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Aggregation and signature based comparisons of multi-state systems via decompositions of fuzzy measures

机译:基于模糊措施分解的多状态系统基于聚集和签名

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摘要

In the reliability literature, several results have been presented to compare binary (two states) systems. Often, such results are obtained from copula-based extensions of fuzzy measures, where a fuzzy measure describes the structure of a system and a copula describes the stochastic dependence among the lifetimes of its components. Other similar results have been obtained in terms of the concept of signature. Here, we extend all those results to multi-state systems made up from binary components by suitably constructing corresponding mixed binary systems. For such a construction, we show how any fuzzy measure can be decomposed as a convex combination of {0, 1}-valued fuzzy measures and how such a decomposition extends to the corresponding aggregation function. For a mixed system we can furthermore consider its signature and so we can also define a signature for the multi-state system. For mixed systems associated to different multi-state systems, we can thus obtain different comparison results, which can be translated into the corresponding comparisons for the parent multi-state systems. Stochastic comparisons are obtained for the discrete random variables which represent the states of two systems at time t, as well. The arguments in the paper will be illustrated by means of examples and related remarks. (C) 2019 Elsevier B.V. All rights reserved.
机译:在可靠性文献中,已经提出了几种结果来比较二进制(两个状态)系统。通常,这种结果是从基于植物的模糊措施的延伸,其中模糊措施描述了系统的结构,并且谱图描述了其组分的寿命之间的随机依赖性。在签名的概念方面已经获得了其他类似结果。这里,我们将所有结果扩展到通过合适地构造相应的混合二进制系统从二进制组件组成的多状态系统。对于这种结构,我们展示了任何模糊测量如何被分解为{0,1}的模糊测量的凸组合以及这种分解如何扩展到相应的聚合函数。对于混合系统,我们还可以考虑其签名,因此我们还可以定义多状态系统的签名。对于与不同的多状态系统相关联的混合系统,我们可以获得不同的比较结果,该比较结果可以被翻译成父多状态系统的相应比较。为离散随机变量获得随机比较,其在时刻t表示两个系统的状态。本文中的论据将通过示例和相关备注来说明。 (c)2019 Elsevier B.v.保留所有权利。

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