Zhang Wei, Peng Gaoliang, Li Chuanhao, Chen Yuanhang, Zhang Zhujun
State Key Laboratory of Robotics and System, Harbin Institute of Technology, No. 92 Xidazhi Street, Harbin 150001, China.
Sensors (Basel). 2017 Feb 22;17(2):425. doi: 10.3390/s17020425.
Intelligent fault diagnosis techniques have replaced time-consuming and unreliable human analysis, increasing the efficiency of fault diagnosis. Deep learning models can improve the accuracy of intelligent fault diagnosis with the help of their multilayer nonlinear mapping ability. This paper proposes a novel method named Deep Convolutional Neural Networks with Wide First-layer Kernels (WDCNN). The proposed method uses raw vibration signals as input (data augmentation is used to generate more inputs), and uses the wide kernels in the first convolutional layer for extracting features and suppressing high frequency noise. Small convolutional kernels in the preceding layers are used for multilayer nonlinear mapping. AdaBN is implemented to improve the domain adaptation ability of the model. The proposed model addresses the problem that currently, the accuracy of CNN applied to fault diagnosis is not very high. WDCNN can not only achieve 100% classification accuracy on normal signals, but also outperform the state-of-the-art DNN model which is based on frequency features under different working load and noisy environment conditions.
智能故障诊断技术已经取代了耗时且不可靠的人工分析,提高了故障诊断的效率。深度学习模型借助其多层非线性映射能力可以提高智能故障诊断的准确性。本文提出了一种名为具有宽第一层内核的深度卷积神经网络(WDCNN)的新方法。所提出的方法使用原始振动信号作为输入(使用数据增强来生成更多输入),并在第一个卷积层中使用宽内核来提取特征并抑制高频噪声。前几层中的小卷积内核用于多层非线性映射。实施AdaBN以提高模型的域适应能力。所提出的模型解决了当前应用于故障诊断的卷积神经网络(CNN)准确性不是很高的问题。WDCNN不仅可以在正常信号上实现100%的分类准确率,而且在不同工作负载和噪声环境条件下,其性能优于基于频率特征的现有最佳深度神经网络(DNN)模型。