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A neural network approach for burn-up calculation and its application to the dynamic fuel cycle code CLASS

机译:神经网络的燃耗计算方法及其在动态燃油循环代码CLASS中的应用

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Dynamic fuel cycle simulation tools calculate nuclei inventories and mass flows evolution in an entire fuel cycle, from the mine to the final disposal. Usually, the fuel depletion in reactor is handled by a fuel loading model and a mean cross section predictor. In the case of a PWR-MOX, a fuel loading model provides from a plutonium stock the plutonium fraction in the fresh fuel needed to reach a specific burnup. A mean cross section predictor aims to assess isotopic cross sections required for building Bateman equations for any fresh fuel composition with a sufficient accuracy and a reasonable computing time. This paper presents a methodology based on neural networks for building a fuel loading model and a cross section predictor for a PWR reactor loaded with MOX fuel. The mean error of the plutonium content prediction from the fuel loading model is 0.37%. Furthermore, the mean cross section predictor allows completion of the fuel depletion calculation in less than one minute with excellent accuracy. A maximum deviation of 3% on main nuclei is obtained at the end of cycle between inventories calculated from neural networks and from the reference coupled neutron transport/fuel depletion calculation. (C) 2015 Elsevier Ltd. All rights reserved.
机译:动态燃料循环仿真工具可计算从矿山到最终处置的整个燃料循环中的原子核清单和质量流量演变。通常,反应堆中的燃料耗竭由燃料加载模型和平均横截面预测器处理。在PWR-MOX的情况下,燃料装载模型会从a库存中提供达到特定燃耗所需的新鲜燃料中的fraction含量。平均横截面预测器旨在以足够的精度和合理的计算时间来评估建立任何新鲜燃料成分的贝特曼方程所需的同位素横截面。本文提出了一种基于神经网络的方法,用于建立燃料装载模型和装载MOX燃料的压水堆反应堆的截面预测器。根据燃料负荷模型预测的content含量的平均误差为0.37%。此外,平均横截面预测器可以在不到一分钟的时间内以极好的精度完成燃料消耗的计算。在周期末,从神经网络和参考耦合中子输运/燃料消耗计算得出的清单之间,主核的最大偏差为3%。 (C)2015 Elsevier Ltd.保留所有权利。

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