Abstract

Prognostics and health management (PHM) with failure prognosis and maintenance decision-making as the core is an advanced technology to improve the safety, reliability, and operational economy of engineering systems. However, studies of failure prognosis and maintenance decision-making have been conducted separately over the past years. Key challenges remain open when the joint problem is considered. The aim of this paper is to develop an integrated strategy for dynamic predictive maintenance scheduling (DPMS) based on a deep auto-encoder and deep forest-assisted failure prognosis method. The proposed DPMS method involves a complete process from performing failure prognosis to making maintenance decisions. The first step is to extract representative features reflecting system degradation from raw sensor data by using a deep auto-encoder. Then, the features are fed into the deep forest to compute the failure probabilities in moving time horizons. Finally, an optimal maintenance-related decision is made through quickly evaluating the costs of different decisions with the failure probabilities. Verification was accomplished using NASA’s open datasets of aircraft engines, and the experimental results show that the proposed DPMS method outperforms several state-of-the-art methods, which can benefit precise maintenance decisions and reduce maintenance costs.

Highlights

  • Published: 15 December 2021The rapid development of industrial Internet of Things technology greatly promotes the complexity, integration, and intelligence of modern engineering systems [1,2,3,4,5]

  • This paper develops a deep auto-encoder and deep forest-assisted failure prognosis method for dynamic predictive maintenance scheduling (DPMS)

  • The representative was proposed for dynamic maintenance scheduling (DPMS)

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Summary

Introduction

The rapid development of industrial Internet of Things technology greatly promotes the complexity, integration, and intelligence of modern engineering systems [1,2,3,4,5]. It raises significant challenges in the safety and reliability of systems’ operation. Precise predictive maintenance is an urgent need in those systems, especially for applications such as nuclear power plants, missile weapons, and aerospace vehicles, which have extremely high reliability and safety requirements. The key is to realize failure prognosis-based maintenance decision-making, that is, to predict the failure probabilities and carry out just-in-time maintenance activities [11,12,13,14,15]

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