Pang Shan, Yang Xinyi, Zhang Xiaofeng, Lin Xuesen
College of Information and Electrical Engineering, Ludong University, Yantai 264025, China.
Aeronautical foundation college, Naval Aeronautical University, Yantai 264001, China.
ISA Trans. 2020 Mar;98:320-337. doi: 10.1016/j.isatra.2019.08.053. Epub 2019 Sep 2.
Accurate and reliable fault diagnosis for rotating machinery, especially under variable working conditions remains a great challenge. Existing deep learning methods which extract features from single domain are insufficient to ensure reliable diagnosis results. In this study, a new deep learning based fault diagnosis method, which extracts features from both time and frequency domains is proposed. Two sets of deep features from multiple domains are fused into intrinsic low-dimensional features by local and global principle component analysis. And a new ensemble kernel extreme learning machine is proposed for fault pattern classification based on the fused features. Extensive experiments on gearbox, rotor and engine rolling bearing show that the proposed method has better diagnosis performance than state-of-the-art methods and is more adaptable to the fluctuation of working conditions.
对旋转机械进行准确可靠的故障诊断,尤其是在变工况下,仍然是一个巨大的挑战。现有的从单域提取特征的深度学习方法不足以确保可靠的诊断结果。在本研究中,提出了一种基于深度学习的新故障诊断方法,该方法从时域和频域提取特征。通过局部和全局主成分分析,将两组来自多个域的深度特征融合为内在低维特征。并且提出了一种基于融合特征的新的集成核极限学习机用于故障模式分类。在齿轮箱、转子和发动机滚动轴承上进行的大量实验表明,所提出的方法比现有方法具有更好的诊断性能,并且对工况波动具有更强的适应性。