TY - EJOU AU - Guo, Jinxi AU - Chen, Kai AU - Liu, Jiehui AU - Ma, Yuhao AU - Wu, Jie AU - Wu, Yaochun AU - Xue, Xiaofeng AU - Li, Jianshen TI - Bearing Fault Diagnosis Based on Deep Discriminative Adversarial Domain Adaptation Neural Networks T2 - Computer Modeling in Engineering \& Sciences PY - 2024 VL - 138 IS - 3 SN - 1526-1506 AB - Intelligent diagnosis driven by big data for mechanical fault is an important means to ensure the safe operation of equipment. In these methods, deep learning-based machinery fault diagnosis approaches have received increasing attention and achieved some results. It might lead to insufficient performance for using transfer learning alone and cause misclassification of target samples for domain bias when building deep models to learn domain-invariant features. To address the above problems, a deep discriminative adversarial domain adaptation neural network for the bearing fault diagnosis model is proposed (DDADAN). In this method, the raw vibration data are firstly converted into frequency domain data by Fast Fourier Transform, and an improved deep convolutional neural network with wide first-layer kernels is used as a feature extractor to extract deep fault features. Then, domain invariant features are learned from the fault data with correlation alignment-based domain adversarial training. Furthermore, to enhance the discriminative property of features, discriminative feature learning is embedded into this network to make the features compact, as well as separable between classes within the class. Finally, the performance and anti-noise capability of the proposed method are evaluated using two sets of bearing fault datasets. The results demonstrate that the proposed method is capable of handling domain offset caused by different working conditions and maintaining more than 97.53% accuracy on various transfer tasks. Furthermore, the proposed method can achieve high diagnostic accuracy under varying noise levels. KW - Fault diagnosis; transfer learning; domain adaptation; discriminative feature learning; correlation alignment DO - 10.32604/cmes.2023.031360