4.7 Article

A dual-LSTM framework combining change point detection and remaining useful life prediction

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ELSEVIER SCI LTD
DOI: 10.1016/j.ress.2020.107257

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Remaining useful life; Prognosis; Sensor fusion; Change point detection; Long short-term memory; Neural networks

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The study introduces a Dual-LSTM framework for degradation analysis and RUL prediction using LSTM. The framework achieves high-precision RUL prediction by connecting change point detection and RUL prediction, introducing a novel health index function, and leveraging historical information.
Remaining Useful life (RUL) prediction is a key task of Condition-based Maintenance (CBM). The massive data collected from multiple sensors enables monitoring the complex systems in near real-time. However, such multiple sensors data environments pose a challenging task of combining the sensor data to infer the quality and RUL of the system. To address this task, we propose a Dual-LSTM framework that leverages Long-Short Term Memory (LSTM) for degradation analysis and RUL prediction. The Dual-LSTM relaxes the strong assumption of the fixed change point and detects the uncertain change point unit by unit at first. Then, the Dual-LSTM predicts the health index beyond the change point which can be leveraged to calculate the RUL. The proposed Dual-LSTM (i) achieves real-time high-precision RUL, prediction by connecting the change point detection and RUL prediction with the health index construction, (ii) introduces a novel one dimension health index function, (iii) leverages historical information to achieve detection and prediction tasks by characterizing both long and short-term dependencies of sensor signals through I,STM network. The effectiveness of the proposed Dual-LSTM framework is validated and compared to state-of-art benchmark methods on two publicly available turbofan engine degradation datasets.

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