基于遗传算法和多目标适应度函数的压水堆堆芯加载方式优化

IF 0.7 4区 物理与天体物理 Q4 CHEMISTRY, INORGANIC & NUCLEAR
Nukleonika Pub Date : 2021-11-25 DOI:10.2478/nuka-2021-0022
W. Kubiński, P. Darnowski, Kamil Chęć
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引用次数: 2

摘要

摘要研究了遗传算法(GAs)在第一次岩心加载模式优化中的应用。采用美国麻省理工学院(MIT)的BEAVRS压水堆(PWR)模型,采用PARCS节点扩散堆芯模拟器结合遗传算法进行模式选择。原则上,气体已成功地应用于许多核工程问题,如堆芯几何优化和燃料配置。然而,在许多情况下,这些分析只侧重于优化单个参数,如有效中子倍增因子(keff),并且通常仅限于简化的堆芯模型。相反,本工作开发的ga具有多用途适应度函数(FF),允许同时优化多个参数,并将其应用于实际的全核问题。本研究的主要参数是总功率峰值因子(PPF)和燃料循环的长度。本研究的基本目的是通过寻找更长的燃料循环和更均匀的功率/通量分布来提高经济性。开发、测试和实施了适当的ff,并将其结果与参考BEAVRS第一次燃料循环进行了比较。在分析的两种测试方案中,与BEAVRS堆芯相比,可以延长第一次燃料循环,同时保持较低或相似的PPF,但代价是增加初始反应性。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Optimization of the loading pattern of the PWR core using genetic algorithms and multi-purpose fitness function
Abstract The study demonstrates an application of genetic algorithms (GAs) in the optimization of the first core loading pattern. The Massachusetts Institute of Technology (MIT) BEAVRS pressurized water reactor (PWR) model was applied with PARCS nodal-diffusion core simulator coupled with GA numerical tool to perform pattern selection. In principle, GAs have been successfully used in many nuclear engineering problems such as core geometry optimization and fuel configuration. In many cases, however, these analyses focused on optimizing only a single parameter, such as the effective neutron multiplication factor (keff), and often limited to the simplified core model. On the contrary, the GAs developed in this work are equipped with multiple-purpose fitness function (FF) and allow the optimization of more than one parameter at the same time, and these were applied to a realistic full-core problem. The main parameters of interest in this study were the total power peaking factor (PPF) and the length of the fuel cycle. The basic purpose of this study was to improve the economics by finding longer fuel cycle with more uniform power/flux distribution. Proper FFs were developed, tested, and implemented and their results were compared with the reference BEAVRS first fuel cycle. In the two analysed test scenarios, it was possible to extend the first fuel cycle while maintaining lower or similar PPF, in comparison with the BEAVRS core, but for the price of increased initial reactivity.
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来源期刊
Nukleonika
Nukleonika 物理-无机化学与核化学
CiteScore
2.00
自引率
0.00%
发文量
5
审稿时长
4-8 weeks
期刊介绍: "Nukleonika" is an international peer-reviewed, scientific journal publishing original top quality papers on fundamental, experimental, applied and theoretical aspects of nuclear sciences. The fields of research include: radiochemistry, radiation measurements, application of radionuclides in various branches of science and technology, chemistry of f-block elements, radiation chemistry, radiation physics, activation analysis, nuclear medicine, radiobiology, radiation safety, nuclear industrial electronics, environmental protection, radioactive wastes, nuclear technologies in material and process engineering, radioisotope diagnostic methods of engineering objects, nuclear physics, nuclear reactors and nuclear power, reactor physics, nuclear safety, fuel cycle, reactor calculations, nuclear chemical engineering, nuclear fusion, plasma physics etc.
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