School of Civil Aviation, Northwestern Polytechnical University, 710072 Xi'an, China.
School of Civil Aviation, Northwestern Polytechnical University, 710072 Xi'an, China.
ISA Trans. 2022 Oct;129(Pt B):505-524. doi: 10.1016/j.isatra.2022.02.032. Epub 2022 Feb 25.
Deep neural networks highly depend on substantial labeled samples when identifying bearing fault. However, in some practical situations, it is very difficult to collect sufficient labeled samples, which limits the application of deep neural networks in practical engineering. Therefore, how to use limited labeled samples to complete fault diagnosis tasks is an urgent problem. In this paper, a deep reinforcement transfer convolutional neural network (DRTCNN) is developed to tackle the problem. Firstly, an intelligent diagnosis agent constructed by a convolutional neural network is trained to obtain maximum long-term cumulative rewards, which is characterized by the ability to autonomously learn the latent relationship between fault samples and corresponding labels. Secondly, the parameter transfer learning method is utilized to establish a target task agent of DRTCNN. Finally, limited labeled target domain fault samples and the training mechanism of deep Q-network are employed to train the target task agent for performing target diagnosis tasks. Two diagnosis cases are conducted to verify the effectiveness of the proposed method when only limited labeled target domain fault samples are available.
深度神经网络在识别轴承故障时高度依赖大量有标签的样本。然而,在某些实际情况下,收集足够的有标签样本非常困难,这限制了深度神经网络在实际工程中的应用。因此,如何利用有限的有标签样本完成故障诊断任务是一个亟待解决的问题。本文提出了一种深度强化迁移卷积神经网络(DRTCNN)来解决这个问题。首先,通过训练一个由卷积神经网络构建的智能诊断代理来获得最大的长期累积奖励,该代理的特点是能够自主学习故障样本与相应标签之间的潜在关系。其次,利用参数迁移学习方法建立 DRTCNN 的目标任务代理。最后,利用有限的有标签目标域故障样本和深度 Q 网络的训练机制对目标任务代理进行训练,以执行目标诊断任务。通过两个诊断案例验证了在仅有有限的有标签目标域故障样本的情况下,该方法的有效性。