Article ID Journal Published Year Pages File Type
807789 Reliability Engineering & System Safety 2015 14 Pages PDF
Abstract

•Practical review of data-driven and physics-based prognostics are provided.•As common prognostics algorithms, NN, GP, PF and BM are introduced.•Algorithms’ attributes, pros and cons, and applicable conditions are discussed.•This will be helpful to choose the best algorithm for different applications.

This paper is to provide practical options for prognostics so that beginners can select appropriate methods for their fields of application. To achieve this goal, several popular algorithms are first reviewed in the data-driven and physics-based prognostics methods. Each algorithm’s attributes and pros and cons are analyzed in terms of model definition, model parameter estimation and ability to handle noise and bias in data. Fatigue crack growth examples are then used to illustrate the characteristics of different algorithms. In order to suggest a suitable algorithm, several studies are made based on the number of data sets, the level of noise and bias, availability of loading and physical models, and complexity of the damage growth behavior. Based on the study, it is concluded that the Gaussian process is easy and fast to implement, but works well only when the covariance function is properly defined. The neural network has the advantage in the case of large noise and complex models but only with many training data sets. The particle filter and Bayesian method are superior to the former methods because they are less affected by noise and model complexity, but work only when physical model and loading conditions are available.

Related Topics
Physical Sciences and Engineering Engineering Mechanical Engineering
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