基于深度信念网络的齿轮箱故障诊断

Wang Yang, Dequan Yu, Taisheng Zheng, Wenbo Wu, Zhenxiang Li, Hongyong Fu
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引用次数: 1

摘要

随着设备的日益复杂,基于专家经验或信号处理技术手动提取和选择故障特征变得越来越困难。此外,BP神经网络和支持向量机等浅层模型难以处理被测信号与设备健康状况之间的复杂映射关系,面临量纲灾难问题。结合深度置信网络(DBN)在特征提取和处理高维非线性样本方面的优势,在该框架下研究了一种基于深度置信网络的齿轮箱故障特征提取与诊断方法。该方法利用原始时域信号训练深度置信网络,通过深度学习完成智能诊断。其优点是可以摆脱对大量信号处理技术和诊断经验的依赖,以自适应的特点完成故障特征的提取和健康状态的智能诊断。该方法对时域信号没有周期要求,具有较强的通用性和适应性。行星齿轮箱故障诊断的实验结果验证了该方法的可行性和优越性。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Fault Diagnosis For Gearbox Based On Deep Belief Network
As equipment becomes more and more complex, it is increasingly difficult to manually extract and select fault features manually based on expert experience or signal processing techniques. In addition, the shallow model such as BP neural network and SVM have trouble to deal with the complex mapping relationship with respect to the measured signal and the health condition of the equipment, who faces the problem of dimensional disaster. Combined with the advantages of deep confidence network (DBN) in features extraction and deal with high-dimensional and nonlinear samples, a fault feature extraction and diagnosis method based on deep confidence network for gearbox is investigated in this framework. The method uses the original time domain signal to train the deep confidence network and completes the intelligent diagnosis through deep learning. The preponderance is that it can take out the dependence on a great quantity of signal processing techniques and diagnostic experience, and accomplish the extraction of fault features and the intelligent diagnosis of health status with the characteristic of self-adaption. The method has no periodic requirements for time domain signals, and has strong versatility and adaptability. The experimental results of the fault diagnosis for the planetary gearbox demonstrated the feasibility and superiority of the presented method.
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