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 abovementioned 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 onedimensional 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 aeropropulsion 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.