Aero engines remaining useful life prediction based on enhanced adaptive guided diferential evolution
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Date
2022-12
Journal Title
Journal ISSN
Volume Title
Type
Article
Publisher
Springer Verlag
Series Info
Evolutionary Intelligence;
Scientific Journal Rankings
Abstract
Remaining Useful Life (RUL) prediction is a key process for prognostic health management in almost all engineering real-
world applications, especially which are in hazardous and challenging environments where the failures and disastrous faults
cannot be avoided such as space vehicles and aircraft. This paper proposes a predictive approach based on our proposed
algorithm Enhanced Adaptive Guided Diferential Evolution (EAGDE) is used to optimize the parameter selection of Support
Vector Machine (SVM) to give high RUL prediction accuracy. The advantages of the proposed approach (EAGDE–SVM)
are verifed using the popular benchmark C-MAPSS which describes the degradation of the aircraft turbofan engine datasets.
The experimental study compares EAGDE–SVM with the basic SVM with randomized parameter selection and with an
optimized SVM using three diferent optimization algorithms. Also, the EAGDE–SVM is evaluated against three popular
classifer models that have been used in the comparisons of recent research. Diferent evaluation criteria of classifcation,
prediction, and optimization aspects have been used, the obtained results show that the EAGDE is capable to achieve the
lowest classifcation error rates and RUL high prediction accuracy through fnding the optimum values of the SVM param-
eters with high stability and fast convergence rate.
Description
Keywords
Aircraft Engines, Classifcation Parameters Optimization, Enhanced Adaptive Guided Diferential Evolution , Remaining Useful Life , Prognostic Health Management , Predictive Maintenance , Support Vector Machine