Abstract

Recently, maintaining a complex mechanical system at the appropriate times is considered a significant task for reliability engineers and researchers. Moreover, the development of advanced mechanical systems and the dynamics of the operating environments raises the complexity of a system’s degradation behaviour. In this aspect, an efficient maintenance policy is of great importance, and a better modelling of the operating system’s degradation is essential. In this study, the non-monotonic degradation of a centrifugal pump system operating in the dynamic environment is considered and modelled using variance gamma stochastic process. The covariates are introduced to present the dynamic environmental effects and are modelled using a finite state Markov chain. The degradation of the system in the presence of covariates is modelled and prognostic results are analysed. Two machine learning algorithms k-nearest-neighbour (KNN) and neural network (NN) are applied to identify the various characteristics of degradation and the environmental conditions. A predefined degradation threshold is assigned and used to propose a prognostic result for each classification state. It was observed that this methodology shows promising prognostic results.

Highlights

  • Advanced systems are becoming highly complex due to the integration of different subsystems and as a result, the maintenance of such high-priced systems is considered a challenging task for engineers

  • As an alternative to the Wiener process, we propose the variance gamma process to model system degradation

  • The aim of this study is to propose a non-monotonic stochastic process variance gamma to model the degradation of a mechanical system operating in the dynamic environment

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Summary

Introduction

Advanced systems are becoming highly complex due to the integration of different subsystems and as a result, the maintenance of such high-priced systems is considered a challenging task for engineers. Reliability engineers and researchers introduced the degradation modelling to better predict the deteriorating system lifetime. Different stochastic models such as gamma process, Wiener process, etc. The degradation of a centrifugal pump operating in a dynamic environment is considered. As the centrifugal pump exhibits non-monotonic behaviour and complex degradation, the scope of new sophisticated non-monotonic stochastic models rises. As an alternative to the Wiener process, we propose the variance gamma process to model system degradation. Considering the impact of dynamic environmental conditions, the classification of degradation data is carried out using two machine learning algorithms and a lifetime prediction

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