Abstract

A new fault diagnosis method is proposed combining multiple models into a multiscale residual jagged dilated convolutional neural network with long short-term memory (MRJDCNN-LSTM). This method has strong feature extraction ability and can effectively extract and classify fault features. First, a new multi-scale residual jagged dilated convolution neural network (MRJDCNN) model is designed by incorporating the principle of residual learning into the improved jagged dilated convolution, and then it is combined with the long short term memory(LSTM) network delicately. This not only greatly improves the extraction rate of nonlinear high-latitude spatial features at different scales while preventing model degradation, but also subtly extracts time-related features, effectively reducing the loss of necessary features, and thus greatly improving the accuracy of model diagnosis. The simulation and comparative experiments of Tennessee-Eastman (TE) process and industrial coking furnace both prove that the constructed model has excellent performance.

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