National Space Science Center.CAS, University of Chinese Academy of Sciences, Beijing 100190, China.
Science and Technology on Complex Aviation System Simulation Laboratory, Beijing 100076, China.
Sensors (Basel). 2021 Jan 10;21(2):450. doi: 10.3390/s21020450.
In recent years, transfer learning has been widely applied in fault diagnosis for solving the problem of inconsistent distribution of the original training dataset and the online-collecting testing dataset. In particular, the domain adaptation method can solve the problem of the unlabeled testing dataset in transfer learning. Moreover, Convolutional Neural Network (CNN) is the most widely used network among existing domain adaptation approaches due to its powerful feature extraction capability. However, network designing is too empirical, and there is no network designing principle from the frequency domain. In this paper, we propose a unified convolutional neural network architecture from a frequency domain perspective for a domain adaptation named Frequency-domain Fusing Convolutional Neural Network (FFCNN). The method of FFCNN contains two parts, frequency-domain fusing layer and feature extractor. The frequency-domain fusing layer uses convolution operations to filter signals at different frequency bands and combines them into new input signals. These signals are input to the feature extractor to extract features and make domain adaptation. We apply FFCNN for three domain adaptation methods, and the diagnosis accuracy is improved compared to the typical CNN.
近年来,迁移学习在故障诊断中得到了广泛应用,用于解决原始训练数据集和在线收集的测试数据集之间分布不一致的问题。特别是,域自适应方法可以解决迁移学习中无标签测试数据集的问题。此外,卷积神经网络(CNN)由于其强大的特征提取能力,是现有域自适应方法中应用最广泛的网络。然而,网络设计过于经验化,从频域来看,没有网络设计原则。本文从频域角度提出了一种用于域自适应的统一卷积神经网络结构,称为频域融合卷积神经网络(FFCNN)。FFCNN 方法包含两部分,频域融合层和特征提取器。频域融合层使用卷积操作来过滤不同频带的信号,并将它们组合成新的输入信号。这些信号输入到特征提取器中以提取特征并进行域自适应。我们将 FFCNN 应用于三种域自适应方法,与典型的 CNN 相比,诊断精度得到了提高。