Trend analysis of the power law process using Expectation–Maximization algorithm for data censored by inspection intervals

Trend analysis of the power law process using Expectation–Maximization algorithm for data censored by inspection intervals

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Article ID: iaor20117557
Volume: 96
Issue: 10
Start Page Number: 1340
End Page Number: 1348
Publication Date: Oct 2011
Journal: Reliability Engineering and System Safety
Authors: ,
Keywords: time series & forecasting methods
Abstract:

Trend analysis is a common statistical method used to investigate the operation and changes of a repairable system over time. This method takes historical failure data of a system or a group of similar systems and determines whether the recurrent failures exhibit an increasing or decreasing trend. Most trend analysis methods proposed in the literature assume that the failure times are known, so the failure data is statistically complete; however, in many situations, such as hidden failures, failure times are subject to censoring. In this paper we assume that the failure process of a group of similar independent repairable units follows a non‐homogenous Poisson process with a power law intensity function. Moreover, the failure data are subject to left, interval and right censoring. The paper proposes using the likelihood ratio test to check for trends in the failure data. It uses the Expectation–Maximization (EM) algorithm to find the parameters, which maximize the data likelihood in the case of null and alternative hypotheses. A recursive procedure is used to solve the main technical problem of calculating the expected values in the Expectation step. The proposed method is applied to a hospital's maintenance data for trend analysis of the components of a general infusion pump.

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