Battery Conditional Reliability Function Under an Inverse Gaussian model and its Bayes Estimation

E. Chiodo, D. Lauria, F. Mottola, N. Andrenacci
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引用次数: 1

Abstract

This paper proposes a new methodological approach in the field of studies devoted to proper and accurate selection of a reliability model for battery systems. The study is performed with particular emphasis on the modeling and estimation of the Conditional Reliability Function, conceived as a key analytical tool in predicting the “Remaining useful life” of the battery, which is in turn an important information in order to identify the best maintenance strategy selection, or for inspection optimization, and also spare parts provision. Estimation of the Conditional Reliability Function is developed by means of a method based on the Inverse Gaussian Distribution and its Bayes Estimation. The performances of this estimation are developed and validated by means of extensive simulations and available experimental data. A brief account is reported of robustness analyses of the method with respect to the assumed prior Distribution.
反高斯模型下的电池条件可靠性函数及其贝叶斯估计
本文提出了一种新的研究方法,致力于正确和准确地选择电池系统的可靠性模型。该研究特别强调了条件可靠性函数的建模和估计,该函数被认为是预测电池“剩余使用寿命”的关键分析工具,这反过来又是确定最佳维护策略选择或检查优化以及备件供应的重要信息。提出了一种基于反高斯分布及其贝叶斯估计的条件可靠度函数估计方法。通过大量的仿真和现有的实验数据,对该估计的性能进行了开发和验证。简要介绍了该方法相对于假定的先验分布的稳健性分析。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
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