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Failure Inference and Optimization for Step Stress Model Based on Bivariate Wiener Model
Journal article   Peer reviewed

Failure Inference and Optimization for Step Stress Model Based on Bivariate Wiener Model

Soudabeh Shemehsavar and Morteza Amini
Communications in statistics. Simulation and computation, Vol.45(1), pp.130-151
2016

Abstract

Mathematics Physical Sciences Science & Technology Statistics & Probability
In this article, we consider the situation under a life test, in which the failure time of the test units are not related deterministically to an observable stochastic time varying covariate. In such a case, the joint distribution of failure time and a marker value would be useful for modeling the step stress life test. The problem of accelerating such an experiment is considered as the main aim of this article. We present a step stress accelerated model based on a bivariate Wiener process with one component as the latent (unobservable) degradation process, which determines the failure times and the other as a marker process, the degradation values of which are recorded at times of failure. Parametric inference based on the proposed model is discussed and the optimization procedure for obtaining the optimal time for changing the stress level is presented. The optimization criterion is to minimize the approximate variance of the maximum likelihood estimator of a percentile of the products' lifetime distribution.

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Citation topics
4 Electrical Engineering, Electronics & Computer Science
4.237 Safety & Maintenance
4.237.651 Reliability Engineering
Web Of Science research areas
Statistics & Probability
ESI research areas
Mathematics
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