A Machine Learning Algorithm for Reliability Analysis
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Show full item recordEditorial
IEEE
Date
2021Abstract
In this article, we build a statistical model able to predict the reliability of the system based on a dataset. Our objective
is double. On the one hand, we aim at constructing a function that classifies the system in one of the two categories (operative
or failed) based on the knowledge of components states. On the other hand, we present a statistical test to decide the order of
importance of components in terms of the effect each one has on the system performance. We present a supervised algorithm
involving isotonic smooth logistic regression and cross-validation techniques. Our method is completely data-driven not lying in
any parametric assumptions. The method is illustrated through an extensive simulation study.