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http://dx.doi.org/10.5302/J.ICROS.2011.17.11.1095

A Survey on Prognostics and Comparison Study on the Model-Based Prognostics  

Choi, Joo-Ho (Korea Aerospace University)
An, Da-Wn (Korea Aerospace University)
Gang, Jin-Hyuk (Korea Aerospace University)
Publication Information
Journal of Institute of Control, Robotics and Systems / v.17, no.11, 2011 , pp. 1095-1100 More about this Journal
Abstract
In this paper, PHM (Prognostics and Health Management) techniques are briefly outlined. Prognostics, being a central step within the PHM, is explained in more detail, stating that there are three approaches - experience based, data-driven and model based approaches. Representative articles in the field of prognostics are also given in terms of the type of faults. Model based method is illustrated by introducing a case study that was conducted to the crack growth of the gear plate in UH-60A helicopter. The paper also addresses the comparison of the OBM (Overall Bayesian Method), which was developed by the authors with the PF (Particle Filtering) method, which draws great attention recently in prognostics, through the study on a simple crack growth problem. Their performances are examined by evaluating the metrics introduced by PHM society.
Keywords
PHM (Prognostics and Health Management); Prognostics; Experience Based Method; Data-Driven Method; Model Based Method; Crack Growth; OBM (Overall Bayesian method); PF (Particle Filtering) Method;
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