基于BP神经网络的核电站锅炉汽包水位报警方法

Yalei Quan, X. Yang
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引用次数: 1

摘要

汽包水位是火电厂和核电站锅炉的一个重要参数。很难正确地测量水平面。这给基于汽包水位的控制甚至报警带来了一定的困难。通常安装三个以上水位计用于汽包水位测量。在集散控制系统(DCS)中,最终报警信号的获取往往是虚警,采用三分之二策略。如果没有正确的报警,将会给电厂造成非常严重的灾难。本文提出了一种基于BP神经网络的方法来解决这一问题。将不同水表的测量值经过模糊处理后输入到BP神经网络中,网络的输出代表报警类型。本文应用了某核电站汽包水位的实测数据。从实验中可以看出,该方法的报警精度得到了快速的提高。
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A method for alarming water level of boiler drum on nuclear power plant based on BP Neural Network
Drum water level is an important parameter for boilers on both thermal power plant and nuclear power plant. It is hard to measure the level correctly. So it brings some difficulties to the control based on the drum water level, even the alarm. Usually, more than three water gauges are installed for drum water level measurement. And it adopts two-out-of-three strategy for obtaining the final alarm signal in distributed control system (DCS), which is often the false alarm. Without the right alarm, it is to result in very serious disaster on power plant. One approach based on Back-Propagation (BP) Neural Network is proposed in this paper for solving the problem. The measurements from different water gauges are inputted into the BP Neural Network after fuzzy process and the output of the Network represents the type of alarm. Some data of the drum water level from a nuclear power plant is applied with the method of the paper. From the experiments, it can be seen that the alarm accuracy is increased rapidly.
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