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Study on Sensor with Mechanical Properties in Nuclear Power Plant with Application of BP Neural Network to Fault Tolerant Control

机译:BP神经网络在核电站机械性能传感器的研究与容错控制

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摘要

All kinds of sensor with mechanical properties often can go wrong in nuclear power plant. In this kind of situation, it puts forward a kind of active fault tolerant control method based on the improved BP neural network. Firstly, the method will train sensor by BP neural network. Secondly, it will be established dynamic model bank in all kinds of running state. The system will be detected by using BP neural network real time. When the sensor goes wrong, it will be controled by reconstruction. Taking pressurizer water-level sensor as the case, a simulation experiment was performed on the nuclear power plant simulator. The results showed that the proposed method is valid for the fault tolerant control of sensor in nuclear power plant.
机译:各种具有机械性能的传感器通常会在核电站出现问题。在这种情况下,它提出了一种基于改进的BP神经网络的活跃容错控制方法。首先,该方法将通过BP神经网络训练传感器。其次,它将在各种运行状态下建立动态模型银行。系统将通过使用BP神经网络实时检测系统。当传感器出错时,它将被重建控制。采用压力机水位传感器视为壳体,对核电厂模拟器进​​行了仿真实验。结果表明,该方法是有效的,用于核电站传感器的容错控制。

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