基于神经网络的声突发信号在线分类在核电厂松散部件监测中的应用

B. Olma, D. Wach
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引用次数: 5

摘要

声学特征分析越来越多地被用作在线评估核电站一次回路部件机械完整性的工具。在操作过程中,对松动部件监测系统传感器的声信号进行连续监测,以寻找与金属撞击相关的信号爆发。随着神经网络的出现,可以在线实现对突发信号的分类和诊断。由于相同事件类型的信号根据其随机流诱导的激励可以具有相似但不同的信号形式,因此利用神经网络的表征电位进行类型分类。建立了一个基于5个预先计算的信号参数值的反向传播神经网络,用于识别三种不同类型的信号。在某工厂的试点应用中,对蒸汽发生器的声爆信号进行了自动监测、分类和趋势分析。本文介绍了该厂连续6周在线信号分类的成功结果
本文章由计算机程序翻译,如有差异,请以英文原文为准。
On-line classification of acoustic burst signals by a neural network application to loose parts monitoring in nuclear power plants
Acoustic signature analysis is increasingly being used as a tool for online assessing the mechanical integrity of components in the primary circuit of nuclear power plants. During operation, the acoustic signals of loose parts monitoring system sensors are continuously monitored for signal bursts associated with metallic impacts. With the availability of neural networks new powerful tools for classification and diagnosis of burst signals can be realized online. Since signals of same event type can have similar but diverse signal forms according to their random flow-induced excitation, the characterization potential of neural networks has been used for type classification. A backpropagation neural network based on five precalculated signal parameter values has been set up for identification of three different signal types. In a pilot application at a plant, the acoustic burst signals at a steam generator were automatically monitored, classified and trended. The paper presents the successful results of six weeks online signal classification at the plant.<>
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