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A Remaining Useful Life Prediction for AeroEngine Based on Improved Convolution Neural Networks
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V23; TP183

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    Abstract:

    Aimed at the problems that aero-engine is complex in structure, severe nonlinearity of various degenerate state is variable, and traditional physical failure model-based method is difficult to predict the remaining useful life of the engine (Remaining Useful Life, RUL) accurately, the problems abovementioned can be done by adopting an improved convolution neural networks (CNN). A linear degradation model is employed to label each sample. The convolution is set to several different onedimensional convolutions to extract data features and the correlation between the RUL better. In order to validate the effectiveness of the method, a test is made on the commercial modular aeropropulsion system simulation (C-MAPSS) aircraft engine datasets provided by NASA. The results show that the convolutional neural network has higher precision compared with the common neural network.

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  • Online: January 13,2021
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