基于小波包变换和BP神经网络的TBM故障诊断研究

Tianrui Zhang, Zhenyu Wang, Tianbiao Yu, Wanshan Wang, Haifeng Zhao
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引用次数: 4

摘要

分析了隧道掘进机工作环境的特殊性和虚拟仪器进行状态监测的优越性,构建了基于虚拟仪器的隧道掘进机状态监测系统。研究了基于小波包变换的确定性特征向量的采集方法,并验证了该方法的适用性。提出了一种小波包变换与BP神经网络相结合的故障诊断方法。在应用该方法的过程中,提出了利用二次学习对神经网络的权值进行调整的方法。利用LabVIEW和Matlab软件搭建了TBM状态监测与故障诊断系统。并利用网络发布工具将系统共享到网上。系统运行结果验证了该技术的可行性。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Research on fault diagnosis for TBM Based on wavelet packet transforms and BP neural network
Analyzed the particularity of the TBM work environment and the superiority of virtual instrument for condition monitoring, and built a virtual instrument-based TBM condition monitoring systems. Researched the collected method of certainty feature vectors based on wavelet packet transform, and verified the applicability of this approach. A combination diagnostic methods of wavelet packet transform and BP neural network for fault diagnosis was proposed. In the process of applying this method, presented the method to adjust the weights of neural netwoek by the second learning to influent oefficient weighting method. Built a TBM condition monitoring and fault diagnosis system using LabVIEW and Matlab software. And shared the system online by using the web publishing tool. The technical feasibility were validated by the results of the operation of the system.
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