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A RELAP5-3D/LSTM model for the analysis of drywell cooling fan failure

机译:RETAP5-3D / LSTM模型用于分析DRYWELL冷却风扇故障

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A RELAP5-3D/LSTM model was created to analyze the failures of two drywell cooling fans at a nuclear power plant. A total of four fan coil units (FCUs) each comprised of a water-cooled heat exchanger and a centrifugal fan located in the drywell provide cooling via a closed nitrogen loop to the primary containment of the boiling water reactor. A Reactor Excursion and Leak Analysis Program (RELAP5-3D) thermal hydraulic model was created to simulate the steady-state normal operation of the FCUs. Historical data from the plant Process Information (PI) system was synchronized in time for a total of 33 Plant Management Information System (PMIS) tags per FCU representing: (1) the temperatures at various locations within the drywell, (2) inlet, outlet, and dewpoint temperatures at the FCUs, (3) reactor power, and (4) water coolant flowrate and temperature. Because the inlet temperature sensor for the two fans that failed did not provide consistent data prior to the failures, a long shortterm memory (LSTM) recurrent neural network was trained to predict the FCU inlet temperature history based upon the states of the other valid PMIS points. RELAP5-3D simulations were performed using the measured FCU inlet temperatures, as well as the LSTM-generated temperatures, and the resulting FCU outlet temperatures were compared. The simulation results using the measured and predicted FCU inlet temperature were shown to be within 7.35% and 5.16%, respectively, of the values reported by the PI system. Thus, a viable approach has been demonstrated to predict the expected FCU outlet temperature. By comparing real-time measurements of FCU outlet temperature with predictions such as those presented here, off-normal operation can be readily detected. The use of RELAP5-3D with the LSTM results was successfully implemented to prototype a physics-based anomaly detection model for the drywell FCUs.
机译:创建了RETAP5-3D / LSTM模型,以分析核电站两种DIRDWELL冷却风扇的故障。共有四个风扇线圈单元(Fcus)各自包括水冷热交换器和位于干燥器中的离心风扇,通过闭合的氮气环提供冷却至沸水反应器的主要容积。创建了反应堆偏移和泄漏分析程序(Relap5-3D)热液压模型,以模拟FCU的稳态正常运行。来自植物过程信息(PI)系统的历史数据及时同步,总共33个工厂管理信息系统(PMI)标签,代表:(1)干燥阱内各个位置处的温度,(2)入口,出口和FCU的露点温度,(3)反应器功率,(4)水冷液流量和温度。由于两个风扇的入口温度传感器在故障之前没有提供一致的数据,因此训练了长短的短期内存(LSTM)经常性神经网络,以预测基于其他有效PMIS点的状态的FCU入口温度历史。使用测量的FCU入口温度以及LSTM产生温度进行RELAP5-3D模拟,并比较了所得的FCU出口温度。使用测量和预测的FCU入口温度的模拟结果显示为PI系统报告的值分别在7.35%和5.16%以内。因此,已经证明了一种可行的方法来预测预期的FCU出口温度。通过比较FCU出口温度的实时测量与诸如此处呈现的预测的预测,可以容易地检测到非正常操作。 RETAP5-3D与LSTM结果的使用成功实施以原型为DRYWELL FCU的基于物理类的异常检测模型。

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