakup mode, the ligaments are stretched in opposite directions by the swirling airstream, causing the drop to undergo capillary instability and breakup. The multi-bag breakup mode is the most challenging of all breakup modes because the development and breakup of bags happen at different times. Moreover, different parts, such as bags, nodes and rim, of the drop undergo various breakup mechanisms simultaneously.

Few researchers (Gao et al. Reference Gao, Guildenbecher, Reu, Kulkarni, Sojka and Chen2013; Guildenbecher, Cooper & Sojka Reference Guildenbecher, Cooper and Sojka2016; Guildenbecher et al. Reference Guildenbecher, Gao, Chen and Sojka2017; Essaïdi et al. Reference Essaïdi, Lauret, Heymes, Aprin and Slangen2021; Jackiw & Ashgriz Reference Jackiw and Ashgriz2022; Li et al. Reference Li, Shen, Liu, Zhao, Li and Tang2022; Ade et al. Reference Ade, Kirar, Chandrala and Sahu2023) have investigated the DSD generated by different breakup mechanisms. By developing an analytical model for the combined multi-modal distribution, Jackiw & Ashgriz (Reference Jackiw and Ashgriz2022) predicted the experimental results of Guildenbecher et al. (Reference Guildenbecher, Gao, Chen and Sojka2017) for single-bag and sheet-thinning breakups. Digital in-line holography has recently emerged as a powerful tool to estimate the DSD (Gao et al. Reference Gao, Guildenbecher, Reu, Kulkarni, Sojka and Chen2013; Guildenbecher et al. Reference Guildenbecher, Cooper and Sojka2016, Reference Guildenbecher, Gao, Chen and Sojka2017; Shao et al. Reference Shao, Mallery, Kumar and Hong2020; Essaïdi et al. Reference Essaïdi, Lauret, Heymes, Aprin and Slangen2021; Radhakrishna et al. Reference Radhakrishna, Shang, Yao, Chen and Sojka2021; Ade et al. Reference Ade, Kirar, Chandrala and Sahu2023). Radhakrishna et al. (Reference Radhakrishna, Shang, Yao, Chen and Sojka2021) investigated the effect of the Weber number on droplet fragmentation at high Ohnesorge numbers. They examined different breakup modes and reported DSD obtained using the digital in-line holography technique. Using the digital in-line holography technique, Ade et al. (Reference Ade, Kirar, Chandrala and Sahu2023) showed that while the fragmentation results in mono-modal size distribution for the no-swirl airstream, it exhibits bi-modal and multi-modal distributions in a swirl flow for the low and high swirl strengths, respectively. They also showed the temporal variation of the DSD during fragmentation. For the swirling airstream, they implemented a theoretical analysis accounting for various mechanisms, such as the nodes, rim and bag breakup mode, that predicted the experimentally obtained DSD for different swirl strengths. Boggavarapu et al. (Reference Boggavarapu, Ramesh, Avulapati and Ravikrishna2021) investigated the DSD for different breakup modes using the particle/droplet image analysis (PDIA) technique. They found that while the bag and bag–stamen breakups undergo tri-modal size distribution, the dual-bag and multi-bag breakups produce bi-modal DSD. However, this study provides the DSD only at the final instant of the fragmentation process.

In the present study, we investigate the dual-bag fragmentation of a water drop and the temporal evolution of the DSD using shadowgraphy and digital in-line holography techniques. We employ a deep-learning-based post-processing method to capture three-dimensional information approximately an object with a high spatial resolution and also offers the spatial distribution of child droplets. An analytical model is also presented that satisfactorily predicts the experimentally observed droplet volume probability density. To the best of the authors’ knowledge, the present study is the first to utilise digital in-line holography and convolutional neural networks (CNNs) to estimate the DSD of a water drop undergoing dual-bag fragmentation. Moreover, we employed a deep-learning-based image-processing technique for the segmentation of child droplets. We use the analytical model developed by Jackiw & Ashgriz (Reference Jackiw and Ashgriz2022) to predict the droplet volume probability density associated with single-bag, dual-bag and multi-bag fragmentations. We found that our experimental results agree with the prediction of the analytical model that shows a bi-modal distribution for the dual-bag breakup.

2. Experimental set-up

A schematic diagram of the experimental set-up is shown in figure 1. It consists of (i) an air nozzle (with an inner diameter, $D_n=18$ mm) connected with a digital mass flow controller (MCR-500SLPM-D/CM, Alicat Scientific, Inc., USA) and an air compressor, (ii) a droplet dispensing needle (20 gauge), (iii) a continuous wave laser (SDL-532-100 T, Shanghai Dream Lasers Technology Co. Ltd), (iv) a spatial filter arrangement and collimating optics (Holmarc Opto-Mechatronics Ltd), (v) two high-speed cameras (Phantom VEO 640L; Vision Research, USA) synchronised using a digital delay generator (610036, TSI, USA) and (vi) a diffused backlit illumination.

Figure 1. Schematic diagram of the experimental set-up (top view).

A Cartesian coordinate system $(x,y,z)$ with its origin at the centre of the nozzle is used to describe the dynamics. The dispensing needle is located at $(x_{d}/D_{n}, y_{d}/D_{n}, z_{d}/D_{n}) = (0, 0.35, 1.08)$. Except for ${{We}}=40.15$ (discussed in § 3.3), in the rest of our study, a water drop of diameter $d_{0}=3.09 \pm 0.07$ mm is injected from the needle. For ${{We}}=40.15$, $d_0=4.3 \pm 0.07$ mm. The dimensionless time is defined as $\tau =Ut\sqrt {\rho _a/\rho _w}/d_{0}$, such that $\tau = 0$ represents the onset of breakup. Here, $t$ is dimensional time in seconds and $\rho _w = 998$ kg m$^{-3}$ is the density of water. High-speed camera 1 with a Nikkor lens (focal length of 135 mm and minimum aperture of $f/2$) is employed for shadowgraphy. This camera is positioned at $x=180$ mm with an angle of $-30^\circ$ to the $x$ axis. A high-power light-emitting diode (MultiLED QT, GSVITEC, Germany) is used along with a uniform diffuser sheet to illuminate the background. The resolution of the images captured using high-speed camera 1 at 1800 frames per second (fps) with an exposure duration of 1 $\mathrm {\mu }$s and a spatial resolution of 31.88 $\mathrm {\mu }$m pixel$^{-1}$ is $2048 \times 1600$ pixels.

A continuous wave laser (output power 100 mW and wavelength 532 nm), spatial filter, collimating lenses and high-speed camera 2 with a Tokina lens (focal length of $100$ mm and maximum aperture $f/2.8$; AT-X M100 PRO D Macro) positioned at $x=180$ mm as shown in figure 1 are used for digital in-line holography. The spatial filter consisting of an infinity-corrected plan achromatic objective (20${\times }$ magnification; Holmarc Opto-Mechatronics Ltd.) and a 15 $\mathrm {\mu }$m pin-hole is used to produce a clean beam that is expanded using a plano-concave lens and then collimated using a plano-convex lens that illuminates the droplet field of view. The resultant interference patterns created due to the child droplets are recorded using high-speed camera 2 with a resolution of $2048 \times 1600$ pixels at 1800 fps with an exposure duration of 1 $\mathrm {\mu }$s and spatial resolution of 15.56 $\mathrm {\mu }$m pixel$^{-1}$. In the following section, the reported size distributions are obtained from three repetitions for each set of parameters. Figure 2 outlines the various steps involved in digital in-line holography processing. A detailed illustration of the experimental set-up, shadowgraphy, digital in-line holography and the associated post-processing method can also be found in Ade et al. (Reference Ade, Kirar, Chandrala and Sahu2023).

Figure 2. Demonstration of different steps of the in-line holography. (a) Typical shadowgraphy image of the satellite droplets during the fragmentation process. (b,c) Recorded and pre-processed holograms. (d,e) The reconstructed images at two different planes.

3. Results and discussion

A drop in an airstream exhibits different morphologies and breakup modes as the Weber number increases (Soni et al. Reference Soni, Kirar, Kolhe and Sahu2020; Boggavarapu et al. Reference Boggavarapu, Ramesh, Avulapati and Ravikrishna2021; Kirar et al. Reference Kirar, Soni, Kolhe and Sahu2022). For a low Weber number, the drop enters the potential core of the airstream and deforms into a disk due to aerodynamic force while the surface tension acts to bring it to a spherical shape. Thus, the drop undergoes shape oscillations and fragments due to capillary instability and generates child droplets of comparable sizes (mono-modal size distribution). This is termed as transitional breakup (see supplementary movie 1 available at https://doi.org/10.1017/jfm.2023.164 for ${{We}} = 11.4$). As the aerodynamic force increases, the drop forms a single bag for ${{We}}=12.6$ (figure 3a) and dual bag for ${{We}}=34.8$ (figure 3b). Subsequently, the bags, rim and nodes undergo fragmentation due to Rayleigh–Taylor (RT) instability, Rayleigh–Plateau capillary instability (Taylor Reference Taylor1963) and nonlinear instability at different stages (Jackiw & Ashgriz Reference Jackiw and Ashgriz2021, Reference Jackiw and Ashgriz2022; Kirar et al. Reference Kirar, Soni, Kolhe and Sahu2022). Supplementary movies 2 and 3 show the breakup phenomena for ${{We}}=12.6$ and $34.8$, respectively. In the following, we present the temporal evolution of the DSD resulting from dual-bag fragmentation (${{We}}=34.8$) and contrast the dynamics with that associated with single-bag fragmentation (${{We}}=12.6$).

Figure 3. Temporal evolution of the fragmentation process (from shadowgraphy) and DSD (the droplet counts $N$ versus the droplet diameter $d$) for (a) ${{We}} = 12.6$ and (b) ${{We}} = 34.8$. The dimensionless time and droplet position in the flow direction $(y/D_{n})$ are mentioned in each panel. Here, $\tau =0$ represents the onset of breakup. The droplet breakup phenomena for ${{We}} = 12.6$ and 34.8 are provided as supplementary movies 2 and 3, respectively. The corresponding time-series focused holograms are included as supplementary movies 4 and 5, respectively.

Figure 3(a,b) illustrate the temporal evolution of the DSD at ${{We}} = 12.6$ (single-bag fragmentation) and ${{We}}=34.8$ (dual-bag fragmentation), respectively. In figure 3(a), it can be seen that the drop deforms to an elongated bag with a toroidal rim shape due to the aerodynamic force at the onset of rupture of the bag ($\tau =0$). As a result of this rupture, tiny child droplets are produced ($d < 300 \, \mathrm {\mu }$m at $\tau = 0.32$). Subsequently, the remaining portion of the bag breaks and produces tiny child droplets at $\tau = 0.42$. At this stage, the fragmentation of the toroidal rim due to capillary instability initiates and continues until $\tau =0.63$. This rim breakup produces intermediate size ($300 \, \mathrm {\mu }{\rm m} < d < 600 \,\mathrm {\mu }{\rm m}$) droplets, as evident in the corresponding histogram at $\tau =0.63$. Finally, the nodes detach from the rim and fragment due to RT instability and generate bigger droplets at $\tau =0.84$. The inset in the histogram at $\tau =0.84$ shows an enlarged view for $300 \,\mathrm {\mu }{\rm m} < d < 600 \, \mathrm {\mu }{\rm m}$.

In contrast, in figure 3(b), the inflated parent bag (at the onset of breakup) surrounded by parent rim and undeformed core is shown at $\tau =0$. At $\tau =0.30$, tiny child droplets of diameter with $d<300 \,\mathrm {\mu }$m are produced due to the rupture of the parent bag under the aerodynamic action. At this stage, the aerodynamic field constantly imparts the body force on the undeformed core drop, hence making the local Weber number sufficiently large for the second breakup process. Therefore, the core bag (second bag) is drawn out from the core drop's edge after the parent bag rupture. In the next stage ($\tau =0.61$), the core bag bursts and forms tiny child droplets of diameter $d<300 \,\mathrm {\mu }$m. As a result, the total number of tiny child droplets increases at $\tau =0.61$. Further, the rims associated with the initial main drop and smaller core drop fragments due to capillary instability generate intermediate-sized droplets ($300 \,\mathrm {\mu }{\rm m} < d < 600 \,\mathrm {\mu }{\rm m}$) at $\tau =0.91$. At $\tau = 1.06$, the nodes associated with the rims of the parent and core drops detach/break. This process generates larger child droplets of diameter $d>600 \,\mathrm {\mu }$m (not shown). The inset in the histogram at $\tau =1.06$ depicts an enlarged view in the region $300 \,\mathrm {\mu }{\rm m} < d < 600 \,\mathrm {\mu }{\rm m}$. The number of tiny child droplets decreases later as they move out of the field of view because of their high velocities. Second, there may be some coalescence of small droplets during the fragmentation process, leading to an increase in the number of larger child droplets at later times.

The temporal variations of the normalised number mean diameter $(d_{10}/d_0=\int _{0}^{\infty }\,{\rm d}p(d)\text {d}d/d_0)$ and Sauter mean diameter $(d_{32}/d_0 = {\int _{0}^{\infty }\,{\rm d}^{3}p(d)\text {d}d / \int _{0}^{\infty }\,{\rm d}^{2}p(d)\text {d}d}/d_0)$ for ${{We}}=12.6$ and ${{We}}=34.8$ are plotted in figures 4(a) and 4(b), respectively. Here, $p(d)$ is the probability density function of $d$. It can be seen in figure 4(a) that $d_{10}/d_{0}$ increases with time for both single-bag and dual-bag breakup cases. This is because, while the bag rupture initially only creates small child droplets, later on during the fragmentation process, larger child droplets are created, primarily generated by the fragmentation of the rim and nodes. The reciprocal of Sauter mean diameter, $1/d_{32}$ signifies the measure of surface area per unit volume of child droplets. It can be seen that the temporal variations of $d_{32}/d_0$ for single-bag and dual-bag breakups mostly overlap at the early stage $(\tau \le 0.3)$, but at later times $d_{32}/d_0$ for the dual-bag breakup is significantly lower than that of the single-bag breakup. This indicates that the fragmentation of the second bag at the later stage contributes to the number of tiny child droplets. It can be observed in figure 4(a,b) that the variations of $d_{10}$ and $d_{32}$ reach a plateau at $\tau \approx 0.84$ and 1.06 for ${{We}}=12.6$ and 34.8, respectively. This behaviour indicates that the fragmentation approximately ceases at this instant.

Figure 4. Temporal variation of the normalised (a) number mean diameter $(d_{10}/d_0)$ and (b) Sauter mean diameter $(d_{32}/d_0)$ for ${{We}}=12.6$ and 34.8. The error bar represents the standard deviation obtained using three repetitions.

3.1. Prediction of overall size distribution

The volume probability $(P_v)$ is the ratio of the total volume of droplets of a specific diameter to the total volume of all droplets. This is given by (Jackiw & Ashgriz Reference Jackiw and Ashgriz2022)

(3.1) \begin{equation} P_{v}=\frac{\zeta ^{3}P_{n}}{\displaystyle\int_{0}^{\infty}\zeta ^{3}P_{n}\,{\rm d}\zeta}={\frac{\zeta ^{3}P_{n}}{\beta^{3}\varGamma (\alpha+3)/\varGamma (\alpha)}}, \end{equation}

wherein $P_n= {\zeta ^{\alpha -1}{\rm e}^{-\zeta /\beta } / \beta ^{\alpha }\varGamma (\alpha )}$; $\zeta (=d/d_0 )$; $\varGamma (\alpha )$ represents the gamma function; $\alpha =(\bar {\zeta }/\sigma _s)^{2}$ and $\beta =\sigma _s^{2}/\bar {\zeta }$ are the shape and rate parameters, respectively; $\bar {\zeta }$ and $\sigma _s$ are the mean and standard deviation of the distribution, which are estimated based on the characteristic breakup sizes corresponding to each mode.

In the single-bag breakup, the total size distribution results from three breakup modes, namely bag, rim and node breakups. Thus, the overall volume probability density $P_{v,Total}$ is a weighted sum of each mode. Jackiw & Ashgriz (Reference Jackiw and Ashgriz2022) developed an analytical model and used it to predict the overall volume probability density and characteristic sizes of the child droplets for the single-bag and sheet-thinning breakups. In the present study, we perform experiments to investigate the droplet morphology for different Weber numbers and utilise the Jackiw & Ashgriz (Reference Jackiw and Ashgriz2022) model to estimate the overall volume probability density and characteristic sizes of the child droplets resulting from single-, dual- and multi-bag breakups.

In the dual-bag fragmentation, the overall size distribution ($P_{v,Total}$) is the combination of DSD associated with the parent ($P_{v,p}$) and core ($P_{v,c}$) drops as shown in figure 3(b). Thus,

(3.2)\begin{equation} P_{v,Total}=P_{v,p}+P_{v,c}, \end{equation}

where the contribution of the parent drop is given by

(3.3)\begin{equation} P_{v,p}=w_{N}P_{v,N}+w_{R}P_{v,R}+w_{B}P_{v,B}, \end{equation}

where $w_{N}=V_{N}/V_{0}$, $w_{R}=V_{R}/V_{0}$ and $w_{B}=V_{B}/V_{0}$ represent the contributions of the volume weights from the node, rim and bag of the parent drop, respectively. Here, $V_{0}$, $V_{B}$, $V_{R}$ and $V_{N}$ denote the volumes of the initial drop, bag, rim and node, respectively.

Due to the aerodynamic force, at the early stage, the spherical drop deforms into a disk, which in turn inflates into a bag. The volume of the deformed parent drop, $V_D$, is given by (Jackiw & Ashgriz Reference Jackiw and Ashgriz2021)

(3.4)\begin{equation} \frac{V_{D}}{V_{0}}=\frac{3}{2}\left [ \left ( \frac{2R_{i}}{d_{0}} \right )^{2}\left ( \frac{h_{i}}{d_{0}} \right )-2\left ( 1-\frac{{\rm \pi} }{4} \right )\left ( \frac{2R_{i}}{d_{0}} \right )\left ( \frac{h_{i}}{d_{0}} \right )^{2} \right ], \end{equation}

where $h_i$ denotes the disk thickness and $2R_i$ represents the major diameter of the rim, which can be evaluated as (Jackiw & Ashgriz Reference Jackiw and Ashgriz2021, Reference Jackiw and Ashgriz2022)

(3.5a,b)\begin{equation} \frac{h_{i}}{d_{0}}=\frac{4}{{{We}}_{rim}+10.4}, \quad {\rm and} \quad \frac{2R_{i}}{d_{0}}=1.63\unicode{x2013}2.88{\rm e}^{({-0.312{{We}}})}. \end{equation}

Here, ${{We}}_{rim}\ (=\rho _w \dot {R}^{2}{d_{0}}/\sigma )$ denotes the rim Weber number, which indicates the competition between the radial momentum induced at the drop periphery and the restoring surface tension of the stable drop. The constant radial expansion rate of the drop, $\dot {R}$, is given by $\dot {R}=(1.125 U \sqrt {\rho _a/\rho _w)}/2)(1-32/9 {{We}})$ (Jackiw & Ashgriz Reference Jackiw and Ashgriz2022). Using these expressions, we can estimate $w_{N}$, $w_{R}$ and $w_B$ as

(3.6)\begin{gather} w_{N} =\frac{V_{N}}{V_{0}}=\frac{V_{N}}{V_{D}}\frac{V_{D}}{V_{0}}, \end{gather}
(3.7)\begin{gather}w_{R} =\frac{V_{R}}{V_{0}}=\frac{3{\rm \pi} }{2}\left [ \left ( \frac{2R_{i}}{d_{0}} \right )\left ( \frac{h_{i}}{d_{0}} \right )^{2}-\left ( \frac{h_{i}}{d_{0}} \right )^{3} \right ], \end{gather}
(3.8)\begin{gather}w_B =\frac{V_{B}}{V_{0}} =\frac{V_{D}}{V_{0}}-\frac{V_{N}}{V_{0}}-\frac{V_{R}}{V_{0}}, \end{gather}

where $V_N/V_D$ represents the volume fraction of the node relative to the disk. Jackiw & Ashgriz (Reference Jackiw and Ashgriz2022) experimentally investigated the bag and bag–stamen breakups at different Weber numbers and estimated the mean value of $V_N/V_D$ to be 0.4 for bag breakups. Thus, in our study, we use $V_N/V_D=0.4$ to estimate $w_N$.

The characteristic sizes associated with the node, rim and bag are then estimated separately for the parent and core drops. Jackiw & Ashgriz (Reference Jackiw and Ashgriz2022) used a similar analysis, albeit for the single-bag and sheet-thinning fragmentation process.

3.1.1. Parent node

The node breakup occurs due to the RT and Rayleigh–Plateau instabilities, respectively (Zhao et al. Reference Zhao, Liu, Li and Xu2010; Kirar et al. Reference Kirar, Soni, Kolhe and Sahu2022). The child droplet size associated with node ($d_{N}$) breakup for the parent drop is given by (Jackiw & Ashgriz Reference Jackiw and Ashgriz2022)

(3.9)\begin{equation} {d_{N}}= d_{0}\left [ \frac{3}{2}\left ( \frac{h_{i}}{d_{0}} \right )^{2}\frac{\lambda_{RT} }{d_{0}}n \right ]^{1/3}. \end{equation}

Here, $\lambda _{RT}=2{\rm \pi} \sqrt {3\sigma /\rho _w a}$ is the maximum susceptible wavelength of the RT instability, wherein

(3.10)\begin{equation} a=\frac{3}{4}C_{D}\frac{U^{2}}{d_{0}}\frac{\rho_{a} }{\rho_{w}} ({D_{max}/d_{0}} )^{2} \end{equation}

is the acceleration of the deforming droplet. The drag coefficient ($C_{D}$) of the disk shape droplet is approximately 1.2 and the extent of droplet deformation is given by ${D_{max} / d_0}={2 / (1+\exp {(-0.0019 {{We}}^{2.7})})}$ (Zhao et al. Reference Zhao, Liu, Li and Xu2010). In (3.9), $n=V_{N}/V_{D}$ indicates the volume fraction of the nodes relative to the disk. Jackiw & Ashgriz (Reference Jackiw and Ashgriz2022) estimated the minimum, mean and maximum values of $n$ to be 0.2, 0.4 and 1, respectively. The node droplets exhibit three characteristic sizes ($d_N$), which can be determined using these three values of $n$. The mean and standard deviation of the parent node distribution are calculated from these three characteristic sizes.

3.1.2. Parent rim

There are three mechanisms for rim breakup. They are (i) the Rayleigh–Plateau instability, (ii) the receding rim instability and (iii) the nonlinear instability of liquid ligaments near the pinch-off point. The child droplet size $(d_{R})$ produced from the first mechanism is given by (Jackiw & Ashgriz Reference Jackiw and Ashgriz2021)

(3.11)\begin{equation} d_{R}=1.89h_{f}, \end{equation}

where $h_{f}=h_{i}\sqrt {R_{i}/R_{f}}$ is the final rim thickness. The term $R_f$ in the above expression represents the radius of the bag at the time of its burst and it can be evaluated as (Kirar et al. Reference Kirar, Soni, Kolhe and Sahu2022)

(3.12)\begin{equation} R_f=\frac{d_{0}}{2\eta} \left [ 2{\rm e}^{\tau ^{\prime}\sqrt{p}}+\left ( \frac{\sqrt{p}}{\sqrt{q}}-1 \right ){\rm e}^{-\tau ^{\prime}\sqrt{q}}-\left ( \frac{\sqrt{p}}{\sqrt{q}}+1 \right ){\rm e}^{\tau ^{\prime}\sqrt{q}} \right ], \end{equation}

where $\eta = f^{2}-120/{{We}}$, $p=f^{2}-96/{{We}}$ and $q=24/{{We}}$. The value of the stretching factor, $f$ for a droplet undergoing breakup in a cross-flow of air is $2\sqrt {2}$ (Kulkarni & Sojka Reference Kulkarni and Sojka2014). In (3.12), the dimensionless time, $\tau ^{\prime }=Ut_{b}\sqrt {\rho _{a}/\rho _{w} }/d_{0}$. Here, the bursting time, $t_b$, can be evaluated as (Jackiw & Ashgriz Reference Jackiw and Ashgriz2022)

(3.13)\begin{equation} t_{b}=\dfrac{\left [ \left ( \dfrac{d_{i}}{d_{0}} \right )-2\left ( \dfrac{h_{i}}{d_{0}} \right ) \right ]}{\dfrac{2\dot{R}}{d_{0}}}\left [{-}1+\sqrt{1+9.4 \dfrac{8t_{d}}{\sqrt{3{{We}}}}\dfrac{\dfrac{2\dot{R}}{d_{0}}}{\left [ \left ( \dfrac{d_{i}}{d_{0}} \right )-2\left ( \dfrac{h_{i}}{d_{0}} \right ) \right ]}\sqrt{\dfrac{V_{B}}{V_{0}}}} \right ], \end{equation}

where $d_{i}=2 R_i$ and $t_d=d_0/U\sqrt {\rho _w/\rho _a}$ denotes the deformation time scale.

The child droplet size ($d_{rr}$) associated with the second mechanism is given by (Jackiw & Ashgriz Reference Jackiw and Ashgriz2022)

(3.14)\begin{equation} d_{rr}=d_{0}\left [ \frac{3}{2}\left ( \frac{h_{f}}{d_{0}} \right )^{2}\frac{\lambda_{rr}}{d_{0}} \right ]^{1/3}, \end{equation}

where $\lambda _{rr}=4.5b_{rr}$ is the wavelength of the receding rim instability and $b_{rr}=\sqrt {\sigma /\rho _w a_{rr}}$ is the receding rim thickness. Here, $a_{rr}=U_{rr}^{2}/R_{f}$ denotes the acceleration of the receding rim (Wang et al. Reference Wang, Dandekar, Bustos, Poulain and Bourouiba2018), wherein $U_{rr}$ represents the receding rim velocity. After the bag ruptures, the edge begins to roll up, forming a receding rim that recedes along the bag. In the present study, $U_{rr}$ is calculated experimentally by measuring the rate of displacement of the receding rim relative to the main rim.

The third mechanism produces two different characteristic sizes of child droplets, which are given by (Keshavarz et al. Reference Keshavarz, Houze, Moore, Koerner and McKinley2020)

(3.15a,b)\begin{equation} d_{sat,R}=\frac{d_R}{\sqrt{2+3Oh_{R}/\sqrt{2}}} \quad \text{and}\quad d_{sat,{rr}}=\frac{d_{rr}}{\sqrt{2+3Oh_{R}/\sqrt{2}}}, \end{equation}

where $Oh_{R} (=\mu /\sqrt {\rho _w h_{f}^{3}\sigma })$ denotes the Ohnesorge number based on the final parent rim thickness. The characteristic sizes are given by (3.11), (3.14) and (3.15a,b) are used to evaluate the number-based mean and standard deviation for the parent rim distribution.

3.1.3. Parent bag

The characteristic sizes associated with the bag fragmentation due to the minimum bag thickness ($d_{B}$), the receding rim thickness ($d_{rr}$), the Rayleigh–Plateau instability ($d_{RP,B}$) and nonlinear instability of liquid ligaments ($d_{sat,B}$) are given by (Jackiw & Ashgriz Reference Jackiw and Ashgriz2022)

(3.16ad)\begin{align} d_{B}=h_{min}, \quad d_{rr,B}=b_{rr},\quad d_{RP,B}=1.89 b_{rr}, \quad \text{and}\quad d_{sat,B}=\frac{d_{RP,B}}{\sqrt{2+3Oh_{rr}/\sqrt{2}}}, \end{align}

where $h_{min}= (2.3\pm 1.2)\,\mathrm {\mu }{\rm m}$ is the minimum bag thickness as reported by Jackiw & Ashgriz (Reference Jackiw and Ashgriz2022) and $Oh_{rr}\ (=\mu /\sqrt {\rho _{w} b_{rr}^{3}\sigma })$ is the Ohnesorge number based on receding rim thickness. These characteristic sizes are used to estimate the number mean and standard deviation associated with the parent bag fragmentation mode.

3.1.4. Core DSD ($P_{v,c}$)

The core drop also exhibits three modes similar to the parent drop. The weight of each breakup mode should be multiplied by the volume weight of the core drop as it only comprises up a small portion of the original parent drop. Thus, by taking into account the volume weight of each mode, the combined size distribution of the core drop $(P_{v,c})$ is given by (Jackiw & Ashgriz Reference Jackiw and Ashgriz2022)

(3.17)\begin{equation} P_{v,c}=\frac{V_{c}}{V_{0}}(w_{N,c}P_{v,c,N}+w_{R,c}P_{v,c,R}+w_{B,c}P_{v,c,B}), \end{equation}

where, $w_{B,c}=V_{Bc}/V_{c}$, $w_{R,c}=V_{Rc}/V_{c}$ and $w_{N,c}=V_{Nc}/V_{c}$ denote the contributions of volume weights from the core bag, core rim and core node, respectively. Here, $V_{Bc}$, $V_{Rc}$ and $V_{Nc}$ are the bag, rim and node volumes of the core drop, respectively. The volume of the core drop, $V_c$ is given by $V_{c}=V_{0} (1-{V_D/V_0})$. The volume weight of each breakup mode for the core drop is estimated in the same manner as the parent drop. However, the Weber number of the core drop is determined by considering the relative velocity between airflow and core drop as explained in Jackiw & Ashgriz (Reference Jackiw and Ashgriz2022). In addition, the characteristic sizes corresponding to each breakup mode of the core drop are determined in the same manner as described for the parent drop. Note that the characteristic sizes for the core drop are represented using a subscript ‘$c$’.

Figures 5(ac) and 5(df) depict the comparison of the theoretically predicted characteristic breakup sizes of a drop undergoing single-bag and dual-bag fragmentation processes with experimental results. The panels 5(a,d), 5(b,e), and 5(c,f) are for the bag, rim, and node breakup modes, respectively. In contrast to node fragmentation, which results in three characteristic sizes, the bag, and rim breakups produce four characteristic sizes of the child droplets, as discussed in Jackiw & Ashgriz (Reference Jackiw and Ashgriz2022) for a single-bag breakup. It can be seen in figures 5(ac) and 5(df) that for both single-bag and dual-bag breakups, the theoretically predicted sizes agree well with the experimental results. In other words, the peaks of the experimental distribution correspond to the mean values of the characteristic sizes for individual modes. In the dual-bag breakup (figure 5df), the characteristic sizes produced from the rim, bag, and node of the parent drop are smaller than the corresponding fragmentation of the core drop. This is because the parent drop experiences a strong aerodynamic field while the core drop encounters a weaker aerodynamic field as it moves away from the nozzle. Therefore, the local Weber number corresponding to the core drop (${{We}}_c \approx 17$) is significantly lower than that of the parent drop (${{We}} \approx 34.8$). These predicted characteristic sizes are used to evaluate the individual size distribution of each mode (bag, rim and node), and then the total volume probability distribution is estimated.

Figure 5. Comparison of the theoretically predicted droplet characteristic breakup sizes with experimental data: (ac) ${{We}} = 12.6$ at $\tau =0.84$ and (df) ${{We}}=34.8$ at $\tau =1.06$. Here, the black and red lines represent the characteristic sizes of the parent and core drops, respectively. The insets in panels (a,c) show the enlarged views for small-size child droplets with the axis for $d/d_0$ in $\log$ scale.

The comparison of the size distribution obtained from the analytical model and experiments are shown in figures 6(a) and 6(b) for the single-bag and dual-bag breakups, respectively. In the case of a single-bag breakup, it can be seen in figure 6(a) that the contributions from the bag and rim are slightly over-predicted, while it is under-predicted for the node. In figure 6(a), the first ($d/d_0\approx 0.06$), second ($d/d_0\approx 0.27$) and third ($d/d_0\approx 0.46$) peaks are associated with the bag, rim and nodes, respectively, indicating a tri-modal distribution, as also reported by Guildenbecher et al. (Reference Guildenbecher, Gao, Chen and Sojka2017) and Jackiw & Ashgriz (Reference Jackiw and Ashgriz2022). In contrast to the single-bag, dual-bag fragmentation involves the breakup of parent and core drops distinctly. Each drop undergoes three breakup modes associated with the bag, rim and nodes. Thus, six physical processes contribute to the overall size distribution. The experimental results in figure 6(b) show that the first ($d/d_{0}\approx 0.05$) and second peaks ($d/d_{0}\approx 0.09$) are close to each other and are likely due to the fragmentation of parent and core bags, respectively. The parent bag experiences a strong aerodynamic field and, thus, undergoes more inflation leading to smaller child droplets. On the other hand, the core drop is exposed to a weaker aerodynamic field and, thus, elongates less, which results in bigger child droplets. The third peak ($d/d_{0}\approx 0.25$) in figure 6(b) is due to the fragmentation of the rim and nodes of the parent and core drops. Despite the complex breakup phenomenon involving six distinct modes, the resultant overall size distribution exhibits a bi-modal size distribution in the dual-bag breakup. This can be explained by analysing figures 5(df) and 6(b), which depict that the size of the child droplets from the core bag overlaps with that of the parent rim. The size of child droplets resulting from the core rim and parent node breakup also lies in the same range. These observations are distinct from that of the single-bag fragmentation. It is to be noted that Jackiw & Ashgriz (Reference Jackiw and Ashgriz2022) analytically showed that while single-bag breakup exhibits a tri-modal distribution, the sheet-thinning breakup displays a mono-modal distribution.

Figure 6. Comparison of the multi-modal distribution obtained from the experiments with the analytical predictions for (a) ${{We}} = 12.6$ at $\tau =0.84$ (single-bag breakup) and (b) ${{We}} = 34.8$ at $\tau =1.06$ (dual-bag breakup). The solid line represents the size distribution due to the sum of all modes (overall size distribution). Panels (c,d) present the results of panels (a,b) in $\log$ scale for $d/d_0$ axis.

3.2. Contribution from individual breakup modes

To get better insight into the breakup phenomenon, we perform mode decomposition to evaluate the individual contributions of different modes to the overall size distribution of the child droplets. The mode decomposition for the single-bag breakup (${{We}}=12.6$) is presented in figure 7. At $\tau=0.42$, the bag completely fragments, as shown in figure 7(b). The resulting size distribution is shown in figure 7(d). In the analytical model, we use the contribution of the bag only as given in Jackiw & Ashgriz (Reference Jackiw and Ashgriz2022). It is evident that the analytical model predicts the experimentally observed size distribution for the bag fragmentation that depicts a mono-modal size distribution. In order to isolate the contributions of the rim and nodes, we subtract the child droplets generated by the bag fragmentation from the total fragments at $\tau =0.84$ (figure 7e). However, because the rim and nodes break simultaneously, it is difficult to distinguish their individual contributions. It can be seen that both experimental and analytical distributions exhibit a bi-modal distribution. Inspection of figure 7(d,e) reveals that the distributions for bag, rim and nodes exhibit distinct peaks associated with different values of $d/d_0$. As a result, the combined contributions of the bag, rim and nodes result in a tri-modal distribution, as shown in figure 6(a). Quantitatively, the total volume percentage of the child droplets due to bag and rim+node are 14.88 % and 85.12 %, respectively. The characteristic sizes at the instants associated with the rupture of the bag $(\tau =0.42)$ and the fragmentation of the rim and nodes $(\tau =0.84)$ are presented in figures 8(a) and 8(b,c), respectively.

Figure 7. Mode decomposition for single-bag breakup at $We=12.6$. (ac) Shadowgraphy images at three instants corresponding to the maximum bag inflation $(\tau =0)$, rupture of bag $(\tau =0.42)$ and fragmenting of the rim and node $(\tau =0.84)$, respectively. The corresponding size distributions of child droplets at $\tau =0.42$ and 0.84 are shown in panels (d,e), respectively.

Figure 8. Comparison of experimental data with the theoretically predicted characteristic breakup sizes at (a) $\tau =0.42$, and (b,c) $\tau =0.84$ for ${{We}} = 12.6$ (single-bag breakup). The panels (b,c) correspond to the rim and node fragmentations, respectively.

The mode decomposition for the dual-bag breakup at ${{We}}=34.8$ is presented in figure 9 and the corresponding characteristic sizes for each mode are presented in figure 10. It can be seen in figure 9(b) that at $\tau =0.3$, the parent bag ruptures, and the corresponding size distribution is presented in figure 9(e). We use (3.3) to calculate the size distribution by only considering the child droplets from the parent bag breakup. At $\tau =0.61$, the core bag also breaks (figure 9c), and the combined contribution of the parent and core bags is shown in figure 9(f). For bag breakup, the analytical model predicts the experimentally observed size distributions and exhibits a mono-modal behaviour. At $\tau =1.06$, we subtract the child droplets generated due to both bags from the total number of fragments to isolate the contributions of the rim and nodes (figure 9g). Both experimental results and analytical models indicate that child droplets resulting from rims and nodes exhibit mono-modal distributions. The combined contributions of the bags, rim and nodes of the parent and core result in a bi-modal distribution, as shown in figure 6(b). The distinct behaviour observed in dual-bag breakup as compared to the single-bag case can be attributed to two factors. First, in dual-bag fragmentation, the sizes of the child droplets produced from the core rim and parent nodes overlap with each other. Second, the separation between the characteristic sizes of the droplets from the parent rim and nodes is also significantly lower than that observed in the single-bag breakup. Our results also reveal that the total volume percentages of child droplets due to the parent bag and core bag are 18.9 % and 9 %, respectively. The combined contributions from the rim and nodes of the parent and core provide a total volume percentage of 72.12 %.

Figure 9. Mode decomposition for the dual-bag breakup at $We=34.8$. Panels (ad) depict shadowgraphy images at four instants corresponding to the maximum inflation of the parent bag $(\tau =0)$, rupture of parent bag $(\tau =0.3)$, fragmenting of core bag $(\tau =0.61)$ and fragmenting of rim + nodes $(\tau =1.06)$, respectively. The corresponding size distributions of child droplets at $\tau =0.3$, 0.61 and 1.06 are shown in panels (e,f,g), respectively.

Figure 10. Comparison of experimental data with the theoretically predicted characteristic breakup sizes at (a) $\tau =0.30$, (b) $\tau =0.61$ and (c,d) $\tau =1.06$ for ${{We}} = 34.8$ (dual-bag breakup). The panels (c,d) correspond to the rim and node fragmentations, respectively.

3.3. Multi-bag breakup

In order to validate the analytical model at a high Weber number $({{We}}=40.15)$, we perform experiments for a bigger size of drop ($d_{0}=4.3$ mm). At this Weber number, the size of the undeformed core of the drop increases which results in multi-bag formation along the direction of the airstream. Figure 11 depicts the temporal evolution of the droplet undergoing multi-bag fragmentation (figure 11ae) and the corresponding size distributions (figure 11fi) at ${{We}}=40.15$. It can be seen that at $\tau =0$, two elongated bags are formed which are separated by a rib-like structure. The first bag ruptures at $\tau =0.1$ and produces child droplets in the range $0 \le d < 450 \, \mathrm {\mu }$m. Subsequently, the second bag fragments and produces more tiny droplets at $\tau =0.31$. As the remaining undeformed core is exposed to the strong aerodynamic field, at $\tau =0.62$, the core further deforms and inflates into a bag-like structure (third bag), which also ruptures. Eventually, the rim and nodes associated with the first, second and third bags fragment at $\tau =1.56$, resulting in larger child droplets of size, $d >450\,\mathrm {\mu }$m.

Figure 11. Temporal evolution of a water droplet ($d_{0}=4.3$ mm) undergoing multi-bag fragmentation process (${{We}} = 40.15$). Panels (ae) depict shadowgraphy images at five instants corresponding to the maximum inflation of parent bag $(\tau =0)$, rupture of parent bag $(\tau =0.10)$, fragmenting of second bag $(\tau =0.31)$, inflation of third bag $(\tau =0.62)$ and fragmentation of rim and nodes $(\tau =0.56)$, respectively. The dimensionless time $(\tau )$ and droplet position in the flow direction $(y/D_{n})$ are mentioned in each panel. The corresponding size distributions of the child droplets at $\tau =0.10$, 0.31, 0.62 and 1.06 are shown in panels (fi), respectively.

The analytical model for the dual-bag fragmentation (discussed in § 3.1) can be extended to the multi-bag fragmentation (Jackiw & Ashgriz Reference Jackiw and Ashgriz2022). The comparison of the size distribution obtained from the analytical model and experiments is shown in figure 12 for the multi-bag breakup. Inspection of figure 12 reveals that the first peak of the overall size distribution (at $d/d_{0} \approx 0.15$) is largely associated with the fragmentation of all the bags and the first rim. The second peak (at $d/d_{0} \approx 0.30$) results from the rims and nodes of the second and third bags. Among these bags, while the first bag contributes significantly to overall size distribution (18.5 %), the contributions from the second and third bags are 10.7 % and 0.5 %, respectively. The rest of the contributions are associated with the fragmentation of rims and nodes. The intricate breakup phenomenon at this high Weber number involves nine separate modes, yet yields a bi-modal size distribution. The temporal variations of the normalised number mean diameter $(d_{10}/d_0)$ and Sauter mean diameter $(d_{32}/d_0)$ for ${{We}}=40.15$ are plotted in figures 13(a) and 13(b), respectively. We found that the trend is similar to that observed for ${{We}}=12.6$ and 34.8. However, the time scale of the fragmentation is larger in the case of the multi-bag breakup.

Figure 12. Comparison of the multi-modal size distribution obtained from the experiments with the analytical predictions for ${{We}} = 40.15$ at $\tau =1.56$.

Figure 13. Temporal variation of the normalised (a) number mean diameter $(d_{10}/d_0)$ and (b) Sauter mean diameter $(d_{32}/d_0)$ for ${{We}}=40.15$. The error-bar represents the standard deviation obtained using three repetitions.

In addition, in order to check the validity of the model, we investigate the DSDs for three more Weber numbers, namely, ${{We}}=30.0$ (water droplet of initial diameter $d_{0}=4.3$ mm), ${{We}}=13.8$ (ethanol drop of initial diameter $d_{0}=2.7$ mm) and ${{We}}=55.3$ (ethanol drop of initial diameter $d_{0}=2.7$ mm). These droplets undergo bag, dual-bag and sheet-thinning breakups at ${{We}}=13.8$, 30.0 and 55.3, respectively. While we have performed the experiments for ${{We}}=30.0$, the data for ${{We}}=13.8$ and 55.3 have been taken from Guildenbecher et al. (Reference Guildenbecher, Gao, Chen and Sojka2017). The comparisons of the analytical model with the experimental data for different values of ${{We}}$ are presented in figures 14 and 15(a,b). It can be observed that the analytical model convincingly predicts the size distribution of the child droplets for a range of Weber numbers.

Figure 14. Comparison of the analytical model with the experimental data for a water drop of initial diameter $d_{0}= 4.3$ mm and ${{We}} = 30.0$. This exhibits a dual-bag breakup.

Figure 15. Comparison of the analytical model with the experimental data taken from Guildenbecher et al. (Reference Guildenbecher, Gao, Chen and Sojka2017) for an ethanol drop of initial diameter $d_{0}=2.7$ mm at (a) ${{We}}=13.8$ (single-bag breakup) and (b) ${{We}}=55.3$ (sheet-thinning breakup).

4. Concluding remarks

We have investigated the DSD owing to the dual-bag fragmentation of a water drop and compared it with the single-bag breakup using shadowgraphy and deep-learning-based digital in-line holography. We have found that the Sauter mean diameter of the child droplets in dual-bag fragmentation is smaller than that observed in the single-bag breakup. Second, the size of the child droplets resulting from the fragmentation of the parent drop is smaller than the core drop. In addition, we have utilised the analytical model developed by Jackiw & Ashgriz (Reference Jackiw and Ashgriz2022) to predict the volume probability density of the child droplets resulting from the dual-bag fragmentation and compared it with our experimental result. Interestingly, despite having six distinct breakup phenomena, the dual-bag breakup exhibits a bi-modal distribution in contrast to the single-bag breakup, which undergoes a tri-modal distribution. We have estimated the temporal evolution of the child droplet production to quantitatively show the decomposition of the model into the initial and core breakups. We have further shown that the analytical model predicts the DSD for a range of Weber numbers.

Supplementary movies

Supplementary movies are available at https://doi.org/10.1017/jfm.2023.164.

Funding

L.D.C. and K.C.S. thank the Science and Engineering Research Board, India for their financial support through grants SRG/2021/001048 and CRG/2020/000507, respectively. We also thank IIT Hyderabad for the financial support through grant IITH/CHE/F011/SOCH1 and start-up grant (for L.D.C.). S.S.A. also thanks the PMRF for a Fellowship.

Declaration of interests

The authors report no conflict of interest.

References

Ade, S.S., Kirar, P.K., Chandrala, L.D. & Sahu, K.C. 2023 Droplet size distribution in a swirl airstream using in-line holography technique. J. Fluid Mech. 954, A39.CrossRefGoogle Scholar
Boggavarapu, P., Ramesh, S.P., Avulapati, M.M. & Ravikrishna, R.V. 2021 Secondary breakup of water and surrogate fuels: breakup modes and resultant droplet sizes. Intl J. Multiphase Flow 145, 103816.CrossRefGoogle Scholar
Cao, X.K., Sun, Z.G., Li, W.F., Liu, H.F. & Yu, Z.H. 2007 A new breakup regime of liquid drops identified in a continuous and uniform air jet flow. Phys. Fluids 19 (5), 057103.CrossRefGoogle Scholar
Essaïdi, Z., Lauret, P., Heymes, F., Aprin, L. & Slangen, P. 2021 Aerodynamic fragmentation of water, ethanol and polyethylene glycol droplets investigated by high-speed in-line digital holography. Opt. Mater. 122, 111747.CrossRefGoogle Scholar
Gao, J., Guildenbecher, D.R., Reu, P.L., Kulkarni, V., Sojka, P.E. & Chen, J. 2013 Quantitative, three-dimensional diagnostics of multiphase drop fragmentation via digital in-line holography. Opt. Lett. 38 (11), 18931895.CrossRefGoogle ScholarPubMed
Guildenbecher, D.R., Cooper, M.A. & Sojka, P.E. 2016 High-speed (20 kHz) digital in-line holography for transient particle tracking and sizing in multiphase flows. Appl. Opt. 55 (11), 28922903.CrossRefGoogle ScholarPubMed
Guildenbecher, D.R., Gao, J., Chen, J. & Sojka, P.E. 2017 Characterization of drop aerodynamic fragmentation in the bag and sheet-thinning regimes by crossed-beam, two-view, digital in-line holography. Intl J. Multiphase Flow 94, 107122.CrossRefGoogle Scholar
Guildenbecher, D.R., López-Rivera, C. & Sojka, P.E. 2009 Secondary atomization. Exp. Fluids 46 (3), 371402.CrossRefGoogle Scholar
Jackiw, I.M. & Ashgriz, N. 2021 On aerodynamic droplet breakup. J. Fluid Mech. 913, A33.CrossRefGoogle Scholar
Jackiw, I.M. & Ashgriz, N. 2022 Prediction of the droplet size distribution in aerodynamic droplet breakup. J. Fluid Mech. 940, A17.CrossRefGoogle Scholar
Keshavarz, B., Houze, E.C., Moore, J.R., Koerner, M.R. & McKinley, G.H. 2020 Rotary atomization of Newtonian and viscoelastic liquids. Phys. Rev. Fluids 5 (3), 033601.CrossRefGoogle Scholar
Kirar, P.K., Soni, S.K., Kolhe, P.S. & Sahu, K.C. 2022 An experimental investigation of droplet morphology in swirl flow. J. Fluid Mech. 938, A6.CrossRefGoogle Scholar
Kulkarni, V. & Sojka, P.E. 2014 Bag breakup of low viscosity drops in the presence of a continuous air jet. Phys. Fluids 26 (7), 072103.CrossRefGoogle Scholar
Li, J., Shen, S., Liu, J., Zhao, Y., Li, S. & Tang, C. 2022 Secondary droplet size distribution upon breakup of a sub-milimeter droplet in high speed cross flow. Intl J. Multiphase Flow 148, 103943.CrossRefGoogle Scholar
Pilch, M. & Erdman, C.A. 1987 Use of breakup time data and velocity history data to predict the maximum size of stable fragments for acceleration-induced breakup of a liquid drop. Intl J. Multiphase Flow 13 (6), 741757.CrossRefGoogle Scholar
Radhakrishna, V., Shang, W., Yao, L., Chen, J. & Sojka, P.E. 2021 Experimental characterization of secondary atomization at high Ohnesorge numbers. Intl J. Multiphase Flow 138, 103591.CrossRefGoogle Scholar
Raut, B.A., Konwar, M., Murugavel, P., Kadge, D., Gurnule, D., Sayyed, I., Todekar, K., Malap, N., Bankar, S. & Prabhakaran, T. 2021 Microphysical origin of raindrop size distributions during the Indian monsoon. Geophys. Res. Lett. 48 (16), e2021GL093581.CrossRefGoogle Scholar
Shao, S., Mallery, K., Kumar, S.S. & Hong, J. 2020 Machine learning holography for 3D particle field imaging. Opt. Express 28 (3), 29872999.CrossRefGoogle ScholarPubMed
Soni, S.K., Kirar, P.K., Kolhe, P. & Sahu, K.C. 2020 Deformation and breakup of droplets in an oblique continuous air stream. Intl J. Multiphase Flow 122, 103141.CrossRefGoogle Scholar
Suryaprakash, R. & Tomar, G. 2019 Secondary breakup of drops. J. Indian Inst. Sci. 99 (1), 7791.CrossRefGoogle Scholar
Taylor, G.I. 1963 The shape and acceleration of a drop in a high speed air stream. In The Scientific Papers of G. I. Taylor (ed. G.K. Batchelor), vol. 3, pp. 457–464. Cambridge University Press.Google Scholar
Villermaux, E. 2007 Fragmentation. Annu. Rev. Fluid Mech. 39, 419446.CrossRefGoogle Scholar
Villermaux, E. & Bossa, B. 2009 Single-drop fragmentation determines size distribution of raindrops. Nat. Phys. 5 (9), 697702.CrossRefGoogle Scholar
Villermaux, E. & Eloi, F. 2011 The distribution of raindrops speeds. Geophys. Res. Lett. 38 (19), L19805.CrossRefGoogle Scholar
Wang, Y., Dandekar, R., Bustos, N., Poulain, S. & Bourouiba, L. 2018 Universal rim thickness in unsteady sheet fragmentation. Phys. Rev. Lett. 120 (20), 204503.CrossRefGoogle ScholarPubMed
Xu, Z., Wang, T. & Che, Z. 2022 Droplet breakup in airflow with strong shear effect. J. Fluid Mech. 941, A54.CrossRefGoogle Scholar
Zhao, H., Liu, H.F., Li, W.F. & Xu, J.L. 2010 Morphological classification of low viscosity drop bag breakup in a continuous air jet stream. Phys. Fluids 22 (11), 114103.CrossRefGoogle Scholar
Figure 0

Figure 1. Schematic diagram of the experimental set-up (top view).

Figure 1

Figure 2. Demonstration of different steps of the in-line holography. (a) Typical shadowgraphy image of the satellite droplets during the fragmentation process. (b,c) Recorded and pre-processed holograms. (d,e) The reconstructed images at two different planes.

Figure 2

Figure 3. Temporal evolution of the fragmentation process (from shadowgraphy) and DSD (the droplet counts $N$ versus the droplet diameter $d$) for (a) ${{We}} = 12.6$ and (b) ${{We}} = 34.8$. The dimensionless time and droplet position in the flow direction $(y/D_{n})$ are mentioned in each panel. Here, $\tau =0$ represents the onset of breakup. The droplet breakup phenomena for ${{We}} = 12.6$ and 34.8 are provided as supplementary movies 2 and 3, respectively. The corresponding time-series focused holograms are included as supplementary movies 4 and 5, respectively.

Figure 3

Figure 4. Temporal variation of the normalised (a) number mean diameter $(d_{10}/d_0)$ and (b) Sauter mean diameter $(d_{32}/d_0)$ for ${{We}}=12.6$ and 34.8. The error bar represents the standard deviation obtained using three repetitions.

Figure 4

Figure 5. Comparison of the theoretically predicted droplet characteristic breakup sizes with experimental data: (ac) ${{We}} = 12.6$ at $\tau =0.84$ and (df) ${{We}}=34.8$ at $\tau =1.06$. Here, the black and red lines represent the characteristic sizes of the parent and core drops, respectively. The insets in panels (a,c) show the enlarged views for small-size child droplets with the axis for $d/d_0$ in $\log$ scale.

Figure 5

Figure 6. Comparison of the multi-modal distribution obtained from the experiments with the analytical predictions for (a) ${{We}} = 12.6$ at $\tau =0.84$ (single-bag breakup) and (b) ${{We}} = 34.8$ at $\tau =1.06$ (dual-bag breakup). The solid line represents the size distribution due to the sum of all modes (overall size distribution). Panels (c,d) present the results of panels (a,b) in $\log$ scale for $d/d_0$ axis.

Figure 6

Figure 7. Mode decomposition for single-bag breakup at $We=12.6$. (ac) Shadowgraphy images at three instants corresponding to the maximum bag inflation $(\tau =0)$, rupture of bag $(\tau =0.42)$ and fragmenting of the rim and node $(\tau =0.84)$, respectively. The corresponding size distributions of child droplets at $\tau =0.42$ and 0.84 are shown in panels (d,e), respectively.

Figure 7

Figure 8. Comparison of experimental data with the theoretically predicted characteristic breakup sizes at (a) $\tau =0.42$, and (b,c) $\tau =0.84$ for ${{We}} = 12.6$ (single-bag breakup). The panels (b,c) correspond to the rim and node fragmentations, respectively.

Figure 8

Figure 9. Mode decomposition for the dual-bag breakup at $We=34.8$. Panels (ad) depict shadowgraphy images at four instants corresponding to the maximum inflation of the parent bag $(\tau =0)$, rupture of parent bag $(\tau =0.3)$, fragmenting of core bag $(\tau =0.61)$ and fragmenting of rim + nodes $(\tau =1.06)$, respectively. The corresponding size distributions of child droplets at $\tau =0.3$, 0.61 and 1.06 are shown in panels (e,f,g), respectively.

Figure 9

Figure 10. Comparison of experimental data with the theoretically predicted characteristic breakup sizes at (a) $\tau =0.30$, (b) $\tau =0.61$ and (c,d) $\tau =1.06$ for ${{We}} = 34.8$ (dual-bag breakup). The panels (c,d) correspond to the rim and node fragmentations, respectively.

Figure 10

Figure 11. Temporal evolution of a water droplet ($d_{0}=4.3$ mm) undergoing multi-bag fragmentation process (${{We}} = 40.15$). Panels (ae) depict shadowgraphy images at five instants corresponding to the maximum inflation of parent bag $(\tau =0)$, rupture of parent bag $(\tau =0.10)$, fragmenting of second bag $(\tau =0.31)$, inflation of third bag $(\tau =0.62)$ and fragmentation of rim and nodes $(\tau =0.56)$, respectively. The dimensionless time $(\tau )$ and droplet position in the flow direction $(y/D_{n})$ are mentioned in each panel. The corresponding size distributions of the child droplets at $\tau =0.10$, 0.31, 0.62 and 1.06 are shown in panels (fi), respectively.

Figure 11

Figure 12. Comparison of the multi-modal size distribution obtained from the experiments with the analytical predictions for ${{We}} = 40.15$ at $\tau =1.56$.

Figure 12

Figure 13. Temporal variation of the normalised (a) number mean diameter $(d_{10}/d_0)$ and (b) Sauter mean diameter $(d_{32}/d_0)$ for ${{We}}=40.15$. The error-bar represents the standard deviation obtained using three repetitions.

Figure 13

Figure 14. Comparison of the analytical model with the experimental data for a water drop of initial diameter $d_{0}= 4.3$ mm and ${{We}} = 30.0$. This exhibits a dual-bag breakup.

Figure 14

Figure 15. Comparison of the analytical model with the experimental data taken from Guildenbecher et al. (2017) for an ethanol drop of initial diameter $d_{0}=2.7$ mm at (a) ${{We}}=13.8$ (single-bag breakup) and (b) ${{We}}=55.3$ (sheet-thinning breakup).

Ade et al. Supplementary Movie 1

Transitional breakup of a water droplet at We = 11.4.

Download Ade et al. Supplementary Movie 1(Video)
Video 1.7 MB

Ade et al. Supplementary Movie 2

Single-bag breakup of a water droplet at We = 12.6.

Download Ade et al. Supplementary Movie 2(Video)
Video 1.4 MB

Ade et al. Supplementary Movie 3

Dual-bag breakup of a water droplet at We = 34.8.

Download Ade et al. Supplementary Movie 3(Video)
Video 1.1 MB

Ade et al. Supplementary Movie 4

Time-series focused holograms at We = 12.6.

Download Ade et al. Supplementary Movie 4(Video)
Video 3.1 MB

Ade et al. Supplementary Movie 5

Time-series focused holograms at We = 34.8.

Download Ade et al. Supplementary Movie 5(Video)
Video 3.1 MB