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Fuel reloads optimization for TRIGA research reactor using Genetic Algorithm coupled with neutronic and thermal-hydraulic codes

机译:采用遗传算法与中注和热液压码相结合的燃料重新加载Triga研究反应堆的优化

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摘要

This paper presents a case study of applying Genetic Algorithm (GA) coupled with Monte Carlo N-Particle Transport (MCNP) and PARET codes for a thermal-hydraulic and safety analysis to optimize the fuel reload for the TRIGA Mark II Moroccan research reactor. Based on the radial distribution of the U-238 burnup ratio inside the reactor core, the five most burned fuel elements were replaced by others fresh fuel elements (12 % wt of uranium) using the Multi-Objective Genetic Algorithms (MOGA) method. Three aspects for the fuel reload optimization were considered in this study including 1) maximization of the effective multiplication factor (K-eff), 2) minimization of maximum Centre Fuel Temperature (CFT) and 3) maximization of the Departure from Nuclear Boiling Ratio (DNBR).The GA programming process developed in this work was adapted to handle the constraints concerning the safety limits for the successive core configurations (CCs) automatically generated by the code. MOGA method works with an elitist selection based on the Binary Tournament Selection (BTS) method, a modified two-point crossover and a simple mutation operator. The results obtained indicate that the MOGA can successfully find an optimal CC with a K-eff of 1.03498, a maximum CFT of 554 degrees C and a DNBR of 2.94 when five fresh fuel elements are inserted. The variation of neutron fluxes with respect to radial distance for the best CC and the fresh core was illustrated.
机译:本文介绍了应用遗传算法(GA)与蒙特卡罗N粒子传输(MCNP)和副码分析的寄生算法和副码,以优化Triga Mark II摩洛哥研究反应堆的燃料重新装载。基于反应器芯内U-238燃烧比的径向分布,使用多目标遗传算法(MOGA)方法,由其他最燃烧的燃料元件(12%wt)代替。本研究考虑了燃料重载优化的三个方面,包括1)最大化的有效倍增因子(K-EFF),2)最小化最大中心燃料温度(CFT)和3)偏离核沸腾比的最大化( DNBR)。本工作中开发的GA编程过程适用于处理由代码自动生成的连续核心配置(CCS)的安全限制的约束。 MOGA方法基于二进制锦标赛选择(BTS)方法,修改的两点交叉和简单突变运算符在eLitist选择。得到的结果表明,当插入五个新鲜燃料元件时,MOGA可以成功地找到具有1.03498的K-uf的最佳CC,最大CFT为554摄氏度和2.94的DNBR。说明了与最佳CC和新核的径向距离相对于径向距离的中子通量和新核的变化。

著录项

  • 来源
    《Progress in Nuclear Energy》 |2021年第3期|103637.1-103637.11|共11页
  • 作者单位

    Abdelmalek Essaadi Univ Fac Sci Phys Dept ERSN Tetouan 93002 Morocco;

    Abdelmalek Essaadi Univ Fac Sci Phys Dept ERSN Tetouan 93002 Morocco;

    Moulay Ismail Univ Natl Grad Sch Arts & Crafts Meknes Morocco;

    Ctr Invest Energet Medioambientales & Tecnol CIEM Madrid 28040 Spain;

    Ctr Etud Nucl Maamora CNESTENC Unite Conduite Reacteur BP 1382 Rabat 10001 Morocco;

    Ctr Etud Nucl Maamora CNESTENC Unite Conduite Reacteur BP 1382 Rabat 10001 Morocco;

    Tech Univ Denmark Dept Environm Engn DTU Riso Campus DK-4000 Roskilde Denmark;

    Abdelmalek Essaadi Univ Fac Sci Phys Dept ERSN Tetouan 93002 Morocco;

    Abdelmalek Essaadi Univ Fac Sci Phys Dept ERSN Tetouan 93002 Morocco;

  • 收录信息 美国《科学引文索引》(SCI);美国《工程索引》(EI);
  • 原文格式 PDF
  • 正文语种 eng
  • 中图分类
  • 关键词

    TRIGA MARK II; MCNP; Burnup; PARET; Genetic algorithm;

    机译:采取Mark II;MCNP;烧伤;墙;遗传算法;

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