4.7 Article

A generalized remaining useful life prediction method for complex systems based on composite health indicator

Journal

RELIABILITY ENGINEERING & SYSTEM SAFETY
Volume 205, Issue -, Pages -

Publisher

ELSEVIER SCI LTD
DOI: 10.1016/j.ress.2020.107241

Keywords

Multiple sensors; Data fusion; Degradation modeling; Remaining useful life; Prognostics

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This paper proposes a generalized RUL prediction method for complex systems with multiple CM signals, along with two desirable properties of HI and a fusion method based on Genetic Programming to construct a superior composite HI. This approach enhances the prediction capability of multiple CM signals.
As one of the key techniques in Prognostics and Health Management (PHM), accurate Remaining Useful Life (RUL) prediction can effectively reduce the number of downtime maintenance and significantly improve economic benefits. In this paper, a generalized RUL prediction method is proposed for complex systems with multiple Condition Monitoring (CM) signals. A stochastic degradation model is proposed to characterize the system degradation behavior, based on which the respective reliability characteristics such as the RUL and its Confidence Interval (CI) are explicitly derived. Considering the degradation model, two desirable properties of the Health Indicator (HI) are put forward and their respective quantitative evaluation methods are developed. With the desirable properties, a nonlinear data fusion method based on Genetic Programming (GP) is proposed to construct a superior composite HI. In this way, the multiple CM signals are fused to provide a better prediction capability. Finally, the proposed integrated methodology is validated on the C-MAPSS data set of aircraft turbine engines.

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