Dong Yunjia, Li Yuqing, Zheng Huailiang, Wang Rixin, Xu Minqiang
Deep Space Exploration Research Center, Harbin Institute of Technology, Harbin 150001, China.
Deep Space Exploration Research Center, Harbin Institute of Technology, Harbin 150001, China.
ISA Trans. 2022 Feb;121:327-348. doi: 10.1016/j.isatra.2021.03.042. Epub 2021 Apr 5.
Intelligent fault diagnosis of rolling element bearings gains increasing attention in recent years due to the promising development of artificial intelligent technology. Many intelligent diagnosis methods work well requiring massive historical data of the diagnosed object. However, it is hard to get sufficient fault data in advance in real diagnosis scenario and the diagnosis model constructed on such small dataset suffers from serious overfitting and losing the ability of generalization, which is described as small sample problem in this paper. Focus on the small sample problem, this paper proposes a new intelligent fault diagnosis framework based on dynamic model and transfer learning for rolling element bearings race faults. In the proposed framework, dynamic model of bearing is utilized to generate massive and various simulation data, then the diagnosis knowledge learned from simulation data is leveraged to real scenario based on convolutional neural network (CNN) and parameter transfer strategies. The effectiveness of the proposed method is verified and discussed based on three fault diagnosis cases in detail. The results show that based on the simulation data and parameter transfer strategies in CNN, the proposed method can learn more transferable features and reduce the feature distribution discrepancy, contributing to enhancing the fault identification performance significantly.
近年来,随着人工智能技术的蓬勃发展,滚动轴承的智能故障诊断受到越来越多的关注。许多智能诊断方法需要被诊断对象的大量历史数据才能有效工作。然而,在实际诊断场景中,很难提前获取足够的故障数据,基于如此小的数据集构建的诊断模型会遭受严重的过拟合问题,并且失去泛化能力,本文将此描述为小样本问题。针对小样本问题,本文提出了一种基于动态模型和迁移学习的滚动轴承滚道故障智能诊断新框架。在所提出的框架中,利用轴承的动态模型生成大量多样的仿真数据,然后基于卷积神经网络(CNN)和参数迁移策略,将从仿真数据中学到的诊断知识应用于实际场景。通过三个故障诊断案例详细验证和讨论了所提方法的有效性。结果表明,基于CNN中的仿真数据和参数迁移策略,所提方法能够学习到更多可迁移的特征,减少特征分布差异,显著提高故障识别性能。