National Defense Key Laboratory of Ministry of Education, Beijing University of Chemical Technology, Beijing 100029, China.
Diagnostic and Self-Healing Engineering Research Center, Beijing University of Chemical Technology, Beijing 100029, China.
Sensors (Basel). 2019 Dec 31;20(1):234. doi: 10.3390/s20010234.
Bearing state recognition, especially under variable working conditions, has the problems of low reusability of monitoring data, low state recognition accuracy and low generalization ability of the model. The feature-based transfer learning method can solve the above problems, but it needs to rely on signal processing knowledge and expert diagnosis experience to obtain the cross-characteristics of different working conditions data in advance. Therefore, this paper proposes an improved balanced distribution adaptation (BDA), named multi-core balanced distribution adaptation (MBDA). This method constructs a weighted mixed kernel function to map different working conditions data to a unified feature space. It does not need to obtain the cross-characteristics of different working conditions data in advance, which simplifies the data processing and meet end-to-end state recognition in practical applications. At the same time, MBDA adopts the A-Distance algorithm to estimate the balance factor of the distribution and the balance factor of the kernel function, which not only effectively reduces the distribution difference between different working conditions data, but also improves efficiency. Further, feature self-learning and rolling bearing state recognition are realized by the stacked autoencoder (SAE) neural network with classification function. The experimental results show that compared with other algorithms, the proposed method effectively improves the transfer learning performance and can accurately identify the bearing state under different working conditions.
承载状态识别,特别是在变工况下,存在监测数据可重用性低、状态识别精度低和模型泛化能力低的问题。基于特征的迁移学习方法可以解决上述问题,但需要依赖信号处理知识和专家诊断经验,提前获得不同工况数据的交叉特征。因此,本文提出了一种改进的均衡分布适配(BDA),称为多核均衡分布适配(MBDA)。该方法构建了加权混合核函数,将不同工况数据映射到统一的特征空间。它不需要提前获得不同工况数据的交叉特征,简化了数据处理,满足实际应用中的端到端状态识别。同时,MBDA 采用 A-Distance 算法估计分布平衡因子和核函数平衡因子,不仅有效降低了不同工况数据的分布差异,而且提高了效率。进一步,通过具有分类功能的堆叠自动编码器(SAE)神经网络实现特征自学习和滚动轴承状态识别。实验结果表明,与其他算法相比,所提出的方法有效地提高了迁移学习性能,可以准确识别不同工况下的轴承状态。