Fault Diagnosis of Complex Chemical Processes Using Feature Fusion of a Convolutional Network

Chemical production usually shows complex, higher-dimensional, time-varying, and non-Gaussian characteristics, which make it difficult to judge the normal operation of the states of chemical proces...

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