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Preservation of mean inactivity time ordering for coherent systems

Published online by Cambridge University Press:  05 October 2023

T. V. Rao*
Affiliation:
Indian Institute of Technology Hyderabad
Sameen Naqvi*
Affiliation:
Indian Institute of Technology Hyderabad
*
*Postal address: Indian Institute of Technology Hyderabad, Hyderabad 502285, India.
*Postal address: Indian Institute of Technology Hyderabad, Hyderabad 502285, India.
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Abstract

Preservation of stochastic orders through the system signature has captured the attention of researchers in recent years. Signature-based comparisons have been made for the usual stochastic order, hazard rate order, and likelihood ratio orders. However, for the mean residual life (MRL) order, it has recently been proved that the preservation result does not hold true in general, but rather holds for a particular class of distributions. In this paper, we study whether or not a similar preservation result holds for the mean inactivity time (MIT) order. We prove that the MIT order is not preserved from signatures to system lifetimes with independent and identically distributed (i.i.d.) components, but holds for special classes of distributions. The relationship between these classes and the order statistics is also highlighted. Furthermore, the distribution-free comparison of the performance of coherent systems with dependent and identically distributed (d.i.d.) components is studied under the MIT ordering, using diagonal-dependent copulas and distorted distributions.

Type
Original Article
Copyright
© The Author(s), 2023. Published by Cambridge University Press on behalf of Applied Probability Trust

1. Introduction

The notion of the system signature, introduced by Samaniego [Reference Samaniego27], is a useful tool for studying coherent systems (see Barlow and Proschan [Reference Barlow and Proschan1] for a definition). For a coherent system with independent and identically distributed (i.i.d.) component lifetimes $X_1, \ldots, X_n, $ having distribution function F, the system signature $\textbf{s} = (s_1, \ldots, s_n)$ is an n-dimensional probability vector such that $s_i = \mathbb{P}(T = X_{i:n}),$ where T is the system lifetime, and $X_{1:n}, \ldots, X_{n:n},$ are the order statistics of the component lifetimes. The system’s life distribution $F_{T}(t) = \mathbb{P}(T \leq t)$ can be represented explicitly as a function of the component life distribution F using the signature as follows:

(1.1) \begin{equation} F_{T}(t) = \sum_{j=1}^{n}\Bigg( \displaystyle\sum_{i=1}^{j}s_i\Bigg) \binom{n}{j} F^{j}(t)\overline{F}^{n-j}(t),\qquad t \geq 0. \end{equation}

Since the system signature is only equipped to deal with systems with a single type of component, Coolen and Coolen-Maturi [Reference Coolen, Coolen-Maturi and Zamojski8] and Samaniego and Navarro [Reference Samaniego and Navarro29] extended the concept of the system signature to that of the survival signature and the failure signature, respectively, to deal with real-world systems having multiple types of components. The system signature $\textbf{s} = (s_1, \ldots, s_n)$ has the following relationship to the failure signature (denoted by $\textbf{b} = \left(b_1, \ldots, b_n\right)$ ) and survival signature (denoted by $\overline{\textbf{b}} = \left(\overline{b}_1, \ldots, \overline{b}_n\right)$ ) of an n-component coherent system with i.i.d. components (see Lindqvist et al. [Reference Lindqvist, Samaniego and Wang15]):

(1.2) \begin{align} b_j& = \displaystyle\sum_{i=1}^{j}s_i,\qquad j = 1, \ldots, n,\end{align}
(1.3) \begin{align} \overline{b}_j &= \displaystyle\sum_{i=n-j+1}^{n}s_i,\qquad j = 1, \ldots, n. \end{align}

Preservation of stochastic orders using the system signature was first studied in Kocher et al. [Reference Kochar, Mukerjee and Samaniego11]. For $\textbf{s}_1$ and $\textbf{s}_2$ denoting the signatures of two systems whose lifetimes are $T_1$ and $T_2$ , respectively, they showed that if $\textbf{s}_1 \leq_{*} \textbf{s}_2$ , then $T_1 \leq_{*} T_2$ , where $*$ represents the st, hr, or lr order (defined in Section 2); a similar preservation for the rh order (defined in Section 2) is in Navarro and Rubio [Reference Navarro and Rubio22]. Problems related to stochastic orderings under different conditions have been studied using signatures by various researchers (see Block et al. [Reference Block, Dugas, Samaniego, Nair and Scientific6], Boland and Samaniego [Reference Boland, Samaniego, Soyer, Mazzuchi, Singpurwalla and Springer7], Li and Zhang [Reference Li and Zhang14], Navarro et al. [Reference Navarro, Samaniego, Balakrishnan and Bhattacharya23], and Zhang [Reference Zhang31]). Using (1.3), Lindqvist et al. [Reference Lindqvist, Samaniego and Wang15] proved that the mean residual life (MRL) ordering is not preserved from system signatures to system lifetimes for mixed coherent systems with i.i.d. components. They defined classes of distribution functions

\begin{equation*} \mathcal{F}_{n}=\bigg\{F\;:\;\binom{n}{j} \int_{0}^{\infty} \overline{F}^{j}(u)F^{n-j}(u) \mathrm{\;d} u, \textrm{ is decreasing on } j=1, \ldots, n\bigg\}, \qquad n \geq 2. \end{equation*}

Using the stochastic ordering relation between the system signature and survival signature, Lindqvist et al. [Reference Lindqvist, Samaniego and Wang15, Lemma 5] proved that for mixed coherent systems with i.i.d. components, if the component life distribution $F \in \mathcal{F}_{n}$ , $n \geq 2,$ then the MRL ordering is preserved. This gave us the motivation to check whether or not the mean inactivity time (MIT) ordering is preserved for coherent systems with i.i.d. components, as the study of the MIT ordering is equally important in reliability theory (see Kayid and Ahmad [Reference Kayid and Ahmad9] and Kayid et al. [Reference Kayid, Izadkhah and Alshami10]). Thus, we make use of (1.2) to prove that the MIT ordering is not preserved, in general; rather, if the component life distribution $F \in \overline{\mathcal{F}}_{n}\:\text{or}\:\widetilde{\mathcal{F}}_n,\: n \geq 2,$ then the MIT ordering is preserved for mixed coherent systems with i.i.d. components, where

(1.4) \begin{equation} \overline{\mathcal{F}}_{n}= \bigg \{F\;:\;\binom{n}{j} \int_{0}^{\infty} F^{j}(u)\overline{F}^{n-j}(u) \mathrm{\;d} u \textrm{ is decreasing in } j=1, \ldots, n \bigg \}, \end{equation}

and

(1.5) \begin{equation} \widetilde{\mathcal{F}}_n =\Bigg\{F\;:\; \binom{n}{j} \int_{0}^{1} \displaystyle \frac{w^{j} (1- w)^{n-j}}{f(F^{-1}(w))}dw\:\text{is decreasing in}\: j = 1, \ldots, n, f = F^{\prime}\Bigg\}. \end{equation}

After studying coherent systems with i.i.d. components, it is natural to study MIT comparison results for coherent systems with dependent and identically distributed (d.i.d.) components. The study of comparisons of coherent systems composed of d.i.d. components is of practical importance in reliability theory, since the assumption of dependent components is more intuitive (for example, the lifetimes of components in electronic devices, which are often manufactured by the same firm or produced in the same environment, tend to be d.i.d.). In the literature, several studies have been conducted to incorporate dependency among the components. For instance, Navarro et al. [Reference Navarro, del Águila, Sordo and Suárez-Llorens18] studied comparisons of coherent systems with identically distributed components under different stochastic criteria (st, hr, rh, and lr orders) using domination functions. Furthermore, Navarro et al. [Reference Navarro, del Águila, Sordo and Suárez-Llorens19] studied the preservation of different stochastic orders (st, hr, and rh) under the formation of generalized distorted distributions, and these results can be applied to coherent systems with identically distributed components. Navarro and Gomis [Reference Navarro and Gomis21] studied comparisons of coherent systems with identically distributed components with respect to the MRL ordering by representing the system reliability function as a dual distorted distribution. However, to the best of our knowledge, no study exists on stochastic comparisons of coherent systems with d.i.d. components with respect to the MIT ordering. Thus, to fill this gap in the literature, we make comparisons among coherent systems with 1–3 d.i.d. components using distorted distributions, when the underlying copula is a diagonal-dependent (DD) copula. The comparison results obtained are based on the structure of the system and on the properties of the underlying copula (Clayton–Oakes and Gumbel–Hougaard copulas). These comparisons are distribution-free with respect to the component life distribution. Note that these comparison results can also be applied to coherent systems with i.i.d. components.

The paper is organized as follows. In Section 2, we present preliminaries which will be helpful in proving the main results. The results on preservation of the MIT ordering for mixed coherent systems with i.i.d. components, as well as their connection with order statistics, are presented in Section 3. In Section 4, we present the MIT ordering comparisons for coherent systems with 1–3 d.i.d. components, and we discuss the connection between underlying copula properties and the MIT ordering properties of coherent systems with 1–3 d.i.d. components. Finally, we conclude the study with a discussion on coherent systems with 1–4 d.i.d. components.

2. Preliminaries

In this section, we first present the definition of the MIT, then define some stochastic orderings which we will use in the sequel. The support of the random variables, unless specified otherwise, is $(0, \infty)$ . Throughout the sequel, whenever we say a function is increasing (decreasing), it means the function is non-decreasing (non-increasing), and we assume $\displaystyle C/0 = \infty$ for $C > 0$ , $\displaystyle 0^{0} = 0$ , and $\displaystyle 0/0$ is not defined.

Definition 2.1. Let X be the lifetime of a unit, which could be a living organism or a mechanical component, with distribution function F. Ruiz and Navarro [Reference Samaniego27] defined the inactivity time of the random variable X by a conditional random variable $X_{t} = (t-X|X\leq t)$ , which is the time elapsed from the failure of the component given that its lifetime is less than or equal to t. The conditional random variable $X_t$ may also be called the reversed residual life. The mean inactivity time (MIT) of X is

\begin{equation*} \mathbb{E}(X_{t}) = \mathbb{E}(t-X|X\leq t) = \frac{\displaystyle \int_{0}^{t} F(u) du}{F(t)}, \qquad t > 0. \end{equation*}

We now present the definitions of various stochastic orders, which are useful tools in comparing system lifetimes.

Definition 2.2. Let X and Y be two random variables with survival functions $\overline{F}_{X}$ and $\overline{F}_{Y}$ , distribution functions $F_{X}$ and $F_{Y}$ , and Lebesgue probability density functions $f_{X}$ and $f_{Y}$ , respectively.

  1. (i) We say that X is smaller than Y in the usual stochastic order $\left(\text{denoted by}\: X \leq_{st} Y \right)$ if, and only if, $F_X(t)\geq F_Y(t),$ for $t \in (0, \infty)$ .

  2. (ii) We say that X is smaller than Y in the hazard rate order $\left(\text{denoted by}\: X \leq_{hr} Y \right)$ if, and only if, $\displaystyle \frac{\overline{F}_X(t)}{\overline{F}_Y(t)}$ is decreasing in $t \in (0, \infty)$ .

  3. (iii) We say that X is smaller than Y in the reversed hazard rate order $\left(\text{denoted by}\: X \leq_{rh} Y \right)$ if, and only if, $\displaystyle \frac{F_X(t)}{F_Y(t)}$ is decreasing in $t \in (0, \infty)$ .

  4. (iv) We say that X is smaller than Y in the mean residual life order (denoted by $X \leq_{mrl} Y$ ) if, and only if, $\frac{\displaystyle \int_{t}^{\infty} \overline{F}_X(u) du}{\displaystyle \int_{t}^{ \infty} \overline{F}_Y(u)du} $ is decreasing in $ t \in (0, \infty)$ .

  5. (v) We say that X is smaller than Y in the mean inactivity time order (denoted by $X \leq_{mit} Y$ ) if, and only if,

    $\frac{\displaystyle \int_{0}^{t} F_X(u) du}{\displaystyle \int_{0}^{t} F_Y(u)du} $ is decreasing in $ t \in (0, \infty)$ .

  6. (vi) We say that X is smaller than Y in the likelihood ratio order $\left(\text{denoted by}\: X \leq_{lr} Y \right)$ if, and only if, $\displaystyle \frac{f_X(t)}{f_Y(t)}$ is decreasing in $t \in (0, \infty).$

It is well known that

\begin{align*} X \leq_{l r} Y \Longrightarrow X \leq_{hr} Y \Longrightarrow X \leq_{m r l}& Y, \qquad \text{and} \qquad X \leq_{hr} Y \Longrightarrow X \leq_{st} Y;\\[5pt] X \leq_{l r} Y \Longrightarrow X \leq_{r h} Y \Longrightarrow X \leq_{m i t} &Y, \qquad \text{and} \qquad X \leq_{r h} Y \Longrightarrow X \leq_{st} Y. \end{align*}

For a comprehensive discussion of these orders, one may refer to Belzunce et al. [Reference Belzunce, Martínez-Riquelme and Ruiz4], Belzunce et al. [Reference Belzunce, Martnez-Riquelme and Mulero3], Lai and Xie [Reference Lai and Xie12], Li and Li [Reference Li and Li13], Mosler and Scarsini [Reference Mosler and Scarsini16], and Shaked and Shanthikumar [Reference Shaked and Shanthikumar30].

The stochastic orders given above, in Definition 2.2, can also be used to compare the signatures of coherent systems (Kochar et al. [Reference Kochar, Mukerjee and Samaniego11]). One may refer to Navarro et al. [Reference Navarro, Samaniego, Balakrishnan and Bhattacharya23], Navarro [Reference Navarro17], and Samaniego [Reference Samaniego28] for a comprehensive treatment of the subject.

Definition 2.3. Let $\textbf{s}_1 = (s_{11}, \ldots, s_{1n})$ and $\textbf{s}_2 = (s_{21},\ldots , s_{2n})$ be the signatures of two mixed n-systems having components with i.i.d. lifetimes, and let $\textbf{b}_1 = (b_{11}, \ldots, b_{1n})$ and $\textbf{b}_2 = (b_{21}, \ldots, b_{2n})$ , respectively, be their failure signatures.

  1. (i) The signature $\textbf{s}_1$ is said to be smaller than $\textbf{s}_2$ in the usual stochastic order $\left(\text{denoted by}\: \textbf{s}_1 \leq_{st} \textbf{s}_2 \right)$ if, and only if, $b_{1j} \geq b_{2j}$ $ \text{for}\:j = 1, \ldots, n.$

  2. (ii) The signature $\textbf{s}_1$ is said to be smaller than $\textbf{s}_2$ in the hazard rate order $\left(\text{denoted by}\: \textbf{s}_1 \leq_{hr} \textbf{s}_2 \right)$ if, and only if, $\displaystyle \frac{1- b_{2n-j}}{1-b_{1n-j}}$ is decreasing in $j = 1, \ldots, n.$

  3. (iii) The signature $\textbf{s}_1$ is said to be smaller than $\textbf{s}_2$ in the reversed hazard rate order $\left(\text{denoted by}\: \textbf{s}_1 \leq_{rh} \textbf{s}_2 \right)$ if, and only if, $\displaystyle \frac{ b_{1j}}{b_{2j}}$ is decreasing in $j = 1, \ldots, n.$

  4. (iv) The signature $\textbf{s}_1$ is said to be smaller than $\textbf{s}_2$ in the mean residual lifetime order $\left(\text{denoted by}\: \textbf{s}_1 \leq_{mrl} \textbf{s}_2 \right)$ if, and only if, $\displaystyle \frac{\sum_{i = 1}^{j}(1- b_{2n-i})}{\sum_{i = 1}^{j} (1-b_{1n-i})}$ is decreasing in $j = 1, \ldots, n.$

  5. (v) The signature $\textbf{s}_1$ is said to be smaller than $\textbf{s}_2$ in the mean inactivity time order $\left(\text{denoted by}\: \textbf{s}_1 \leq_{mit} \textbf{s}_2 \right)$ if, and only if, $\displaystyle \frac{\sum_{i=1}^{j}b_{1i}}{\sum_{i=1}^{j}b_{2i}}$ is decreasing in $j = 1, \ldots, n.$

  6. (vi) The signature $\textbf{s}_1$ is said to be smaller than $\textbf{s}_2$ in the likelihood ratio order $\left(\text{denoted by}\: \textbf{s}_1 \leq_{lr} \textbf{s}_2 \right)$ if, and only if, $\displaystyle \frac{b_{1j}-b_{1j-1}}{b_{2j}-b_{2j-1}}$ is decreasing in $j = 1, \ldots, n;$ with $b_{10} = b_{20} = 0.$

The following implications hold:

\begin{align*} &\textbf{s}_1\leq_{l r} \textbf{s}_2 \Longrightarrow \textbf{s}_1 \leq_{h r} \textbf{s}_2 \Longrightarrow \textbf{s}_1 \leq_{m r l} \textbf{s}_2, \qquad \text{and} \qquad \textbf{s}_1 \leq_{h r} \textbf{s}_2 \Longrightarrow \textbf{s}_1 \leq_{st} \textbf{s}_2;\\[5pt] &\textbf{s}_1\leq_{l r} \textbf{s}_2 \Longrightarrow \textbf{s}_1 \leq_{r h} \textbf{s}_2 \Longrightarrow \textbf{s}_1 \leq_{m i t} \textbf{s}_2, \qquad \text{and} \qquad \textbf{s}_1 \leq_{r h} \textbf{s}_2 \Longrightarrow \textbf{s}_1 \leq_{st} \textbf{s}_2. \end{align*}

In addition, we know from the literature (Kocher et al. [Reference Kochar, Mukerjee and Samaniego11], Navarro and Rubio [Reference Navarro and Rubio22], Samaniego [Reference Samaniego28]) that $\textbf{s}_1 \leq_{*} \textbf{s}_2 \Longrightarrow T_1 \leq_{*} T_2$ , where $T_1$ and $T_2$ are the lifetimes of two mixed systems and $*$ may represent st, hr, or even mrl for a specific class of distribution (see Lindqvist et al. [Reference Lindqvist, Samaniego and Wang15]). Now, our interest is in seeing whether a similar implication can be obtained for the MIT ordering, i.e., whether

(2.1) \begin{equation} \textbf{s}_1 \leq_{mit} \textbf{s}_2 \Longrightarrow T_1 \leq_{mit} T_2. \end{equation}

We know that whenever $\textbf{s}_1 \leq_{rh} \textbf{s}_2$ (and hence $\textbf{s}_1 \leq_{mit} \textbf{s}_2$ ), we have $T_1 \leq_{rh} T_2$ , which further implies $T_1 \leq_{mit} T_2$ . This shows that (2.1) holds true when $\textbf{s}_1 \leq_{rh} \textbf{s}_2$ . However, the interesting case will be to verify (2.1), when $\textbf{s}_1 \leq_{mit} \textbf{s}_2$ but $\textbf{s}_1 \nleq_{rh} \textbf{s}_2$ . The following example illustrates this scenario.

Example 2.1. Consider the signatures

\begin{align*}\textbf{s}_1 = \bigg(\frac{1}{4},\: 0, \:\frac{3}{4}\bigg) \text{and}\,\,\,\,\,\,\,\, \textbf{s}_2 = \bigg(\frac{1}{8}, \:\frac{2}{8}, \:\frac{5}{8}\bigg).\end{align*}

It can be seen that

\begin{align*}\textbf{s}_1 \leq_{mit} \textbf{s}_2, \:\text{but}\:\textbf{s}_1 \nleq_{rh} \textbf{s}_2.\end{align*}

Let the common component life distribution of the corresponding mixed systems be

\begin{align*} F(t)= \begin{cases}0 & \textrm{ if } t<0, \\[5pt] p & \textrm{ if } 0 \leq t<1,\:0<p<1, \\[5pt] 1 & \textrm{ if } t \geq 1.\end{cases} \end{align*}

Here the system lifetimes $T_1$ and $T_2$ can take values 0 and 1. Now, $T_1\leq_{mit} T_2$ if and only if

(2.2) \begin{equation} \mathbb{E}\!\left(t_0 - T_1 | T_1 \leq t_0\right) \geq \mathbb{E}\left(t_0 - T_2 | T_2 \leq t_0\right) \quad \text{for}\; t_0 > 0. \end{equation}

If $t_0 < 1$ , (2.2) holds true, and if $t_0 \geq 1$ , (2.2) is equivalent to

(2.3) \begin{equation} \mathbb{P}(T_1 \leq 0) \geq \mathbb{P}(T_2 \leq 0). \end{equation}

Taking $r= \displaystyle \frac{p}{1 - p}$ and using (1.1), (2.3) can be rewritten as

\begin{align*} \displaystyle \frac{1}{4}r + \frac{1}{4}r^2 & \geq \frac{1}{8}r + \frac{3}{8}r^2, \end{align*}

which on simplification gives $r \leq 1$ . Hence, $T_1\leq_{mit} T_2$ if, and only if, $p \leq \displaystyle \frac{1}{2}$ , and $T_1\nleq_{mit} T_2$ , for $p > \displaystyle \frac{1}{2}$ .

Thus, from the above example, it can be concluded that (2.1) does not hold true in general, but may hold true for some specific class of distributions. We search for this specific class in the section below.

3. Preservation of MIT ordering for coherent systems with i.i.d. components

Consider a mixed coherent system of order n whose system signature and failure signature are $\textbf{s} = (s_1, \ldots, s_n)$ and $\textbf{b} = (b_1, \ldots, b_n)$ , respectively. Using the failure signature, the system life distribution (Equation (1.1)) can be rewritten as follows:

(3.1) \begin{equation} F_{T}(t) = \mathbb{P}(T \leq t) = \sum_{j=1}^{n} b_j \binom{n}{j} F^{j}(t)\overline{F}^{n-j}(t),\qquad t \geq 0. \end{equation}

Using (3.1), we give below a necessary and sufficient condition for two system lifetimes to be ordered with respect to the MIT ordering. The proof is omitted as it follows from Definition 2.2(v) and (3.1).

Lemma 3.1. Let $\boldsymbol{{b}}_1=(b_{11}, \ldots, b_{1n})$ and $\boldsymbol{{b}}_2 = (b_{21}, \ldots, b_{2n})$ be the failure signatures of two mixed coherent systems of order n. Let $T_1$ and $T_2$ be their respective lifetimes, and F be the components’ life distribution. Then $T_{1} \leq_{mit} T_2$ if, and only if,

\begin{equation*} I(t) = \frac{\displaystyle \sum_{j=1}^{n} b_{1j} \displaystyle \binom{n}{j}\displaystyle \int_{0}^{t} F^{j}(u) \overline{F}^{n-j}(u)\: du}{\:\displaystyle \sum_{j=1}^{n} b_{2j} \displaystyle \binom{n}{j}\displaystyle \int_{0}^{t} F^{j}(u) \overline{F}^{n-j}(u)\: du} \end{equation*}

is decreasing in $t \in (0, \infty).$

In proving the main result of this section, we will make use of the following lemmas. To begin with, let us reconsider the class of distributions $\overline{\mathcal{F}}_{n}$ defined in (1.4):

\begin{equation*} \overline{\mathcal{F}}_{n}= \bigg \{F\;:\;\binom{n}{j} \int_{0}^{\infty}F^{j}(u) \overline{F}^{n-j}(u) \mathrm{\;d} u \textrm{ is decreasing in } j=1, \ldots, n \bigg \}. \end{equation*}

That is, for a given $n \:(\in \mathbb{N}) \geq 2$ , $\overline{\mathcal{F}}_{n}$ contains all the distribution functions F such that $F(x) = 0$ for $x<0$ and

\begin{align*}\displaystyle \binom{n}{j} \int_{0}^{\infty} F^{j}(u) \overline{F}^{n-j}(u) \mathrm{\;d} u \geq \displaystyle \binom{n}{j+1} \int_{0}^{\infty} F^{j+1}(u) \overline{F}^{n-j-1}(u)\mathrm{\;d} u,\qquad j = 1, \ldots, n-1.\end{align*}

Lemma 3.2. For any distribution F and $n \geq 2$ ,

  1. (i) $F \in \overline{\mathcal{F}}_n$ if, and only if, $\displaystyle \binom{n}{j} \int_{0}^{t} F^{j}(u) \overline{F}^{n-j}(u)du\, \textit{is decreasing in}\:$ $ j = 1, \ldots, n,$ $\textit{for } 0 \leq t < \infty$ ;

  2. (ii) $\displaystyle \frac{\displaystyle \int_{0}^{s} F^{j}(u) \overline{F}^{n-j}(u)\: du}{\displaystyle \int_{0}^{t} F^{j}(u) \overline{F}^{n-j}(u)\: du}$ is decreasing in $j = 1, \ldots, n,$ for $0 \leq s \leq t < \infty.$

The proof of Lemma 3.2 is omitted as it can be obtained similarly to the proofs of Lemmas 1 and 2 of Lindqvist et al. [Reference Lindqvist, Samaniego and Wang15]. The next lemma establishes stochastic ordering relations between system signatures and the corresponding failure signatures. Recall that Lindqvist et al. [Reference Lindqvist, Samaniego and Wang15, Lemma 5] obtained a similar result where $X \leq_{hr} Y$ if, and only if, $\textbf{s}_1 \leq_{mrl}\textbf{s}_2$ , such that the probability mass functions of the random variables X and Y are expressed in terms of survival signatures. Here, we express the probability mass functions of the random variables X and Y in terms of failure signatures and obtain corresponding results for the rh and lr orderings.

Lemma 3.3. Let $\boldsymbol{{s}}_1$ and $\boldsymbol{{s}}_2$ be the signatures of two mixed coherent systems of order n, and let $\boldsymbol{{b}}_1 =(b_{11}, \ldots, b_{1n})$ and $\boldsymbol{{b}}_2 =(b_{21}, \ldots, b_{2n})$ be their respective failure signatures. Let X and Y be two discrete random variables which take values from the set $\{1, \ldots, n\}$ , and $\mathbb{P}(X = j) = \displaystyle \frac{b_{1j}}{\sum_{i = 1}^{n}b_{1i}},\:\mathbb{P}(Y = j) = \displaystyle \frac{b_{2j}}{\sum_{i = 1}^{n}b_{2i}},$ for $j = 1, \ldots, n.$ Then

  1. (i) $X \leq_{rh} Y \:\: \textit{if, and only if,}\:\:\textbf{s}_1 \leq_{mit}\textbf{s}_2$ ;

  2. (ii) $X \leq_{lr} Y\:\: \textit{if, and only if,}\:\:\textbf{s}_1 \leq_{rh}\textbf{s}_2.$

Proof. (i) From Definition 2.2(iii), $X \leq_{rh} Y$ if, and only if,

\begin{align*} &\displaystyle \frac{\sum_{k = 1}^{l}b_{1k}}{\sum_{k = 1}^{l}b_{2k}}. \displaystyle \frac{\sum_{i = 1}^{n}b_{2i}}{\sum_{i = 1}^{n}b_{1i}}\:\text{is decreasing in}\:\: l = 1, \ldots, n\\[5pt] \Longleftrightarrow \:\:\displaystyle & \frac{\sum_{k = 1}^{l}b_{1k}}{\sum_{k = 1}^{l}b_{2k}} \:\text{is decreasing in}\:\: l = 1, \ldots, n \hspace{1.5cm}\\[5pt] \Longleftrightarrow \:\:& \textbf{s}_1 \leq_{mit}\textbf{s}_2, \: \text{from Definition 2.3(v).} \end{align*}

(ii) The proof is omitted as it can be obtained similarly to that of (i).

The following example illustrates the applicability of Lemma 3.3.

Example 3.1.

  1. (i) Consider signatures $\textbf{s}_1 = (1/3, 2/3, 0, 0)$ and $\textbf{s}_2 = (1/6, 2/3, 1/6, 0)$ . Then the corresponding failure signatures are $\textbf{b}_1 = (b_{11}, b_{12}, b_{13}, b_{14}) = (1/3, 1, 1, 1)$ and $\textbf{b}_2 = (b_{21}, b_{22}, b_{23}, b_{24}) = (1/6, 5/6, 1, 1)$ . Note that $\textbf{s}_1 \leq_{mit} \textbf{s}_2$ . Define the discrete random variables X and Y so that $\mathbb{P}(X = j) = \displaystyle \frac{b_{1j}}{\sum_{i = 1}^{4}b_{1i}}$ and

    $\mathbb{P}(Y = j) = \displaystyle \frac{b_{2j}}{\sum_{i = 1}^{4}b_{2i}},$ for $j = 1, 2, 3, 4,$ i.e.,

    \begin{align*}\mathbb{P}(X=j)= \begin{cases}1/10 & \textrm{ if } j = 1, \\[5pt] 3/10 & \textrm{ if } j = 2, 3, 4, \\[5pt] 0 & \textrm{ otherwise,}\end{cases}\: \:\:\quad \mathbb{P}(Y=j)=\left\{\begin{array}{l} 1 / 18 \:\: \textrm{ if } j=1, \\[5pt] 5 / 18 \:\: \textrm{ if } j=2, \\[5pt] 1 / 3 \:\:\:\: \textrm{ if } j=3, 4, \\[5pt] 0, \:\:\:\:\:\: \textrm{ otherwise.} \end{array}\right.\end{align*}
    It can be seen that $X \leq_{rh} Y$ , and the same can be inferred directly from Lemma 3.3(i).
  2. (ii) Consider signatures $\textbf{s}_1 = (1/2, 1/2, 0, 0)$ and $\textbf{s}_2 = (1/3, 1/3, 1/3, 0)$ . Then the corresponding failure signatures are $\textbf{b}_1 = (b_{11}, b_{12}, b_{13}, b_{14}) = (1/2, 1, 1, 1)$ and $\textbf{b}_2 = (b_{21}, b_{22}, b_{23}, b_{24}) = (1/3, 2/3, 1, 1)$ . Note that $\textbf{s}_1 \leq_{rh} \textbf{s}_2$ . Define the discrete random variables X and Y so that $\mathbb{P}(X = j) = \displaystyle \frac{b_{1j}}{\sum_{i = 1}^{4}b_{1i}}$ and

    $\:\mathbb{P}(Y = j) = \displaystyle \frac{b_{2j}}{\sum_{i = 1}^{4}b_{2i}},$ for $j = 1, 2, 3, 4,$ i.e.,

    \begin{align*}\mathbb{P}(X=j)= \begin{cases}1/7 & \textrm{ if } j = 1, \\[5pt] 2/7 & \textrm{ if } j = 2, 3, 4, \\[5pt] 0 & \textrm{ otherwise, }\end{cases} \:\:\quad \mathbb{P}(Y=j)=\left\{\begin{array}{l} 1 / 9 \:\: \textrm{ if } j=1, \\[5pt] 2 / 9 \:\: \textrm{ if } j=2, \\[5pt] 1 / 3 \:\: \textrm{ if } j=3, 4, \\[5pt] 0 \:\:\:\: \textrm{ otherwise.} \end{array}\right.\end{align*}
    It can be seen that $X \leq_{lr} Y$ , and the same can be inferred directly from Lemma 3.3(ii).

To state our next lemma for discrete positive distributions, we employ Theorem 1.B.50 of Shaked and Shanthikumar [Reference Shaked and Shanthikumar30].

Lemma 3.4. Let X and Y be random variables as defined in Lemma 3.3, such that $ X \leq_{rh} Y$ . Let $\alpha(j)$ and $\beta(j)$ , for $j = 1, \ldots, n,$ be numbers such that $\beta(j)$ is positive, and $\displaystyle\frac{\alpha(j)}{\beta(j)}$ and $\beta(j)$ are decreasing in $j = 1, \ldots, n.$ Then

(3.2) \begin{equation} \frac{\sum_{j=1}^{n}\alpha(j){b}_{2j}}{\sum_{j=1}^{n}\beta(j){b}_{2j}}\:\: \leq \:\: \frac{\sum_{j=1}^{n}\alpha(j){b}_{1j}}{\sum_{j=1}^{n}\beta(j){b}_{1j}}. \end{equation}

Now we are ready to prove our main result. We show that, if the component life distribution of mixed systems belongs to $\overline{\mathcal{F}}_n$ , $n \geq 2,$ then the MIT order is preserved from signatures to system lifetimes (i.e., (2.1) holds true). Also, we prove that these classes of distribution functions $\overline{\mathcal{F}}_n$ , $n \geq 2$ , are strictly nested and have a nonempty intersection.

Theorem 3.1.

  1. (i) Let $\textbf{s}_1$ and $\textbf{s}_2$ be the signatures of two mixed systems of order n, and let $\textbf{b}_1 = (b_{11}, \ldots, b_{1n})$ and $\textbf{b}_2 = (b_{21}, \ldots, b_{2n})$ be their respective failure signatures. Let $T_1$ and $T_2$ be the lifetimes of these systems, respectively. If the component life distribution $F \in \overline{\mathcal{F}}_n$ , $n \geq 2$ , and $\textbf{s}_1 \leq_{mit} \textbf{s}_2$ , then $T_1 \leq_{mit} T_2$ .

  2. (ii) The classes of distribution functions $\overline{\mathcal{F}}_n$ are such that $\overline{\mathcal{F}}_n \subset \overline{\mathcal{F}}_{n-1}$ , $n \geq 3$ , and $\displaystyle \cap \overline{\mathcal{F}}_n \neq \phi$ , $n \geq 2$ .

Proof.

  1. (i) Assume $F \in \overline{\mathcal{F}}_n$ and $\textbf{s}_1 \leq_{mit} \textbf{s}_2 $ . For $j = 1, \ldots, n,$ define

    \begin{align*} \alpha(j) & = \binom{n}{j}\int_{0}^{s} F^{j}(u) \overline{F}^{n-j}(u)\: du, \quad \text{and} \\[5pt] \beta(j) & = \binom{n}{j}\int_{0}^{t} F^{j}(u) \overline{F}^{n-j}(u)\: du. \end{align*}
    Using Lemma 3.2(i), it can be seen that $\beta(j)$ is decreasing in $j = 1, \ldots, n$ , and using Lemma 3.2(ii), it follows that $\displaystyle\frac{\alpha(j)}{\beta(j)}$ is decreasing in $j = 1, \ldots, n,$ for $0 \leq s \leq t < \infty.$ Since $ X \leq_{rh} Y$ by Lemma 3.3(i), it follows that conditions of Lemma 3.4 are satisfied. Thus, on substituting $\alpha(j)$ and $\beta(j)$ in (3.2), we get
    \begin{equation*} \frac{\displaystyle \sum_{j=1}^{n}{b}_{2j} \displaystyle \binom{n}{j} \displaystyle \int_{0}^{s} F^{j}(u) \overline{F}^{n-j}(u)\:du}{\displaystyle \sum_{j=1}^{n}{b}_{2j}\displaystyle \binom{n}{j} \displaystyle \int_{0}^{t} F^{j}(u) \overline{F}^{n-j}(u)\: du}\:\: \leq \:\: \frac{\displaystyle \sum_{j=1}^{n}{b}_{1j}\displaystyle \binom{n}{j} \displaystyle \int_{0}^{s} F^{j}(u) \overline{F}^{n-j}(u)\:du}{\displaystyle \sum_{j=1}^{n}{b}_{1j}\displaystyle \binom{n}{j} \displaystyle \int_{0}^{t} F^{j}(u) \overline{F}^{n-j}(u)\: du}, \end{equation*}
    which implies $T_1 \leq_{mit} T_2$ , from Lemma 3.1.
  2. (ii) Suppose $F \in \overline{\mathcal{F}}_n$ . Let

    \begin{align*}\displaystyle d_{n-1, j} = \binom{n-1}{j} \int_{0}^{\infty}F^{j}(u)\overline{F}^{n-j-1}(u)\:du.\end{align*}
    Multiplying by $d_{n-1, j}$ on both sides of the identity $ F(u)+\overline{F}(u) = 1$ , we get
    \begin{align*} \displaystyle d_{n-1, j} &= \binom{n-1}{j}\int_{0}^{\infty}F^{j+1}(u)\:\overline{F}^{n-j-1}(u)du + \binom{n-1}{j}\int_{0}^{\infty}F^{j}(u)\:\overline{F}^{n-j}(u)du \\[5pt] & = \frac{j+1}{n} d_{n,j+1} + \frac{n-j}{n} d_{n,j}. \end{align*}
    Now, in order to show that $F \in \overline{\mathcal{F}}_{n-1}$ , it suffices to show that $d_{n-1, j+1} - d_{n-1, j} \leq 0,$ for $j = 1, \ldots, n-2.$ Here,
    \begin{align*} d_{n-1, j+1} - d_{n-1, j} &= \frac{j+2}{n} d_{n, j+2} + \frac{n-j-1}{n} d_{n, j+1} - \frac{j+1}{n} d_{n, j+1} - \frac{n-j}{n} d_{n, j},\\[5pt] &= \frac{j+2}{n}\big(d_{n, j+2} - d_{n, j+1}\big) + \frac{j+1}{n}\big(d_{n, j+1} - d_{n, j}\big),\\[5pt] & \leq 0, \end{align*}
    since $F \in \overline{\mathcal{F}}_{n}$ . Thus, $F \in \overline{\mathcal{F}}_{n-1}$ also, implying that $\overline{\mathcal{F}}_n \subseteq \overline{\mathcal{F}}_{n-1},$ $n \geq 3.$

Now, in order to show that $\overline{\mathcal{F}}_n$ is strictly contained in $\overline{\mathcal{F}}_{n-1}$ , let us consider

\begin{align*} F(u)= \begin{cases}0 & \textrm{ if } u<0, \\[5pt] p & \textrm{ if } 0 \leq u<1,\:0<p<1, \\[5pt] 1 & \textrm{ if } u \geq 1. \end{cases} \end{align*}

Here,

\begin{align*} d_{n, j+1} - d_{n, j} &= \binom{n}{j+1}p^{j+1}(1-p)^{n-j-1} - \binom{n}{j}p^{j}(1-p)^{n-j}\\[5pt] \nonumber & = \dbinom{n}{j}\frac{p^{j}(1-p)^{n-j-1}}{j+1}\left[(n+1)p- (j+1)\right], \end{align*}

which is less than or equal to zero if, and only if, $p \leq \displaystyle \frac{j+1}{n+1}$ , for $j = 1, \ldots, n-1.$ Hence, $F \in \overline{\mathcal{F}}_n$ if, and only if, $\displaystyle p \leq \frac{2}{n+1}$ (using (1.4)), and $F \in \overline{\mathcal{F}}_{n-1}$ if, and only if, $\displaystyle p \leq \frac{2}{n}$ . So, if $\displaystyle \frac{2}{n+1} < p \leq \frac{2}{n}$ , then $F \in \overline{\mathcal{F}}_{n-1}$ but $F \notin \overline{\mathcal{F}}_{n}$ , $n \geq 3.$ Thus, $\overline{\mathcal{F}}_{n} \subset \overline{\mathcal{F}}_{n-1}.$ Next, to show that $\displaystyle \cap \overline{\mathcal{F}}_n \neq \phi$ , consider

\begin{align*} F(u)= \begin{cases}0 & \textrm{ if } u<0, \\[5pt] \displaystyle u^3 & \textrm{ if } 0 \leq u \leq 1, \\[5pt] 1 & \textrm{ if } u \geq 1.\end{cases} \end{align*}

It is easy to see that

\begin{align*}d_{n, j} = \binom{n}{j}\int_{0}^{\infty}F^{j}(u)\:\overline{F}^{n-j}(u)\:du = \frac{1}{3}.\frac{n!}{\Gamma(n+\frac{2}{3})}.\frac{\Gamma(j+\frac{1}{3})}{j!}\end{align*}

is decreasing in $j = 1, \ldots, n,$ which implies $F \in \overline{\mathcal{F}}_n$ , $n \geq 2,$ using (1.4).

The following example illustrates the applicability of Theorem 3.1(i).

Example 3.2.

  1. (i) Let $s_1 =\left(3/8, 2/8, 3/8\right)$ and $s_2 =\left(2/8, 4/8, 2/8\right)$ be the signatures of two mixed systems. Let $T_1$ and $T_2$ be their respective lifetimes. It can be seen that $s_1 \leq_{mit} s_2 \:\text{and} \: s_1 \nleq_{rh} s_2$ . Let the component life distribution be

    \begin{align*} F(u)= \begin{cases}0 & \textrm{ if }\, u<0, \\[5pt] \displaystyle \left(\frac{u}{2}\right)^3 & \textrm{ if }\, 0 \leq u \leq 2, \\[5pt] 1 & \textrm{ if }\, u \geq 2. \end{cases}\end{align*}
    Since $\displaystyle \binom{n}{j}\int_{0}^{\infty}F^{j}(u)\:\overline{F}^{n-j}(u)\:du$ is decreasing in $j = 1, \ldots, n,$ for $n = 3,$ we see that $F \in \overline{\mathcal{F}}_3$ . Thus, the conditions of Theorem 3.1(i) are satisfied, and we conclude that $T_1 \leq_{mit} T_2.$ The same can be inferred from Figure 1, which shows that I(u) (defined in Lemma 3.1) is decreasing in $u \in (0, 2)$ (see Lemma 3.1).

    Figure 1. Plot of I(u).

  2. (ii) Let $s_1 =\left(1/3, 0, 1/2, 1/6\right)$ and $s_2 =\left(1/6, 1/6, 2/3, 0\right)$ be the signatures of two mixed coherent systems. Let $T_1$ and $T_2$ be their respective lifetimes. It can be seen that $s_1 \leq_{mit} s_2 \:\text{and} \: s_1 \nleq_{rh} s_2$ . Let the component life distribution be

    \begin{align*} F(u)= \begin{cases} 0 & \textrm{ for } u<0, \\[5pt] \displaystyle u & \textrm{ for } 0 \leq u \leq 1, \\[5pt] 1 & \textrm{ for } u \geq 1.\end{cases} \end{align*}
    It is easy to verify that $F \in \overline{\mathcal{F}}_4.$ Hence the conditions of Theorem 3.1(i) are satisfied, and we can conclude that $T_1 \leq_{mit} T_2.$ The same can be inferred from Figure 2, which shows that I(u) is decreasing in $u \in (0, 1)$ (see Lemma 3.1).

    Figure 2. Plot of I(u).

Now, for the case when F is absolutely continuous, we consider the class of distributions defined in (1.5):

\begin{equation*} \widetilde{\mathcal{F}}_n =\bigg\{F\;:\; \binom{n}{j} \int_{0}^{1} \displaystyle \frac{w^{j} (1- w)^{n-j}}{f(F^{-1}(w))}dw\:\text{is decreasing in}\: j = 1, \ldots, n, f = F^{\prime}\bigg\}. \end{equation*}

That is, for a given $n\: (\in \mathbb{N}) \geq 2$ , $\widetilde{\mathcal{F}}_{n}$ contains all the absolutely continuous distribution functions F such that $F(x) = 0$ for $x<0$ and

\begin{align*}\displaystyle \binom{n}{j} \int_{0}^{1} \displaystyle \frac{w^{j} (1- w)^{n-j}}{f(F^{-1}(w))}dw \geq \displaystyle \binom{n}{j+1} \int_{0}^{1} \displaystyle \frac{w^{j+1} (1- w)^{n-j-1}}{f(F^{-1}(w))}dw,\qquad j = 1, \ldots, n-1.\end{align*}

Clearly, $\widetilde{\mathcal{F}}_n \subseteq \overline{\mathcal{F}}_n,$ $n \geq 2$ . In order to provide the preservation result for the $\leq_{mit}$ ordering when $F \in \widetilde{\mathcal{F}}_n,$ $n \geq 2,$ we begin with the following lemma, which is a special case of Lemma 3.1, when F is absolutely continuous.

Lemma 3.5. Let $\boldsymbol{{b}}_1 = (b_{11}, \ldots, b_{1n})$ and $\boldsymbol{{b}}_2 = (b_{21}, \ldots, b_{2n})$ be the failure signatures of two mixed coherent systems of order n. Let $T_1$ and $T_2$ be their respective lifetimes. Let F be an absolutely continuous component life distribution, and let f denote its probability density function. Then $T_{1} \leq_{mit} T_2$ if, and only if,

\begin{align*}\frac{\displaystyle \sum_{j=1}^{n} b_{1j} \displaystyle \binom{n}{j} \displaystyle \int_{0}^{s} \big( w^{j} (1- w)^{n-j}/f(F^{-1}(w))\big)\: dw}{\:\displaystyle \sum_{j=1}^{n} b_{2j} \displaystyle \binom{n}{j} \displaystyle \int_{0}^{s} \big( w^{j} (1- w)^{n-j}/f(F^{-1}(w))\big)\: dw} \end{align*}

is decreasing in $s \in (0, 1).$

The proof follows immediately from Lemma 3.1 when we substitute $F(u) = w$ in $\displaystyle \int_{0}^{t} F^{j}(u) \overline{F}^{n-j}(u)\: du$ .

Now we are ready to present the preservation result, which is another version of Theorem 3.1, for the case when F is absolutely continuous.

Theorem 3.2.

  1. (i) Let $\boldsymbol{{s}}_1$ and $\boldsymbol{{s}}_2$ be the signatures of two mixed systems of order n, and let $\boldsymbol{{b}}_1 = (b_{11}, \ldots, b_{1n})$ and $\boldsymbol{{b}}_2 = (b_{21}, \ldots, b_{2n})$ be their respective failure signatures. Let $T_1$ and $T_2$ be the respective lifetimes of these systems. If the absolutely continuous component life distribution $F \in \widetilde{\mathcal{F}}_n$ and $\boldsymbol{{s}}_1 \leq_{mit} \boldsymbol{{s}}_2$ , then $T_1 \leq_{mit} T_2$ .

  2. (ii) If F is an absolutely continuous distribution function whose probability density function f is increasing, then $F \in \widetilde{\mathcal{F}}_n,\:n \geq 2$ .

The proof of Theorem 3.2(i) follows from Theorem 3.1 and Lemma 3.5, and the proof of Theorem 3.2(ii) follows similarly to the proof of Theorem 3 of Lindqvist et al. [Reference Lindqvist, Samaniego and Wang15]; hence these proofs are omitted.

Note that Theorem 3.2(ii) provides only a sufficient condition. To illustrate the applicability of Theorem 3.2, we present the following example of a parametric family of distributions.

Example 3.3. Consider a random variable X following the power function distribution with parameters $\alpha > 0$ and $\theta > 0$ , having distribution function given by

\begin{align*} F(t, \alpha, \theta)= \begin{cases}0 & \textrm{ if }\, t \leq 0 ,\\[5pt] \displaystyle \left(\frac{t}{\theta}\right)^{\alpha} & \textrm{ if }\, 0 \leq t \leq \theta, \\[5pt] 1 & \textrm{ if }\, t \geq \theta. \end{cases} \end{align*}

Note that, for $\alpha \geq 1,$ the density function $f(t, \alpha, \theta)$ $\left( f(t, \alpha, \theta) = F^{\prime}(t, \alpha, \theta)\right)$ is increasing; hence $F(t, \alpha, \theta) \in \widetilde{\mathcal{F}}_n,\: n \geq 2$ (using Theorem 3.2(ii)). Moreover, the fact that $F(t, \alpha, \theta) \in \widetilde{\mathcal{F}}_n$ , $n \geq 2$ , is also evident from the fact that

\begin{align*} \binom{n}{j} \int_{0}^{1} \displaystyle \frac{w^{j} (1- w)^{n-j}}{f(F^{-1}(w))}dw\end{align*}

is decreasing in $j = 1, \ldots, n.$ Furthermore, for $\textbf{s}_1 = (2/3, 0, 0, 1/3)$ and $\textbf{s}_2 = (1/6, 1/6, 2/3, 0)$ , it is easy to verify that $\textbf{s}_1 \leq_{mit} \textbf{s}_2$ . Thus, using Theorem 3.2(i), we can conclude that the corresponding system lifetimes $T_1$ and $T_2$ satisfy $T_1 \leq_{mit} T_2.$

Remark 3.1. Note that the proposed class of distributions $\overline{\mathcal{F}}_n,$ $n \geq 2,$ has a connection with the theory of order statistics. It can be understood as follows: let $X_1, \ldots, X_n$ be i.i.d. component lifetimes of a mixed coherent system. Let F be the component life distribution, and let $X_{1:n}, \ldots, X_{n:n}$ be the order statistics of the $X_i$ . One can see that $\displaystyle P_{t}(j, n) = \binom{n}{j}F^j(t) \overline{F}^{n-j}(t)$ can be interpreted as the probability that exactly $n-j$ components are functioning at time t, and it can be expressed in terms of the order statistics as

(3.3) \begin{equation} \displaystyle P_t(j, n) = \mathbb{P}\left(X_{j:n} \leq t < X_{j+1:n}\right),\qquad n \geq 2,\:\: j = 1, \ldots , n-1. \end{equation}

Let

\begin{equation*} D_{j,\:n} = X_{j+1:n} - X_{j:n}, \qquad j = 1, \ldots , n-1. \end{equation*}

Using (3.3), we have

(3.4) \begin{align} \int_{0}^{\infty} \displaystyle P_{t}(j, n) dt& = \int_{0}^{\infty} \mathbb{P}\left(X_{j:n} \leq t < X_{j+1:n}\right) dt \nonumber\\[5pt] &= \int_{0}^{\infty} \mathbb{P}\left(X_{j+1:n} \geq t\right) dt - \int_{0}^{\infty} \mathbb{P}\left(X_{j:n} \geq t\right) dt \nonumber\\[5pt] &= \mathbb{E}(X_{j+1:n}) - \mathbb{E}(X_{j:n}) \nonumber \\[5pt] &= \mathbb{E}\left(D_{j, \:n}\right)\!,\qquad j = 1, \ldots, n-1. \end{align}

However, for the case when $j = n$ ,

\begin{align*}\displaystyle \int_{0}^{\infty}P_{t}(n, n) dt = \int_{0}^{\infty} F^n(t) dt = \int_{0}^{\infty} \mathbb{P}(X_{n:n} \leq t) dt\end{align*}

cannot be expressed using the spacings of the order statistics of the $X_i$ . Moreover, if the support of the $X_i$ is the interval $(a, \infty)$ , $a \geq 0$ , then $\displaystyle \int_{0}^{\infty} P_{t}(n, n) dt $ diverges to $+\infty$ .

Based on the above remark, we have the following proposition.

Proposition 3.1. For any distribution F, we say that $F \in \overline{\mathcal{F}}_n$ , $n \geq 2$ , if, and only if,

\begin{align*}\mathbb{E}\left(D_{j+1, \:n}\right) \leq \mathbb{E}\left(D_{j, \:n}\right) \quad \textit{for}\: j = 1, \ldots, n-2, \textit{ and} \quad \int_{0}^{\infty}P_{t}(n, n) dt \leq \mathbb{E}(D_{n-1, n}).\end{align*}

The following example illustrates the applicability of Proposition 3.1.

Example 3.4.

  1. (i) Consider a random variable X following a binomial distribution $Bin (2, 1/2)$ having distribution function given by

    \begin{align*} F_1(t)= \begin{cases}0 & \textrm{ if } t < 0, \\[5pt] 1/4 & \textrm{ if } 0 \leq t < 1, \\[5pt] 3/4 & \textrm{ if } 1 \leq t < 2, \\[5pt] 1 & \textrm{ if } t \geq 2.\end{cases} \end{align*}
    It can be seen that $\mathbb{E}\left(D_{1, \:3}\right) = \mathbb{E}\left(D_{2, \:3}\right) = 9/16$ and
    \begin{align*} \int_{0}^{\infty}P_{t}(3, 3) dt = \int_{0}^{2} F_1^{3}(t) dt = 7/16.\end{align*}
    Thus,
    \begin{align*} \int_{0}^{\infty}P_{t}(3, 3) dt \leq \mathbb{E}(D_{2, 3}) \leq \mathbb{E}(D_{1, 3}).\end{align*}
    Hence, $F_1(t) \in \overline{\mathcal{F}}_3$ (using Proposition 3.1).
  2. (ii) Consider a random variable X following a Pareto distribution with shape parameter $\alpha > 0$ and scale parameter $\theta > 0$ , having distribution function given by

    \begin{align*} F_2(t, \alpha, \theta)= \begin{cases}0 & \textrm{ if }\, t \leq \theta, \\[5pt] \displaystyle 1- \left(\displaystyle \frac{\theta}{t}\right)^{\alpha} & \textrm{ if }\, t \geq \theta. \end{cases} \:\end{align*}
    It can be seen that when $\alpha = 2$ and $\theta = 2$ , $\mathbb{E}\left(D_{1, \:2}\right) = 2.67$ . However,
    \begin{align*} \int_{0}^{\infty}P_{t}(2, 2) dt = \int_{2}^{\infty} F_2^{2}(t, 2, 2) dt\end{align*}
    diverges to $+\infty$ . Thus,
    \begin{align*}\int_{0}^{\infty}P_{t}(2, 2) dt \nleq \mathbb{E}(D_{1, 2}),\end{align*}
    and consequently, $F_2(t, 2, 2) \notin \overline{\mathcal{F}}_2$ (using Proposition 3.1). This highlights the significance of the condition
    \begin{align*} \int_{0}^{\infty}P_{t}(n, n) dt \leq \mathbb{E}(D_{n-1, n}), \qquad n \geq 2,\end{align*}
    in Proposition 3.1.
  3. (iii) Consider a random variable X having distribution function $F_3(t, \alpha, \beta)$ , $\alpha \geq 1$ and $\beta > 0$ , given by

    \begin{align*} F_3(t, \alpha, \beta)= \begin{cases}0 & \textrm{ if }\, t \leq 0, \\[5pt] \displaystyle 2\left(1-e^{-t^{\beta}}\right)^{(2^{(1/\alpha)})} - \left(1-e^{-t^{\beta}}\right)^{(3^{(1/\alpha)})} & \textrm{ if }\, t \geq 0.\end{cases} \:\end{align*}
    Note that $F_3(t, \alpha, \beta)$ can be constructed using the distorted distribution $q_7(u)$ (see Table 1 in Section 4) and the Gumbel–Hougaard copula (defined in Section 4), by replacing u with $\displaystyle 1-e^{-t^{\beta}}$ and $\theta$ with $\alpha$ , respectively, in $q_7(u)$ . It can be seen that when $\alpha = 2$ and $\beta = 4 $ , $\mathbb{E}\left(D_{1, \:3}\right) = 0.200$ and $\mathbb{E}\left(D_{2, \:3}\right) = 0.198$ . However,
    \begin{align*} \int_{0}^{\infty}P_{t}(3, 3) dt = \int_{0}^{\infty} F_3^{3}(t, 2, 4) dt\end{align*}
    diverges to $+\infty$ . Thus,
    \begin{align*} \int_{0}^{\infty}P_{t}(3, 3) dt \nleq \mathbb{E}(D_{2, 3}) \leq \mathbb{E}\left(D_{1, \:3}\right).\end{align*}
    Hence, $F_3(t, 2, 4) \notin \overline{\mathcal{F}}_3$ (using Proposition 3.1), thereby signifying the need for the condition
    \begin{align*} \int_{0}^{\infty}P_{t}(n, n) dt \leq \mathbb{E}(D_{n-1, n}), \qquad n \geq 2,\end{align*}
    in Proposition 3.1.

Note that Proposition 3.1 provides a necessary and sufficient condition for any distribution function F to belong to $ \overline{\mathcal{F}}_n,$ $n \geq 2$ . One can also conclude from Proposition 3.1 that the distribution function F of any random variable X whose support is $(a, \infty)$ , $a \geq 0,$ does not belong to $\overline{\mathcal{F}}_n,$ for $n \geq 2$ , i,e., $F \notin \overline{\mathcal{F}}_n,$ $n \geq 2$ (as shown in Example 3.4(ii)–(iii) above). Since $\widetilde{\mathcal{F}}_n \subseteq \overline{\mathcal{F}}_n,$ $n \geq 2$ , Proposition 3.1 also holds for absolutely continuous distribution functions F. Recall that, in Theorem 3.2(ii), for a distribution F to belong to $\widetilde{\mathcal{F}}_n$ ( $n \geq 2$ ), the probability density function f has to be increasing; however, this is only a sufficient condition. It will be interesting to see whether $F \in \widetilde{\mathcal{F}}_n$ even when the probability density function f is not necessarily increasing. To address this, we present some distributions which belong to $\widetilde{\mathcal{F}}_n$ (using Proposition 3.1), but whose densities are not necessarily increasing.

Example 3.5.

  1. (i) Consider a random variable X following the uniform distribution U(0, 1), having distribution function given by

    \begin{align*} F_4(t)= \begin{cases}0 & \textrm{ if } t \leq 0, \\[5pt] t & \textrm{ if } 0 \leq t \leq 1, \\[5pt] 1 & \textrm{ if } t \geq 1.\end{cases}\end{align*}
    It can be seen that $\mathbb{E}\left(D_{1, \:2}\right) = 1/3$ and
    \begin{align*} \int_{0}^{\infty}P_{t}(2, 2) dt = \int_{0}^{1} F_4^{2}(t) dt = 1/3.\end{align*}
    Thus,
    \begin{align*}\int_{0}^{1}P_{t}(2, 2) dt \leq \mathbb{E}(D_{1, 2}).\end{align*}
    Hence, $F_4(t) \in \overline{\mathcal{F}}_2$ , and consequently, $F_4(t) \in \widetilde{\mathcal{F}}_2$ (using Proposition 3.1). Furthermore, it can also be seen that $\mathbb{E}\left(D_{1, \:3}\right) = 1/4$ , $\mathbb{E}\left(D_{2, \:3}\right) = 1/4$ , and
    \begin{align*}\int_{0}^{\infty}P_{t}(3, 3) dt = 1/4.\end{align*}
    Hence, $F_4(t) \in \overline{\mathcal{F}}_3$ , and consequently, $F_4(t) \in \widetilde{\mathcal{F}}_3$ . Note that the probability density function $f_4(t)$ corresponding to the distribution function $F_4(t)$ is constant in the interval (0, 1).
  2. (ii) Consider a random variable X having the distribution function $F_5(t, \alpha)$ , $\alpha \geq 1$ , given by

    \begin{align*} F_5(t, \alpha)= \begin{cases}0 & \textrm{ if }\, t \leq 0, \\[5pt] \displaystyle 2t^{(2^{(1/\alpha)})} - t^{(3^{(1/\alpha)})} & \textrm{ if }\, 0 \leq t \leq 1,\\[5pt] 1 & \textrm{ if }\, t \geq 1. \end{cases} \end{align*}
    Note that $F_5(t, \alpha)$ can be constructed using the distorted distribution $q_7(u)$ (see Table 1 in Section 4) and the Gumbel–Hougaard copula (defined in Section 4), by replacing u with t and $\theta$ with $\alpha$ , respectively, in $q_7(u)$ . It can be seen that when $\alpha = 2$ , $\mathbb{E}\left(D_{1, \:4}\right) = 0.200$ , $\mathbb{E}\left(D_{2, \:4}\right) = 0.188$ , $\mathbb{E}\left(D_{3, \:4}\right) = 0.183$ , and
    \begin{align*}\int_{0}^{\infty}P_{t}(4, 4) dt = \int_{0}^{1} F_5^4(t, 2) dt = 0.181.\end{align*}
    Thus,
    \begin{align*} \int_{0}^{\infty}P_{t}(4, 4) dt \leq \mathbb{E}(D_{3, 4}) \leq \mathbb{E}(D_{2, 4}) \leq \mathbb{E}(D_{1, 4}).\end{align*}
    Hence, $F_5(t, 2) \in \overline{\mathcal{F}}_4$ , and consequently, $F_5(t, 2) \in \widetilde{\mathcal{F}}_4$ (using Proposition 3.1). Furthermore, it can also be seen that when $\alpha = 2$ , $\mathbb{E}\left(D_{1, \:5}\right) = 0.171$ , $\mathbb{E}\left(D_{2, \:5}\right) = 0.159$ , $\mathbb{E}\left(D_{3, \:5}\right) = 0.154$ , $\mathbb{E}\left(D_{4, \:5}\right) = 0.152$ , and
    \begin{align*} \int_{0}^{\infty}P_{t}(5, 5) dt = \displaystyle \int_{0}^{1} F_5^5(t, 2) dt = 0.151.\end{align*}
    Thus,
    \begin{align*}\int_{0}^{\infty}P_{t}(5, 5) dt \leq \mathbb{E}(D_{4, 5}) \leq \mathbb{E}(D_{3, 5}) \leq \mathbb{E}(D_{2, 5}) \leq \mathbb{E}(D_{1, 5}).\end{align*}
    Hence, $F_5(t, 2) \in \overline{\mathcal{F}}_5$ , and as a consequence, $F_5(t, 2) \in \widetilde{\mathcal{F}}_5$ .

Figure 3 depicts the density function $f_5(t, 2)$ corresponding to the distribution function $F_5(t, 2)$ . It is evident that $f_5(t, 2)$ is not increasing on (0, 1) and is in fact unimodal; i.e., $f_5(t, 2)$ is increasing on $(0, t_0)$ and decreasing on $(t_0, 1)$ , where $t_0 \approx 0.78$ (see Basu and Dasgupta [Reference Basu and DasGupta2]).

Figure 3. Plot of the density function $f_5(t, 2)$ .

Thus, the above example reflects that there exist parametric distributions which belong to $\widetilde{\mathcal{F}}_n$ , $n \geq 2$ , even though their densities are unimodal and not necessarily increasing.

Remark 3.2. Lindqvist et al. [Reference Lindqvist, Samaniego and Wang15, Proposition 4] established a connection between the decreasing failure rate (DFR) class and $\mathcal{F}_n$ , $n \geq 2.$ Although we cannot establish a similar connection between the increasing reversed failure rate (IRFR) class and $\overline{\mathcal{F}}_n,$ $n \geq 2,$ as no distribution with support $(0, \infty)$ can have IRFR (see Block et al. [Reference Block, Savits and Singh5]), we provide a characterization of $\overline{\mathcal{F}}_n$ using the reverse hazard rate (RH) function. We find that $F \in \overline{\mathcal{F}}_n$ , $n \geq 2$ , if and only if

\begin{align*}\mathbb{E}\bigg(\displaystyle\frac{1}{(j+1) \tilde{r}_F\left(X_{(j+1): n}\right)}\bigg) \leq \mathbb{E}\bigg(\displaystyle\frac{1}{j \tilde{r}_F\left(X_{j: n}\right)}\bigg)\end{align*}

for all $j=1,2, \ldots, n-1$ , where $\tilde{r}_F$ is the RH function of F, given by $\tilde{r}_F(t)=\displaystyle \frac{f(t)}{F(t)}$ , where $f=F^{\prime}$ , and $X_{j: n}$ is the jth order statistic among a random sample of size n.

4. Comparisons of coherent systems with d.i.d. components

As the classical signature-based mixture representation, given by Samaniego [Reference Samaniego27] and stated in (1.1), does not necessarily hold when the component lifetimes are d.i.d. (Navarro and Gomis [Reference Navarro and Gomis21]), Navarro et al. [Reference Navarro, del Águila, Sordo and Suárez-Llorens18] obtained a representation of the system life distribution $F_T$ as a distorted function of the component life distribution F, i.e.,

(4.1) \begin{equation} F_{T}(t)=q(F(t)), \end{equation}

where $q\;:\;[0,1] \rightarrow[0,1]$ is an increasing and continuous distortion function such that $q(0)=0$ and $q(1)=1$ . Similarly, for system reliability $\overline{F}_T = 1 - F_T,$ we have

(4.2) \begin{equation} \overline{F}_T(t) = \overline{q}(\overline{F}(t)), \end{equation}

where $\overline{q}(u) = 1 - q(1-u)$ is called the dual distortion function. Navarro and Gomis [Reference Navarro and Gomis21] used the representation (4.2) to study the MRL comparisons of coherent systems with d.i.d. components.

To further study coherent systems with identical components, Navarro and Fernández [Reference Navarro and Sánchez20] utilized diagonal-dependent copulas. This is a wide class of copulas which includes both exchangeable and some non-exchangeable copulas, and is defined as follows.

Definition 4.1. Let $P \subseteq\{1, \ldots, n\},$ and let $\textbf{u}_{P} = \left(u_1, \ldots, u_n \right)$ be such that $u_i = u$ if $i \in P$ , and $u_i = 1$ if $i \notin P$ , for $i = 1, \ldots, n$ . An n-dimensional copula C is said to be diagonal-dependent $\left(\text{denoted by DD}\right)$ if

\begin{align*} C\left(\textbf{u}_{A}\right)=C\left(\textbf{u}_{B}\right),\: \textrm{ for all } A, B \subseteq\{1, \ldots, n\}, \: \textrm{whenever}\:|A|=|B|. \end{align*}

Equivalently, C is DD if, and only if,

\begin{align*} C\left(\textbf{u}_{A}\right)=\delta_{m}(u),\qquad \textrm{ for all } A \subseteq\{1, \ldots, n\}, \:\textrm{ whenever }|A|= m, \end{align*}

for $m=1, \ldots, n$ , where

\begin{align*} \delta_{m}(u)\;:\!=\;C(\:\underbrace{u, \ldots, u}_{m \textrm{ times }}, \underbrace{1, \ldots, 1}_{(n-m) \ times}) \end{align*}

is the diagonal section for the copula of the marginal distribution of the first m variables. Clearly, $\delta_{n}(u)=C(\underbrace{u, \ldots, u}_{n times })$ and $\delta_{1}(u)=u$ , $u \in[0,1]$ .

The following are some commonly used DD copulas which we will also be using in the sequel (see Nelsen [Reference Nelsen24]):

  • The Clayton–Oakes family of copulas:

    \begin{align*}C\left(u_{1}, \ldots, u_{n}\right)=\left(\sum_{i=1}^{n} u_{i}^{1-\theta}-(n-1)\right)^{1 / 1-\theta}, \qquad n \geq 2,\:\theta>1.\end{align*}
  • The Gumbel–Hougaard family of copulas:

    \begin{align*}C(u_1,\dots, u_n) = \exp\! \left(-\left[\sum_{i = 1}^{n}\left(-\ln u_{i}\right)^{\theta}\right]^{1 / \theta}\right),\qquad n\geq2,\:\theta \geq 1.\end{align*}

In this section, we make use of the representation (4.1) and the concept of a DD copula to study MIT comparisons of coherent systems with d.i.d. components. First we present a lemma, involving distorted distributions, which will be helpful in obtaining the main result of this section. We know that the following implications hold:

\begin{align*} X \leq_{rh} Y &\Longrightarrow X \leq_{mit} Y,\\[5pt] X \leq_{hr} Y &\Longrightarrow X \leq_{mrl} Y. \end{align*}

However, in certain situations, $\leq_{rh}$ or $\leq_{hr}$ may not hold. To deal with such situations, Belzunce et al. [Reference Belzunce, Martínez-Riquelme and Ruiz4] provided sufficient conditions under which $\leq_{mit}$ ( $\leq_{mrl}$ ) holds even though $\leq_{rh}$ ( $\leq_{hr}$ ) does not hold (see Theorem 2.3 and Theorem 5.1 in Belzunce et al. [Reference Belzunce, Martínez-Riquelme and Ruiz4]). To further strengthen these results, Navarro and Gomis [Reference Navarro and Gomis21] obtained sufficient conditions for $\leq_{mrl}$ in terms of dual distorted distributions, and Nooghabi et al. [Reference Nooghabi, Rezaei and Chahkandi25] obtained the following result for $\leq_{mit}$ in terms of distorted distributions. For the sake of clarity, we provide the proof also.

Lemma 4.1. Consider two non-negative random variables X and Y with distributions $F_X$ and $F_Y$ , respectively, and distorted distribution functions $q_{X}$ and $q_{Y}$ based on the same baseline continuous distribution function F. Then the following conditions are equivalent:

  1. (i) There exists a $t_0 \in(0, \infty)$ such that $F_Y(t) /F_X(t)$ is increasing on $\left(0, t_0\right)$ and decreasing on $\left(t_0, \infty\right)$ .

  2. (ii) There exists a $u_0 \in(0,1)$ such that $q_{Y}(u) / q_{X}(u)$ is increasing on $\left(0, u_0\right)$ and decreasing on $\left(u_0, 1\right)$ .

Proof. Assume (i) is true. Since F is non-decreasing, for $0 < u_1 \leq u_2 \leq u_0 < 1$ , there exist $0 < t_1 \leq t_2 \leq t_0 < \infty$ such that $F(t_0) = u_0$ , $F(t_1) = u_1$ , and $F(t_2) = u_2$ . As ${F}_{Y}(t) / {F}_{X}(t)$ is increasing on $\left(0, t_{0}\right)$ , we have

\begin{align*} \frac{F_Y\left(t_{1}\right)}{F_X\left(t_{1}\right)}=\frac{q_Y\left(u_{1}\right)}{q_X\left(u_{1}\right)} \leq \frac{q_Y\left(u_{2}\right)}{q_X\left(u_{2}\right)}=\frac{F_Y\left(t_{2}\right)}{F_X\left(t_{2}\right)}; \end{align*}

i.e., $\displaystyle \frac{q_Y\left(u\right)}{q_X\left(u\right)}$ is increasing on $(0, u_0)$ . Similarly, for $0 < u_0 \leq u_1 \leq u_2 < 1$ , there exist $0 < t_0 \leq t_1 \leq t_2 < \infty$ such that $F(t_0) = u_0$ , $F(t_1) = u_1$ , and $F(t_2) = u_2$ . As ${F}_{Y}(t) / {F}_{X}(t)$ is decreasing on $\left(t_{0}, \infty\right)$ , we have

\begin{align*} \frac{F_Y\left(t_{1}\right)}{F_X\left(t_{1}\right)}=\frac{q_Y\left(u_{1}\right)}{q_X\left(u_{1}\right)} \geq \frac{q_Y\left(u_{2}\right)}{q_X\left(u_{2}\right)}=\frac{F_Y\left(t_{2}\right)}{F_X\left(t_{2}\right)}; \end{align*}

i.e., $\displaystyle \frac{q_Y\left(u\right)}{q_X\left(u\right)}$ is decreasing on $ (u_0, 1)$ . Thus, (i) implies (ii). The proof of the converse is along the same lines and hence is omitted.

Recall that Belzunce et al. [Reference Belzunce, Martínez-Riquelme and Ruiz4, Theorem 5.1] showed that if $\mathbb{E}(X) \leq \mathbb{E}(Y)$ and Lemma 4.1(i) holds true, then $X \leq_{mit} Y$ . Based on these observations, we have the following result, which provides a sufficient condition for the MIT ordering to hold for coherent systems with d.i.d. components. Note that a similar result for the $\leq_{mrl}$ ordering is given in Navarro and Gomis [Reference Navarro and Gomis21, Theorem 2.3].

Theorem 4.1. Let $S_1$ and $S_2$ be lifetimes of two coherent systems with d.i.d. components such that $\mathbb{E}(S_1) \leq \mathbb{E}(S_2)$ . Let $q_1(u)$ and $q_2(u)$ be the corresponding distorted distributions based on the common component life distribution F. If there exists a $u_0 \in(0,1)$ such that $\displaystyle\frac{q_2(u)}{q _1(u)}$ is increasing on $\left(0, u_0\right)$ and is decreasing on $\left(u_0, 1\right)$ , then $S_1 \leq _{mit} S_2$ .

The proof is omitted, as it follows from utilizing Theorem 5.1 in Belzunce et al. [Reference Belzunce, Martínez-Riquelme and Ruiz4] and replacing $q_X$ ( $q_Y$ ) by $q_1$ ( $q_2$ ) in Lemma 4.1 above. This result is significant because it provides comparisons of coherent systems with d.i.d. components with respect to the $\leq_{mit}$ ordering even when the $\leq_{rh}$ ordering does not hold, by utilizing the distorted distributions. Also note that if the ratio $\displaystyle \frac{q_2(u)}{q _1(u)}$ is increasing in $u \in (0, 1)$ , then $S_1 \leq _{rh} S_2$ holds, and if the ratio $\displaystyle \frac{q_2(u)}{q _1(u)} \leq (\geq)\:1,$ $u \in (0, 1)$ , then $S_1 \leq _{st} (\geq _{st}) S_2$ holds (see Navarro et al. [Reference Navarro, del Águila, Sordo and Suárez-Llorens19, Proposition 2.2]). To illustrate the applicability of Theorem 4.1, below we study coherent systems with 1–3 d.i.d. components where the common underlying copula is a DD copula.

4.1. Comparisons of coherent systems with 1–3 d.i.d. components

First we list the distorted distributions of coherent systems with 1–3 d.i.d. components under a common DD copula (see Table 1).

Table 1. Distorted distributions of coherent systems with 1–3 d.i.d. components.

It is easy to show how $q_N(u)$ for $N = 1, \ldots, 8$ is obtained using a DD copula. For instance, consider $T_6 = X_{2:3}$ . The minimal cut sets of the corresponding system are $\{1, 2\}$ , $\{1, 3\}$ , and $\{2, 3\}$ . Let $\textbf{F}$ be the joint distribution of $(X_1, X_2, X_3),$ let C be the underlying DD copula, and let F be the common component life distribution. Hence, the system life distribution

\begin{align*} F_{T_6}(t)&=\mathbb{P}\left(\left\{X_{\{1,2\}}<t\right\} \cup \left\{X_{\{1,3\}}<t\right\} \cup \left\{X_{\{2,3\}}<t\right\} \right)\\[5pt] &=\mathbb{P}\left(X_{\{1,2\}}<t\right) + \mathbb{P}\left(X_{\{1,3\}}<t\right) + \mathbb{P}\left(X_{\{2,3\}}<t\right)- 2 \mathbb{P}\left(X_{\{1, 2, 3\}}<t\right)\\[5pt] &=\textbf{F}(t, t, \infty)+ \textbf{F}(t, \infty, t)+ \textbf{F}(\infty, t, t)- 2\textbf{F}(t, t, t)\\[5pt] &= 3 C(F(t), F(t), 1) - 2 C(F(t), F(t), F(t))=q_6(F(t)), \end{align*}

and $q_6(u)= 3 C(u, u, 1) - 2 C(u, u, u),\: u \in (0, 1).$ Under the Gumbel–Hougaard dependence model when $\theta = 2,$ it can be seen that the ratio of the distorted distributions of $T_6$ to $T_1$ , given by

\begin{align*}\frac{q_6(u)}{q_1(u)} = \frac{3u^{\sqrt{2}} - 2u^{\sqrt{3}}}{u},\end{align*}

is increasing on the interval $(0, u_0)$ and is decreasing on the interval $(u_0, 1)$ , where $u_0 \approx 0.6$ . Hence, on applying Theorem 4.1, it follows that $T_1 \leq_{mit} T_6$ under the Gumbel–Hougaard dependence model when $\theta = 2$ , for any distribution F, such that $\mathbb{E}(T_1) \leq \mathbb{E}(T_6).$ In a similar way, we compare all the systems listed in Table 1 with respect to the MIT order, when the common underlying copula is a Clayton–Oakes copula (see Theorem 4.2) or a Gumbel–Hougaard copula (see Theorem 4.3). Note that these comparison results hold true whenever the dependency parameter $\theta \geq 2$ .

Theorem 4.2. Let $T_{1}, \ldots, T_{8}$ be the lifetimes of the coherent systems given in Table 1. If the underlying copula is a Clayton–Oakes copula $(\theta \geq 2)$ , then

  1. (i) $T_{4} \leq_{mit} T_{2} \leq_{mit} T_{1} \leq_{mit} T_{5} \leq_{mit} T_{6} \leq_{mit} T_{7} \leq_{mit} T_{3} \leq_{mit} T_{8}$ , and

  2. (ii) $T_{4} \leq_{rh} T_{2} \leq_{rh} T_{1} \leq_{mit} T_{5} \leq_{rh} T_{6} \leq_{rh} T_{7} \leq_{rh} T_{3} \leq_{rh} T_{8}$ ,

provided that their means exist and are ordered in the same way.

Proof. On comparing (i) and (ii), it is evident that, except for $T_{1} \leq_{mit} T_{5}$ , the rest of the $\leq_{mit}$ orderings in (i) can be strengthened to the $\leq_{rh}$ ordering in (ii). Thus, we first show that $T_{1} \leq_{mit} T_{5}$ holds but $T_{1} \nleqslant_{rh} T_{5}$ . To prove $T_{1} \leq_{mit} T_{5}$ , it suffices to show that $\displaystyle \frac{q_5(u)}{q_1(u)}$ is increasing on $(0, u_0)$ and is decreasing on $(u_0, 1)$ . Consider

\begin{equation*} \frac{q_5(u)}{q_1(u)} = \frac{u + (2u^{1-\theta}-1)^{\frac{1}{1-\theta}} - (3u^{1-\theta}-2)^{\frac{1}{1-\theta}}}{u}, \qquad u\in (0, 1), \end{equation*}

which on differentiating yields

(4.3) \begin{equation} \displaystyle\bigg(\frac{q_5(u)}{q_1(u)}\bigg)^{\prime}=\frac{2(\theta-1) u^{\theta-2} \cdot\left(3-2 u^{\theta-1}\right)^{\frac{1}{1-\theta}-1}}{1-\theta}-\frac{(\theta-1) u^{\theta-2} \cdot\left(2-u^{\theta-1}\right)^{\frac{1}{1-\theta}-1}}{1-\theta}. \end{equation}

On equating (4.3) to 0, we obtain

\begin{align*}u_0 = \displaystyle \left(\frac{3.2^{\frac{1}{\theta}}-4}{2.2^{\frac{1}{\theta}}-2}\right)^{\frac{1}{\theta-1}} < 1.\end{align*}

Thus, $T_{1} \leq_{mit} T_{5}$ , for all $\theta \geq 2$ , and $T_{1} \nleqslant_{rh} T_{5}$ . Now, to establish $T_{4} \leq_{mit} T_{2}$ , it suffices to show that $T_{4} \leq_{rh} T_{2}$ . Consider

\begin{align*}\frac{q_2(u)}{q_4(u)} = \frac{2u - (2u^{1-\theta}-1)^{1/1-\theta}}{3u - 3(2u^{1-\theta}-1)^{1/1-\theta} + (3u^{1-\theta}-2)^{1/1-\theta}}, \qquad u\in (0, 1),\end{align*}

which on differentiating and simplification shows that $\displaystyle \frac{q_2(u)}{q_4(u)}$ is increasing in $u \in (0, 1)$ , for all $\theta \geq 2.$ In a similar way, it can be proved that $T_{2} \leq_{rh} T_{1}$ and $T_{5} \leq_{rh} T_{6} \leq_{rh} T_{7} \leq_{rh} T_{3} \leq_{rh} T_{8}$ , for $\theta \geq 2$ .

It is worth mentioning here that the above result can be stated for the $\leq_{mrl}$ ordering; i.e., under the same assumptions as in Theorem 4.2,

(4.4) \begin{equation} T_{4} \leq_{mrl} T_{2} \leq_{mrl} T_{5} \leq_{mrl} T_{6} \leq_{mrl} T_{7} \leq_{mrl} T_{1} \leq_{mrl} T_{3} \leq_{mrl} T_{8} \end{equation}

and

(4.5) \begin{equation} T_{4} \leq_{hr} T_{2} \leq_{hr} T_{5} \leq_{hr} T_{6} \leq_{hr} T_{7} \leq_{mrl} T_{1} \leq_{hr} T_{3} \leq_{hr} T_{8}, \end{equation}

provided that their means exist and are ordered in the same way. Note that Navarro and Gomis [Reference Navarro and Gomis21, Theorem 4.1] established (4.4) and (4.5) when $\theta = 2$ . However, we strengthen their result by establishing it for a general $\theta$ ( $\theta \geq 2$ ).

Below, we present a result where the dependency among the components is established using a Gumbel–Hougaard copula. The proof is omitted as it similar to that of Theorem 4.2.

Theorem 4.3. Let $T_{1}, \ldots, T_{8}$ be the lifetimes of the coherent systems given in Table 1. If the underlying copula is a Gumbel–Hougaard copula $(\theta \geq 2)$ , then

  1. (i) $T_{4} \leq_{mit} T_{2} \leq_{mit} T_{1} \leq_{mit} T_{5} \leq_{mit} T_{6} \leq_{mit} T_{7} \leq_{mit} T_{3} \leq_{mit} T_{8}$ , and

  2. (ii) $T_{4} \leq_{rh} T_{2} \leq_{rh} T_{1} \leq_{mit} T_{5} \leq_{rh} T_{6} \leq_{rh} T_{7} \leq_{rh} T_{3} \leq_{rh} T_{8}$ ,

provided that their means exist and are ordered in the same way.

The $\leq_{mit}$ (or $\leq_{rh}$ ) ordering relations among coherent systems with 1–3 d.i.d. components when the underlying copula is a Clayton–Oakes copula ( $\theta \geq 2$ ) or a Gumbel–Hougaard copula $(\theta \geq 2)$ are given in Figure 4, where the arrows represent the $\leq_{rh}$ ordering, and the lines represent the $\leq_{mit}$ ordering such that the respective means are ordered.

Figure 4. MIT (or RH) ordering properties of coherent systems with 1–3 d.i.d. components.

Now that we have studied the special DD copulas (Theorems 4.2 and 4.3), it is intuitive to ask whether similar results hold true for a general DD copula. To answer this, we present our next result.

Theorem 4.4. Let C be a DD copula.

  1. (i) If there exists $u_{0} \in(0,1)$ such that $\displaystyle \frac{C(u, u)}{u}$ is increasing on $\left(0, u_{0}\right)$ and is decreasing on $\left(u_{0}, 1\right),$ then $T_{2} \leq_{mit} T_1 \leq_{mit} T_3.$

  2. (ii) If there exists $u_{0} \in(0,1)$ such that $\displaystyle \frac{u+C(u, u, 1)-C(u,u,u)}{3u-3C(u,u,1)+C(u,u,u)}$ is increasing on $\left(0, u_{0}\right)$ and is decreasing on $\left(u_{0}, 1\right),$ then $T_{4} \leq_{mit} T_5.$

  3. (iii) If there exists $u_{0} \in(0,1)$ such that $\displaystyle \frac{C(u, u, u)}{C(u, u, 1)}$ is increasing on $\left(0, u_{0}\right)$ and is decreasing on $\left(u_{0}, 1\right),$ and $\mathbb{E}(T_6) \leq \mathbb{E}(T_7) \leq \mathbb{E}(T_8)$ , then $T_6 \leq_{mit} T_7 \leq_{mit} T_8.$

Proof.

  1. (i) Consider the ratio of distorted distributions

    \begin{align*} \frac{q_2(u)}{q_1(u)} &= 2 - \frac{C(u, u)}{u} \quad \text{ and}\\[5pt] \frac{q_3(u)}{q_1(u)} &= \frac{C(u, u)}{u}. \end{align*}
    Clearly, if $\displaystyle \frac{C(u, u)}{u}$ is increasing on $\left(0, u_{0}\right)$ and is decreasing on $\left(u_{0}, 1\right)$ , then both $\displaystyle\frac{q_1(u)}{q_2(u)}$ and $\displaystyle\frac{q_3(u)}{q_1(u)}$ are increasing on $\left(0, u_{0}\right)$ and are decreasing on $\left(u_{0}, 1\right)$ . Hence $T_{2} \leq_{mit} T_1 \leq_{mit} T_3$ from Theorem 4.1, since $\mathbb{E}(T_{2}) \leq \mathbb{E}(T_1) \leq \mathbb{E}(T_3).$
  2. (ii) The proof follows from Theorem 4.1 by taking the ratio of distorted distributions of $T_5$ to $T_4$ since $\mathbb{E}(T_4) \leq \mathbb{E}(T_5)$ for any component life distribution F.

  3. (iii) The proof is omitted as it is along similar lines to that of (i).

It is important to note that since these stochastic orderings are partial orderings, we cannot combine (i), (ii), and (iii) in Theorem 4.4 to reach conclusions as in (i) and (ii) of Theorems 4.2 and 4.3. However, the conditions of Theorem 4.4 are applicable to all the DD copulas and are easier to check. Furthermore, note that the Clayton–Oakes copula $(\theta \geq 2)$ and the Gumbel–Hougaard copula $(\theta \geq 2)$ satisfy the conditions mentioned in Theorem 4.4.

Till now, our focus has been on applications of Theorem 4.1 to DD copulas. However, it makes sense to see whether Theorem 4.1 is applicable to non-DD copulas also. To see this, let us consider the Farlie–Gumbel–Morgenstern (FGM) copula as given below.

Example 4.1. Consider the systems whose lifetimes are $T_6 = X_{2:3}$ and $T_1 = X_{1:1}$ composed of d.i.d. component lifetimes with underlying FGM copula given by

\begin{align*}C(u_1, u_2, u_3) & = u_1u_2u_3( 1+\theta_{1}(1-u_1)(1-u_2)+\theta_{2}(1-u_1)(1-u_3)\\[5pt] &\quad +\theta_{3}(1-u_2)(1-u_3)+\theta_{4}(1-u_1)(1-u_2)(1-u_3) ), \end{align*}

for $|\theta_{i}|\leq1, \:i = 1,\:2,\:3,\:4,$ and assume that $\theta_i \neq \theta_j$ for $i \neq j.$

The minimal cut sets of the system (with lifetime $T_6$ ) are {1, 2}, {1, 3}, and {2, 3}. Hence the system life distribution $F_{T_6}(t)$ is given by

\begin{align*} C(F(t), F(t), 1)+ C(F(t), 1, F(t))+C(1, F(t), F(t)) - 2C(F(t), F(t), F(t)),\end{align*}

where its distorted distribution is

\begin{align*}q_6(u) = C(u, u, 1)+ C(u, 1, u)+C(1, u, u) - 2C(u, u, u),\:\text{and}\:q_1(u) = u.\end{align*}

Then, using the FGM copula, we obtain

\begin{align*}q_6(u) = u^2 \left[\sum_{i = 1}^{3}\left(1+\theta_i(1-u)^2\right)\right]-2u^3\left[1+\sum_{i=1}^{3}\theta_i(1-u)^2+\theta_4(1-u)^3\right].\end{align*}

The ratio of distorted distributions of $T_6$ to $T_1$ for different sets of $(\theta_1, \theta_2, \theta_3, \theta_4)$ are shown in Figure 5.

Figure 5. Ratio of distorted distributions of $T_6$ to $T_1$ .

The curves plotted in Figure 5 have an inverted bathtub shape, and hence $T_1 \leq_{mit} T_6$ whenever $\mathbb{E}(T_1) \leq \mathbb{E}(T_6)$ . Furthermore, if the common component life distribution F is uniform (U (0, 1)), then $\mathbb{E}(T_1) = 0.5$ and $\mathbb{E}(T_6) = 0.505$ (for $\theta_1 = 0.1,\:\theta_2 = 0.2,\:\theta_3 = 0.3, \theta_4 = 0.4$ ), $\mathbb{E}(T_6) = 0.508$ (for $\theta_1 = 0.3,\:\theta_2 = 0.4,\:\theta_3 = 0.5,\:\theta_4 = 0.6$ ), and $\mathbb{E}(T_6) = 0.511$ (for $\theta_1 =0.5,\:\theta_2 =0.6,\:\theta_3 =0.7,\:\theta_4 =0.8)$ . Therefore, $T_1 \leq_{mit} T_6$ for the given sets of $\theta_i$ values. However, $T_1 \nleq_{rh} T_6$ and $T_1 \nleq_{st} T_6$ , since $q_6(u)/q_1(u)$ is not increasing on $u \in (0, 1)$ and since $q_6(u)/q_1(u)$ takes values bigger than 1 and smaller than 1 as well.

Recall that Navarro and Gomis [Reference Navarro and Gomis21, Example 4.4] considered a non-exchangeable copula and studied the system $T_5$ for different values of the dependency parameter $\theta$ to establish the $\leq_{mrl}$ ordering. In a similar way, in Example 4.1 we considered a non-DD copula to establish the $\leq_{mit}$ ordering between $T_1$ and $T_6$ .

5. Discussion and conclusions

In this article, we used the notion of the failure signature (see Samaniego and Navarro [Reference Samaniego and Navarro29]) to prove that the MIT order is not preserved in general. However, if the component lifetimes of mixed coherent systems of order n belong to $\overline{\mathcal{F}}_n \text{ or } \widetilde{\mathcal{F}}_n, \: n \geq 2$ , then

\begin{align*}\textbf{s}_1 \leq_{mit} \textbf{s}_2 \Longrightarrow T_1 \leq_{mit} T_2.\end{align*}

This result is significant as it concerns the preservation of the $\leq_{mit}$ ordering even when the $\leq_{rh}$ ordering does not hold. We believe that similar studies can be conducted for other stochastic orderings which involve distribution functions, such as the increasing concave order, by using the notion of the failure signature. In the article, we also provide various examples from parametric families, as well as the relationship between the proposed results and the concept of order statistics. A natural extension from the i.i.d. case is to consider systems with exchangeable components. It is known from the literature that most of the results in the i.i.d. case can be extended to the case where components lifetimes are exchangeable. To see this, one may refer to Navarro and Rubio [Reference Navarro and Rubio22, Theorem 2.3(i)--(ii)], where it is shown that

\begin{align*} T_1 \leq_{rh} T_2& \quad \text{if } \textbf{s}_1 \leq_{rh} \textbf{s}_2 \text{ and } X_{1:n} \leq_{rh} \ldots \leq_{rh} X_{n:n}, \:\text{and}\\[5pt] T_1 \leq_{mit} T_2& \quad \text{if } \textbf{s}_1 \leq_{rh} \textbf{s}_2 \text{ and } X_{1:n} \leq_{mit} \ldots \leq_{mit} X_{n:n}, \end{align*}

where $X_1, \ldots, X_n,$ are exchangeable component lifetimes, and $X_{i:n}$ is the ith order statistic of $X_1, \ldots, X_n,$ for $i = 1, \ldots, n.$ Based on these observations, it is intuitive to believe that our results can be extended to components with exchangeable lifetimes.

Moreover, it is known that in the real world, component lifetimes are not always i.i.d. or exchangeable. In fact, they are usually dependent. Thus, to incorporate dependence, we employ DD copulas and distorted functions to obtain stochastic comparisons between the lifetimes $T_1$ and $T_2$ with respect to the $\leq_{mit}$ ordering. We consider coherent systems with 1–3 d.i.d. components having Clayton–Oakes and Gumbel–Hougaard copula dependency structures, and we show how these systems are ordered with respect to the $\leq_{mit}$ ordering for dependency parameter $\theta \geq 2$ . It will be interesting to see whether similar results can be established for coherent systems with 1–4 d.i.d. components. To see this, we present a result for the Gumbel–Hougaard copula when the dependency parameter $\theta = 2$ .

Theorem 5.1. Let $T_1, \ldots, T_{28}$ be the lifetimes of coherent systems with 1–4 d.i.d. components (see the second column of Table I in Navarro et al. [Reference Navarro, del Águila, Sordo and Suárez-Llorens18]). Then

\begin{align*} T_9&\leq_{mit}T_4\leq_{mit}T_{10}\leq_{mit}T_2\leq_{mit}T_1\leq_{mit}T_{13}\leq_{mit}T_5\leq_{mit}T_{12}\leq_{mit}T_{11}\leq_{mit}T_{14} \\[5pt] &\leq_{mit}T_{15}\leq_{mit}T_{17}=_{st}T_{16}\leq_{mit}T_{24}\leq_{mit}T_6 =_{st} T_{18} =_{st} T_{19}\leq_{mit}T_7\leq_{mit}T_{20} \\[5pt] &=_{st}T_{21}\leq_{mit}T_3\leq_{mit}T_{25}\leq_{mit}T_{22}\leq_{mit}T_{23}\leq_{mit}T_{26}\leq_{mit}T_{27}\leq_{mit}T_8\leq_{mit}T_{28}, \end{align*}

provided that their means are ordered in the same way.

The proof is immediate from Theorem 4.1 upon taking the ratios of the distorted distributions. In a similar way, we have the following orderings:

\begin{align*} T_9 &\leq_{rh}T_4\leq_{rh}T_{10}\leq_{mit}T_2\leq_{rh}T_1\leq_{mit}T_{13}\leq_{mit}T_5\leq_{mit}T_{12}\leq_{mit}T_{11}\leq_{rh}T_{14} \\[5pt] &\leq_{rh}T_{15}\leq_{rh}T_{17}=_{st}T_{16}\leq_{rh}T_{24}\leq_{mit}T_6 =_{st} T_{18} =_{st} T_{19}\leq_{rh}T_7\leq_{mit}T_{20} \\[5pt] &=_{st}T_{21} \leq_{rh}T_3\leq_{mit}T_{25}\leq_{rh}T_{22}\leq_{rh}T_{23}\leq_{rh}T_{26}\leq_{rh}T_{27}\leq_{rh}T_8\leq_{rh}T_{28}. \end{align*}

The ordering relationships among coherent systems with 1–4 d.i.d. components when the underlying copula is a Gumbel–Hougaard copula ( $\theta = 2$ ) are shown in Figure 6, where

\begin{align*}i \longrightarrow j\:\text{ means }T_i \leq_{rh} T_j,\: \text{ and }\:\:i\: \dashrightarrow j\, \text{ means }T_i \leq_{mit} T_j.\end{align*}

Figure 6. MIT (or RH) ordering properties of coherent systems with 1–4 d.i.d. components.

Although in Theorem 5.1 we have been able to establish the $\leq_{mit}$ ordering for a specific dependency parameter $\theta$ (= 2), it provides food for thought to consider whether the result can be strengthened to a general $\theta$ (as done in Theorems 4.2 and 4.3). Note that not all the $\leq_{mit}$ ordering comparisons can be strengthened to the $\leq_{rh}$ ordering. Recall that Navarro and Gomis [Reference Navarro and Gomis21, Theorem 3.2] made similar comparisons for coherent systems with 1–4 i.i.d. components, with respect to the $\leq_{mrl}$ and $\leq_{hr}$ orderings, using the product copula. Thus, in Theorem 5.1, we consider a much more general situation by considering d.i.d. components with the underlying Gumbel–Hougaard copula.

Finally, we would also like to point out that sufficient conditions for the preservation of the $\leq_{st}$ , $\leq_{hr}$ , and $\leq_{rh}$ orderings when the component lifetimes are non-identical have been addressed in the literature (see Navarro et al. [Reference Navarro, del Águila, Sordo and Suárez-Llorens19]). However, the preservation of the $\leq_{mit}$ ordering in a similar set-up still remains an open problem.

Acknowledgements

The authors would like to thank the editor in chief, the associate editor, and the anonymous reviewers for several helpful suggestions, which have significantly improved the paper. T. V. Rao would like to acknowledge the financial support of the Indian Institute of Technology Hyderabad.

Funding information

There are no funding bodies to thank in relation to the creation of this article.

Competing interests

There were no competing interests to declare which arose during the preparation or publication process of this article.

References

Barlow, R. E. and Proschan, F. (1975). Statistical Theory of Reliability and Life Testing. Holt, Rinehart and Winston, New York.Google Scholar
Basu, S. and DasGupta, A. (1997). The mean, median, and mode of unimodal distributions: a characterization. Theory Prob. Appl. 41, 210223.CrossRefGoogle Scholar
Belzunce, F., Martnez-Riquelme, C. and Mulero, J. (2016). An Introduction to Stochastic Orders. Academic Press, London.Google Scholar
Belzunce, F., Martínez-Riquelme, C. and Ruiz, J. M. (2013). On sufficient conditions for mean residual life and related orders. Comput. Statist. Data Anal. 61, 199210.CrossRefGoogle Scholar
Block, H. W., Savits, T. H. and Singh, H. (1998). The reversed hazard rate function. Prob. Eng. Inf. Sci. 12, 6990.CrossRefGoogle Scholar
Block, H. W., Dugas, M. R. and Samaniego, F. J. (2007). Signature-related results on system failure rates and lifetimes. In Advances in Statistical Modeling and Inference: Essays in Honor of Kjell A. Doksum, ed. Nair, V. N., Scientific, World, Singapore, pp. 115–130.CrossRefGoogle Scholar
Boland, P. J. and Samaniego, F. J. (2004). The signature of a coherent system and its applications in reliability. In Mathematical Reliability: An Expository Perspective, eds Soyer, R., Mazzuchi, T. A. and Singpurwalla, N. D., Springer, Boston, pp. 3–30.CrossRefGoogle Scholar
Coolen, F. P. A. and Coolen-Maturi, T. (2012). On generalizing the signature to systems with multiple types of components. In Complex Systems and Dependability, eds Zamojski, W. et al., Springer, Berlin, pp. 115–130.Google Scholar
Kayid, M. and Ahmad, I. A. (2004). On the mean inactivity time ordering with reliability applications. Prob. Eng. Inf. Sci. 18, 395409.CrossRefGoogle Scholar
Kayid, M., Izadkhah, S. and Alshami, S. (2017). Development on the mean inactivity time order with applications. Operat. Res. Lett. 45, 525529.CrossRefGoogle Scholar
Kochar, S., Mukerjee, H. and Samaniego, F. J. (1999). The signature of a coherent system and its application to comparisons among systems. Naval Res. Logistics 46, 507523.10.1002/(SICI)1520-6750(199908)46:5<507::AID-NAV4>3.0.CO;2-D3.0.CO;2-D>CrossRefGoogle Scholar
Lai, C.-D. and Xie, M. (2006). Stochastic Ageing and Dependence for Reliability. Springer, New York.Google Scholar
Li, H. and Li, X. (2013). Stochastic Orders in Reliability and Risk. Springer, New York.10.1007/978-1-4614-6892-9CrossRefGoogle Scholar
Li, X. and Zhang, Z. (2008). Some stochastic comparisons of conditional coherent systems. Appl. Stoch. Models Business Industry 24, 541549.CrossRefGoogle Scholar
Lindqvist, B. H., Samaniego, F. J. and Wang, N. (2019). Preservation of the mean residual life order for coherent and mixed systems. J. Appl. Prob. 56, 153173.CrossRefGoogle Scholar
Mosler, K. C. and Scarsini, M. (2012). Stochastic Orders and Applications. Springer, Berlin.Google Scholar
Navarro, J. (2021). Introduction to System Reliability Theory. Springer, Cham.Google Scholar
Navarro, J., del Águila, Y., Sordo, M. A. and Suárez-Llorens, A. (2012). Stochastic ordering properties for systems with dependent identically distributed components. Appl. Stoch. Models Business Industry 29, 264278.CrossRefGoogle Scholar
Navarro, J., del Águila, Y., Sordo, M. A. and Suárez-Llorens, A. (2015). Preservation of stochastic orders under the formation of generalized distorted distributions. Applications to coherent systems. Methodology Comput. Appl. Prob. 18, 529–545.10.1007/s11009-015-9441-zCrossRefGoogle Scholar
Navarro, J. and Sánchez, Fernández, j. (2020). On the extension of signature-based representations for coherent systems with dependent non-exchangeable components. J. Appl. Prob. 57, 429440.CrossRefGoogle Scholar
Navarro, J. and Gomis, M. C. (2015). Comparisons in the mean residual life order of coherent systems with identically distributed components. Appl. Stoch. Models Business Industry 32, 3347.CrossRefGoogle Scholar
Navarro, J. and Rubio, R. (2011). A note on necessary and sufficient conditions for ordering properties of coherent systems with exchangeable components. Naval Res. Logistics 58, 478489.10.1002/nav.20463CrossRefGoogle Scholar
Navarro, J., Samaniego, F. J., Balakrishnan, N. and Bhattacharya, D. (2008). On the application and extension of system signatures in engineering reliability. Naval Res. Logistics 55, 313327.CrossRefGoogle Scholar
Nelsen, R. B. (2006). An Introduction to Copulas, 2nd edn. Springer, New York.Google Scholar
Nooghabi, E., Rezaei, M. and Chahkandi, M. (2017). Comparison of coherent systems using reverse mean residual order. In Proc. Third Seminar on Reliability Theory and Its Applications, pp. 156–160. Available at https://osdce.um.ac.ir/images/313/Others/3SRTA-Full-Eng.pdf.Google Scholar
Ruiz, J. M. and Navarro, J. (1996). Characterizations based on conditional expectations of the doubled truncated distribution. Ann. Inst. Statist. Math. 48, 563572.10.1007/BF00050855CrossRefGoogle Scholar
Samaniego, F. J. (1985). On closure of the IFR class under formation of coherent systems. IEEE Trans. Reliability 34, 6972.CrossRefGoogle Scholar
Samaniego, F. J. (2007). System Signatures and Their Applications in Engineering Reliability. Springer, New York.CrossRefGoogle Scholar
Samaniego, F. J. and Navarro, J. (2016). On comparing coherent systems with heterogeneous components. Adv. Appl. Prob. 48, 88111.10.1017/apr.2015.8CrossRefGoogle Scholar
Shaked, M. and Shanthikumar, G. J. (2007). Stochastic Orders and Their Applications. Springer, New York.Google Scholar
Zhang, Z. (2010). Mixture representations of inactivity times of conditional coherent systems and their applications. J. Appl. Prob. 47, 876885.10.1239/jap/1285335415CrossRefGoogle Scholar
Figure 0

Figure 1. Plot of I(u).

Figure 1

Figure 2. Plot of I(u).

Figure 2

Figure 3. Plot of the density function $f_5(t, 2)$.

Figure 3

Table 1. Distorted distributions of coherent systems with 1–3 d.i.d. components.

Figure 4

Figure 4. MIT (or RH) ordering properties of coherent systems with 1–3 d.i.d. components.

Figure 5

Figure 5. Ratio of distorted distributions of $T_6$ to $T_1$.

Figure 6

Figure 6. MIT (or RH) ordering properties of coherent systems with 1–4 d.i.d. components.