%0 Journal Article %T One-Dimensional Convolutional Neural Network Based Bearing Fault Diagnosis %A Jiaxue Chen %A Xiaoqi Yin %A Chenxue Li %A Hang Yang %A Li Hong %J Open Access Library Journal %V 9 %N 4 %P 1-11 %@ 2333-9721 %D 2022 %I Open Access Library %R 10.4236/oalib.1108644 %X Fault diagnosis based on time-domain signals has become mainstream in recent years. Traditional methods require signal processing to extract fault features before feeding them into a neural network for diagnostic classification, which is a cumbersome process. This paper proposes an adaptive fault diagnosis model based on a one-dimensional convolutional neural network, and the structure and parameters of the model are analyzed and designed in detail. The segmented pre-processed vibration signal is fed directly into a convolutional neural network, where fault features can be extracted adaptively, and finally classify the diagnostic results using a Softmax classifier. This method directly processes the vibration signals in an end-to-end way, which improves the timeliness of diagnosis. The effectiveness of the method is verified through bearing experiments and compared with KNN, SVM, LSTM and AlexNet models. The results show that the model is accurate for fault diagnosis of bearings. %K Convolutional Neural Network %K Fault Diagnosis %K Rolling Bearing %K Intelligent Diagnosis %U http://www.oalib.com/paper/6772527