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Fault Diagnosis Based on 1D-CNN with Associated Auxiliary Tasks Boosted for Wheelset Bearings of High-Speed Trains

机译:基于1D-CNN的故障诊断具有相关的辅助任务,提升了高速列车的轴承轴承

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Fault diagnosis for wheelset bearings of highspeed trains (HSTs) is very important for the reliability of the train operation. In recent years, deep learning technology has been widely used for fault diagnosis of mechanical components. Most deep learning methods are optimized from the data set or network structure. However, most target tasks themselves are complicated, and the factors leading to any of its results are not limited to the two aspects mentioned above. In general, there are one or more other factors related to the target task that influence the outcome of the final results. This paper introduces the idea of multi-task learning into the one-dimensional convolutional neural network (1D-CNN) model, and explores the possibility of enhancing the learning ability of the model by using factors related to the target task as auxiliary tasks. The experiment proves that the auxiliary tasks associated with the target task can indeed enhance the learning ability of the target task. And compared with other five cutting-edge fault diagnosis methods, the proposed model also has very good performance for wheelset bearings of HSTs.
机译:对于高速列车(HSTS)的轮对轴承的故障诊断对于火车操作的可靠性非常重要。近年来,深度学习技术已广泛用于机械部件的故障诊断。大多数深度学习方法是从数据集或网络结构进行了优化的。然而,大多数目标任务本身复杂,导致其任何结果的因素不限于上述两个方面。通常,有一个或多个与影响最终结果结果的目标任务有关的其他因素。本文介绍了多任务学习到一维卷积神经网络(1D-CNN)模型的思想,并探讨了通过使用与目标任务相关的因素作为辅助任务的因素来提高模型的学习能力的可能性。实验证明,与目标任务相关的辅助任务确实可以提高目标任务的学习能力。并与其他五个尖端故障诊断方法相比,所提出的模型也具有很好的HSTS轴承性能。

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