计算机科学
联营
模式识别(心理学)
断层(地质)
人工智能
卷积神经网络
特征(语言学)
卷积(计算机科学)
公制(单位)
数据挖掘
人工神经网络
工程类
地质学
哲学
地震学
语言学
运营管理
作者
Xiaoshan Lin,Quan Jiang,Yehu Shen,Fengyu Xu,Qingkui Zhang
标识
DOI:10.1109/jsen.2023.3314091
摘要
Deep learning-based fault diagnosis methods usually require samples to meet the conditions of independent and identical distribution. In actual industrial occasions, the data distribution of mechanical equipment under variable operating conditions is different, which results in the degradation of diagnostic performance. To overcome the above shortcomings, a fault diagnosis method based on multiscale pooled convolutional domain adaptation network is proposed. In the method, a novel parallel multiscale pooled module is designed to replace the traditional convolution module in 1-D-CNN. The four parallel branches in the structure contain the pooling layers with different scales, as well as different modes, which can extract diversified features with different properties. Afterward, considering the influence of decision boundary on target feature matching, two independent fault classifiers are constructed and trained to decrease the misclassification of the samples. Simultaneously, the local maximum mean discrepancy (LMMD) metric is combined with the domain adversarial network to reduce the difference between the marginal and conditional distributions of samples so as to achieve intraclass and interclass alignment between the source and target domains. Experimental results on the Jiangnan University (JNU) bearing dataset show that, compared with the 1-D-CNN method, the average diagnosis accuracy of the proposed method on the six transfer tasks is increased by 9.43%, which indicates the effectiveness of the proposed fault diagnosis method.
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