Ulsan National Institute of Science and Technology, 50 UNIST-gil, Ulju-gun, Ulsan 44919, Korea.
Sensors (Basel). 2020 Mar 16;20(6):1651. doi: 10.3390/s20061651.
A nuclear power plant (NPP) consists of an enormous number of components with complex interconnections. Various techniques to detect sensor errors have been developed to monitor the state of the sensors during normal NPP operation, but not for emergency situations. In an emergency situation with a reactor trip, all the plant parameters undergo drastic changes following the sudden decrease in core reactivity. In this paper, a machine learning model adopting a consistency index is suggested for sensor error detection during NPP emergency situations. The proposed consistency index refers to the soundness of the sensors based on their measurement accuracy. The application of consistency index labeling makes it possible to detect sensor error immediately and specify the particular sensor where the error occurred. From a compact nuclear simulator, selected plant parameters were extracted during typical emergency situations, and artificial sensor errors were injected into the raw data. The trained system successfully generated output that gave both sensor error states and error-free states.
核电站(NPP)由数量庞大且相互关联的组件构成。已经开发出了各种技术来检测传感器错误,以在正常 NPP 运行期间监测传感器的状态,但不适用于紧急情况。在反应堆跳闸的紧急情况下,所有工厂参数都会在核心反应性突然下降后发生剧烈变化。在本文中,提出了一种采用一致性指标的机器学习模型,用于在 NPP 紧急情况下检测传感器错误。所提出的一致性指标是指基于传感器测量精度的传感器的稳健性。一致性指标标记的应用使得能够立即检测到传感器错误,并确定发生错误的特定传感器。从紧凑型核模拟器中,在典型的紧急情况下提取了选定的工厂参数,并将人工传感器错误注入原始数据。经过训练的系统成功生成了输出,其中同时给出了传感器错误状态和无错误状态。