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Real-time estimation of break sizes during LOCA in nuclear power plants using NARX neural network

机译:使用NARX神经网络实时估计核电厂LOCA期间的断裂尺寸

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This paper deals with break size estimation of loss of coolant accidents (LOCA) using a nonlinear autoregressive with exogenous inputs (NARX) neural network. Previous studies used static approaches, requiring time-integrated parameters and independent firing algorithms. NARX neural network is able to directly deal with time-dependent signals for dynamic estimation of break sizes in real-time. The case studied is a LOCA in the primary system of Bushehr nuclear power plant (NPP). In this study, number of hidden layers, neurons, feedbacks, inputs, and training duration of transients are selected by performing parametric studies to determine the network architecture with minimum error. The developed NARX neural network is trained by error back propagation algorithm with different break sizes, covering 5%–100% of main coolant pipeline area. This database of LOCA scenarios is developed using RELAP5 thermal-hydraulic code. The results are satisfactory and indicate feasibility of implementing NARX neural network for break size estimation in NPPs. It is able to find a general solution for break size estimation problem in real-time, using a limited number of training data sets. This study has been performed in the framework of a research project, aiming to develop an appropriate accident management support tool for Bushehr NPP.
机译:本文使用带有外部输入的非线性自回归神经网络(NARX)来处理冷却剂事故损失(LOCA)的断裂尺寸估计。先前的研究使用静态方法,需要时间积分参数和独立的触发算法。 NARX神经网络能够直接处理与时间有关的信号,以便实时动态估算断裂尺寸。研究的案例是布什尔核电站(NPP)初级系统中的LOCA。在这项研究中,通过执行参数研究来确定隐含层,神经元,反馈,输入和瞬态训练持续时间的数量,以确定具有最小误差的网络体系结构。先进的NARX神经网络通过误差反向传播算法进行训练,具有不同的中断尺寸,覆盖了主冷却液管道面积的5%–100%。该LOCA方案数据库是使用RELAP5热工液压代码开发的。结果令人满意,并表明了实施NARX神经网络进行NPP断裂尺寸估计的可行性。它能够使用有限数量的训练数据集来实时找到断裂尺寸估计问题的通用解决方案。这项研究是在一个研究项目的框架内进行的,旨在为Bushehr NPP开发合适的事故管理支持工具。

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