首页> 外文期刊>Dynamics of continuous, discrete & impulsive systems, Series B. Applications & algorithms >FAULT DETECTION AND DIAGNOSIS FOR FOSSIL ELECTRIC POWER PLANTS VIA RECURRENT NEURAL NETWORKS
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FAULT DETECTION AND DIAGNOSIS FOR FOSSIL ELECTRIC POWER PLANTS VIA RECURRENT NEURAL NETWORKS

机译:通过递归神经网络对化石电厂进行故障检测与诊断

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This paper presents the development and application of a neural networks-based scheme for fault diagnosis, including detection and classification, for fossil electric power plants The scheme is constituted by two components: residual generation and fault classification. The first component generates residuals via the difference between measurements coming from the plant and a neural network predictor. The neural network predictor is trained with healthy data collected from a full scale simulator reproducing reliably the process behavior. For the second component detection thresholds are used to encode the residuals as bipolar vectors which represent fault patterns The fault patterns are stored in an associative memory based on a recurrent neural network. The scheme is evaluated via a full scale simulator to diagnose the main faults appearing in this kind of power plants.
机译:本文介绍了一种基于神经网络的化石电厂故障诊断方案的开发和应用,包括故障检测和分类。该方案由残差生成和故障分类两部分组成。第一个分量通过来自工厂的测量值与神经网络预测器之间的差值生成残差。使用从全面模拟器中可靠收集的健康数据训练神经网络预测器,从而可靠地再现过程行为。对于第二分量,使用阈值将残差编码为代表故障模式的双极性向量。故障模式基于循环神经网络存储在关联存储器中。该方案通过全面模拟器进行评估,以诊断出现在此类发电厂中的主要故障。

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