基于人工神经网络和仿真数据库的LOCA事故冷腿断裂尺寸识别

Thi Hong Ngoc Le, Ngoc Dat Nguyen, Van Thai Nguyen
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摘要

研究最广泛的LOCA(冷却剂损失事故)是冷腿管破裂导致反应堆冷却系统首先降压,不同的破裂大小对应于来自仪表和控制系统(I&C系统)的触发信号的变化,如压力、温度、功率、压力容器水位等不同。因此,核电站的反应随断裂的大小而有很大的不同。为了在给定破裂尺寸的情况下减轻LOCA的后果,有必要设计应急堆芯冷却剂系统,以便在事故的所有阶段有效地冷却燃料。因此,需要在反应堆停堆后立即检测和确定破裂的大小。为了实现这一目标,本研究探讨了人工神经网络(ANN)在loca识别中的适用性,特别是根据VVER-1000核电站运行参数的变化来识别loca的破裂尺寸。本研究主要利用VVER-1000反应堆技术RELAP5仿真程序获得的仿真数据库进行人工神经网络的构建、训练和优化。结果清楚地表明,即使加入了不确定性的输入参数,基于人工神经网络的模型在检测断裂尺寸方面也具有潜在的应用前景。
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Identification of Cold-Leg Break Size in LOCA Accident using Artificial Neural Networks and Simulation Database
The most widely studied LOCA (Loss of Coolant Accidents) is a rupture of a cold leg pipe causing the Reactor Cooling System to depressurize first, with different break sizes corresponding to the change in trigger signal from the Instrument and Control System (I&C System) such as pressure, temperature, power, pressure vessel water level, etc. is different. Therefore, the response of nuclear power plant varies considerably with the size of break. To mitigate the consequence of LOCA with a given break size, it is necessary to design the emergency core coolant systems so that the fuel is cooled efficiently during all phases of the accident. Therefore, the size of rupture needs to be detected and identified as soon as possible right after reactor scram. To achieve this goal, this study is conducted to investigate the applicability of artificial neural networks (ANN) for recognizing LOCAs, especially identifying the rupture sizes of the LOCAs according to the changes of operational parameters of VVER-1000 nuclear power plant. This study mainly focuses on building, training, and optimizing the artificial neural networks using simulation databases obtained from the RELAP5 simulation program for VVER-1000 reactor technology. Results clearly showed the potential application of ANN-based model for detecting the break size even with uncertainty of input parameters added.
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