非爆炸点过程间的不精度测量及其在马尔可夫链上的应用

Pub Date : 2023-10-25 DOI:10.1017/apr.2023.44
Vanderlei da Costa Bueno, Narayanaswamy Balakrishnan
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引用次数: 0

摘要

基于累积残差熵的不准确性和信息度量是非常有用的,在统计学、概率论和可靠性理论等许多领域受到了广泛的关注。特别是,许多作者研究了基于系统寿命的相干系统之间的累积残差不准确性。在之前的一篇论文中(Bueno和Balakrishnan, Prob。Eng。Inf. Sci. 36, 2022),我们在组件水平上讨论了相干系统的累积残差测量,即基于在非均匀泊松过程下观察到的常见随机依赖组件寿命。在本文中,我们利用点过程鞅方法,将这一概念扩展到非爆炸点过程之间的累积残差测量,然后将结果专门化到马尔可夫发生时间。如果过程满足比例风险风险过程性质,则该测度唯一地确定了马尔可夫链。给出了几个例子,包括生灭过程和纯生灭过程,然后将结果应用于部件级的马尔可夫故障和修复过程的相干系统。
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An inaccuracy measure between non-explosive point processes with applications to Markov chains
Abstract Inaccuracy and information measures based on cumulative residual entropy are quite useful and have received considerable attention in many fields, such as statistics, probability, and reliability theory. In particular, many authors have studied cumulative residual inaccuracy between coherent systems based on system lifetimes. In a previous paper (Bueno and Balakrishnan, Prob. Eng. Inf. Sci. 36 , 2022), we discussed a cumulative residual inaccuracy measure for coherent systems at component level, that is, based on the common, stochastically dependent component lifetimes observed under a non-homogeneous Poisson process. In this paper, using a point process martingale approach, we extend this concept to a cumulative residual inaccuracy measure between non-explosive point processes and then specialize the results to Markov occurrence times. If the processes satisfy the proportional risk hazard process property, then the measure determines the Markov chain uniquely. Several examples are presented, including birth-and-death processes and pure birth process, and then the results are applied to coherent systems at component level subject to Markov failure and repair processes.
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