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Anomaly detection in thermal power plant using probabilistic neural network

机译:基于概率神经网络的火电厂异常检测

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Anomalies are integral part of every system's behavior and sometimes cannot be avoided. Therefore it is very important to timely detect such anomalies in real-world running power plant system. Artificial neural networks are one of anomaly detection techniques. This paper gives a type of neural network (probabilistic) to solve the problem of anomaly detection in selected sections of thermal power plant. Selected sections are steam superheaters and steam drum. Inputs for neural networks are some of the most important process variables of these sections. It is noteworthy that all of the inputs are observable in the real system installed in thermal power plant, some of which represent normal behavior and some anomalies. In addition to the implementation of this network for anomaly detection, the effect of key parameter change on anomaly detection results is also shown. Results confirm that probabilistic neural network is excellent solution for anomaly detection problem, especially in real-time industrial applications.
机译:异常是每个系统行为的组成部分,有时无法避免。因此,及时检测现实运行中的电厂系统中的此类异常非常重要。人工神经网络是异常检测技术之一。本文提出了一种神经网络(概率)来解决火电厂选定区域中的异常检测问题。选择的部分是蒸汽过热器和蒸汽鼓。神经网络的输入是这些部分中最重要的过程变量。值得注意的是,所有输入都可以在火电厂安装的实际系统中观察到,其中一些代表正常行为,一些代表异常。除了该网络用于异常检测的实现之外,还显示了关键参数更改对异常检测结果的影响。结果证实,概率神经网络是异常检测问题的极佳解决方案,尤其是在实时工业应用中。

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