Download PDFOpen PDF in browserCurrent versionPrediction of Remaining Useful Life of Turbofan Engine Based on Optimized ModelEasyChair Preprint 5607, version 15 pages•Date: May 26, 2021AbstractTo realize the prognostics and health management(PHM) of the mechanical system, it is the key to accurately predict the remaining useful life(RUL) of the equipment. The network captured features at different time steps will contribute to the final RUL prediction to varying degrees. Therefore, a deep learning network based on the attention mechanism is proposed. Firstly, the raw sensor data is passed to the Bi-LSTM network to capture the long-term dependence of features. Secondly, the Bi-LSTM output features are passed to the attention mechanism for features weighting, thereby giving greater weight to important features. Finally, the weighted features are input into the fully connected network to further predict the RUL of the turbofan engine. Using the data set C-MAPSS to explore the feasibility of this method. The results show that this method is more accurate than other RUL prediction methods. Keyphrases: Attention Mechanism, Prognostics and Health Management, Remaining Useful Life, turbofan engine
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