4.7 Article

A framework for predicting the remaining useful life of machinery working under time-varying operational conditions

Journal

APPLIED SOFT COMPUTING
Volume 126, Issue -, Pages -

Publisher

ELSEVIER
DOI: 10.1016/j.asoc.2022.109164

Keywords

Remaining useful life; Time -varying operational conditions; Density -based clustering; Modified normalization method; Operational condition features; Turbofan engine data

Funding

  1. National Key R&D Pro- gram of China [2020YFB1711703]
  2. China Scholarship Council
  3. Graduate Scientific Research and Innovation Foundation of Chongqing, China [CYB19008]

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Our study addresses the challenges in RUL prediction by incorporating operational condition features and the MOC-based Normalization method, resulting in improved prognostic model performance.
Remaining useful life (RUL) prediction can provide additional capabilities to condition-based main-tenance (CBM) and predictive maintenance (PdM) for the reliability and service life of a system. Time-varying operational conditions, such as the altitude, Mach number, and throttle resolver angle of an aero-engine, could result in two main challenges for RUL predictions: varying degradation rates and abrupt jumps in the amplitude of sensor readings. Our study addresses these two challenges in the data pre-processing stage, through operational condition features and the multi-operational condition-based normalization method (MOC-based Normalization). In the framework of our model, first, two density -based clustering algorithms are integrated to be a new classifier for operational conditions clustering and identification in an unsupervised manner. Then, operational condition features consisting of operational condition labels and an operational condition factor are conducted. In the meantime, the proposed MOC-based Normalization recalibrates the upward or downward abrupt jumps of sensor readings at the operational conditions change-points. Sensor data features and operational condition features are combined in the last step of the data pre-processing stage. On this basis, the RUL representation model is trained with the combined features through a gated recurrent unit (GRU)-based network with only two layers in the hidden layer. Experiments on benchmark datasets have been conducted. The results show that the MOC-based Normalization efficiently mitigates the jumps on sensor readings, and the operational condition features improve the prognostic model. Approximately 10% RMSE improvements over the top-three state-of-the-art algorithms are achieved in the RUL prediction under time-varying operational conditions. (C) 2022 Published by Elsevier B.V.

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