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首页> 外文期刊>Annals of nuclear energy >Developing a computational tool for predicting physical parameters of a typical WER-1000 core based on artificial neural network
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Developing a computational tool for predicting physical parameters of a typical WER-1000 core based on artificial neural network

机译:基于人工神经网络,开发用于预测典型WER-1000堆芯物理参数的计算工具

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摘要

The main goal of the present article is to design a computational tool to predict physical parameters of the WER-1000 nuclear reactor core based on artificial neural network (ANN), taking into account a detailed physical model of the fuel rods and coolant channels in a fuel assembly. Predictions of thermal characteristics of fuel, clad and coolant are performed using cascade feed forward ANN based on linear fission power distribution and power peaking factors of FAs and hot channels factors (which are found based on our previous neutronic calculations). A software package has been developed to prepare the required data for ANN training which applies a modified COBRA-EN code for sub-channel analysis and links the codes using the MATLAB software. Based on the current estimation system, five main core TH parameters are predicted, which include the average and maximum temperatures of fuel and clad as well as the minimum departure from nucleate boiling ratio (MDNBR) for each FA. To get the best conditions for the considered ANNs training, a comprehensive sensitivity study has been performed to examine the effects of variation of hidden neurons, hidden layers, transfer functions, and the learning algorithms on the training and simulation results. Performance evaluation results show that the developed ANN can be trained to estimate the core TH parameters of a typical WER-1000 reactor quickly without loss of accuracy.
机译:本文的主要目标是设计一种计算工具,以基于人工神经网络(ANN)预测WER-1000核反应堆堆芯的物理参数,同时考虑到燃料棒和冷却液通道中的详细物理模型。燃油总成。基于线性裂变功率分布,FA的功率峰值因子和热通道因子(基于我们以前的中子学计算发现),使用级联前馈ANN进行燃料,包层和冷却剂的热特性预测。已开发出软件包来准备ANN训练所需的数据,该软件包将修改的COBRA-EN代码应用于子信道分析,并使用MATLAB软件链接这些代码。基于当前的估算系统,预测了五个主要的TH核心参数,包括每个FA的燃料和包层的平均温度和最高温度以及与核沸腾比(MDNBR)的最小偏差。为了获得考虑的人工神经网络训练的最佳条件,已进行了全面的敏感性研究,以检查隐藏神经元变化,隐藏层,传递函数以及学习算法对训练和模拟结果的影响。性能评估结果表明,可以对开发的人工神经网络进行训练,以快速估算典型WER-1000反应堆的核心TH参数,而不会损失准确性。

著录项

  • 来源
    《Annals of nuclear energy》 |2012年第2012期|82-93|共12页
  • 作者单位

    Department of Nuclear Engineering, School of Mechanical Engineering, Shiraz University, 71936-16548 Shiraz, Iran,Nuclear Science and Technology Research Institute (NSTRI), Atomic Energy Organization of Iran (AEOI), Tehran 14399-51113, Iran;

    Department of Nuclear Engineering, School of Mechanical Engineering, Shiraz University, 71936-16548 Shiraz, Iran,Research Center for Radiation Protection, Shiraz University, Shiraz, Iran;

    Nuclear Science and Technology Research Institute (NSTRI), Atomic Energy Organization of Iran (AEOI), Tehran 14399-51113, Iran;

  • 收录信息
  • 原文格式 PDF
  • 正文语种 eng
  • 中图分类
  • 关键词

    artificial neural network; neutronics; thermal hydraulics; WER-1000; MDNBR;

    机译:人工神经网络;中子学热液压;WER-1000;MDNBR;

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