利用去噪堆叠自编码器生成故障诊断特征集

Raghuveer Thirukovalluru, Sonal Dixit, R. K. Sevakula, N. Verma, A. Salour
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引用次数: 84

摘要

传感器技术和基于数据驱动模型的技术的最新进展使得智能诊断系统在工业机器维护框架中占有突出地位。这种系统的性能很大程度上依赖于提取的特征的质量和学习到的分类器模型。传统的特征是手工制作的,工程师们会用统计参数和基于能量分布分析的信号变换来手工设计它们。最近,深度学习技术已经展示了获得有用的特征表示的新方法,这些方法在图像和语音处理应用中提供了最先进的结果。本文首先简要介绍了传统的手工特征,然后简要分析了深度神经网络(DNN)学习的用于故障诊断的手工特征v/s特征。本文中基于DNN的特征分3个阶段生成:1)使用传统技术提取手工特征;2)用手工特征以无监督方式学习去噪稀疏自编码器初始化DNN的权值;3)应用两种通用微调启发式方法定制DNN的权值以获得良好的分类性能。实验分析了5个数据集:空压机监测数据、钻头监测数据和钢板监测数据各1个,轴承故障监测数据2个。结果清楚地显示了深度神经网络获得良好特征表示和良好分类性能的前景。此外,它还发现基于DNN的快速傅里叶变换特征比随机森林更适合支持向量机作为分类器。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Generating feature sets for fault diagnosis using denoising stacked auto-encoder
Recent advancements in sensor technologies and data driven model based techniques have made intelligent diagnostic systems prominent in machine maintenance frameworks of industries. The performance of such systems immensely relies upon the quality of features extracted and the classifier model learned. Traditionally features were handcrafted, where engineers would manually design them with statistical parameters and signal transforms based energy distribution analysis. Recently, deep learning techniques have shown new ways of obtaining useful feature representation that provide state of the art results in image and speech processing applications. This paper first presents a brief survey of traditional handcrafted features and later presents a short analysis of handcrafted features v/s features learned by deep neural networks (DNN), for doing fault diagnosis. The DNN based features in this paper were generated in 3 phases: 1) extracted handcrafted features using traditional techniques 2) initialized the weights of DNN by learning de-noising sparse auto-encoders with the handcrafted features in unsupervised fashion and 3) applied two generic fine tuning heuristics that tailor DNN's weights to give good classification performance. The experimentation and analysis were performed on 5 datasets: one each on Air compressor monitoring, Drill bit monitoring and Steel plate monitoring, and two on bearing fault monitoring data. The results clearly show the prospects of DNN obtaining good feature representations and good classification performance. Further, it also finds that Fast Fourier Transform based features with DNN are more suited for Support Vector Machine as classifier than Random Forest.
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