基于模糊神经网络的汽轮发电机组故障诊断系统

Ping Yang, Qing-miao Wang
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引用次数: 6

摘要

汽轮发电机组发生不平衡等故障时,应在其轴承上安装传感器,检测振动信号,提取故障症状,进行故障诊断。但故障与故障症状之间的关系过于复杂,难以获得足够精确的工业应用。本文提出了一种新的基于模糊神经网络的诊断方法,并将模糊集理论与神经网络技术相结合,构建了一个模糊神经网络系统。特别提出了一种有效的训练样本模糊组织方法,采用聚焦量化方法对故障症状进行离散化,然后进行模糊化,得到模糊集。此外,将应用程序确认的标准故障数据添加到标准故障案例数据库中,以提高诊断系统的准确性。最后,利用所提出的基于模糊神经网络的系统结构设计并实现了600 MW汽轮发电机组振动故障诊断系统,运行结果表明,该系统能够满足大型汽轮发电机组的故障诊断要求,诊断准确率在92% ~ 98%之间。
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 System for Turbo-Generator Set Based on Fuzzy Neural Network
When a fault such as unbalance occurs in a turbogenerator set, sensors should be put on its bearing to detect vibration signals for extracting fault symptoms and then diagnose faults. But the relationships between faults and fault symptoms are too complex to get enough accuracy for industry application. In this paper, a new diagnosis method based on fuzzy neural network is proposed and a fuzzy neural network system is structured by associating fuzzy set theory with neural network technology. Especially, an effective fuzzy organization method for training samples is presented, fault symptoms are discretized by a focusing quantization method and are then fuzzified to obtain fuzzy sets. In addition, the standard fault data which is confirmed by application is added to standard fault case database in order to improve accuracy of diagnosis system. Finally, a vibration fault diagnosis system for 600 MW turbo-generator set is designed and realized by the proposed system structure based on fuzzy neural network, its running results showed that the new system could satisfy fault diagnosis requirement of large turbo-generator set, its accuracy varied from 92 percent to 98 percent.
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