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Heuristic rules embedded genetic algorithm for in-core fuel management optimization.

机译:启发式规则嵌入式遗传算法用于堆芯燃料管理优化。

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摘要

The objective of this study was to develop a unique methodology and a practical tool for designing loading pattern (LP) and burnable poison (BP) pattern for a given Pressurized Water Reactor (PWR) core. Because of the large number of possible combinations for the fuel assembly (FA) loading in the core, the design of the core configuration is a complex optimization problem. It requires finding an optimal FA arrangement and BP placement in order to achieve maximum cycle length while satisfying the safety constraints.; Genetic Algorithms (GA) have been already used to solve this problem for LP optimization for both PWR and Boiling Water Reactor (BWR). The GA, which is a stochastic method works with a group of solutions and uses random variables to make decisions. Based on the theories of evaluation, the GA involves natural selection and reproduction of the individuals in the population for the next generation. The GA works by creating an initial population, evaluating it, and then improving the population by using the evaluation operators.; To solve this optimization problem, a LP optimization package, GARCO (Genetic Algorithm Reactor Code Optimization) code is developed in the framework of this thesis. This code is applicable for all types of PWR cores having different geometries and structures with an unlimited number of FA types in the inventory. To reach this goal, an innovative GA is developed by modifying the classical representation of the genotype. To obtain the best result in a shorter time, not only the representation is changed but also the algorithm is changed to use in-core fuel management heuristics rules. The improved GA code was tested to demonstrate and verify the advantages of the new enhancements.; The developed methodology is explained in this thesis and preliminary results are shown for the VVER-1000 reactor hexagonal geometry core and the TMI-1 PWR. The improved GA code was tested to verify the advantages of new enhancements. The core physics code used for VVER in this research is Moby-Dick, which was developed to analyze the VVER by SKODA Inc. The SIMULATE-3 code, which is an advanced two-group nodal code, is used to analyze the TMI-1.
机译:这项研究的目的是开发一种独特的方法和一种实用工具,用于为给定的压水堆(PWR)堆芯设计装载模式(LP)和可燃毒物(BP)模式。由于堆芯中装载燃料组件(FA)的可能组合数量众多,因此堆芯配置的设计是一个复杂的优化问题。它需要找到最佳的FA布置和BP位置,以便在满足安全约束的同时获得最大的循环长度。对于PWR和沸水反应堆(BWR)的LP优化,遗传算法(GA)已用于解决此问题。遗传算法是一种随机方法,可与一组解决方案配合使用,并使用随机变量进行决策。根据评估理论,遗传算法涉及自然选择和繁殖种群中的下一代。 GA会通过创建初始总体,对其进行评估,然后使用评估运算符来改善总体来进行工作。为了解决这个优化问题,在本文的框架内,开发了一个LP优化包GARCO(遗传算法反应堆代码优化)代码。该代码适用于所有具有不同几何形状和结构的PWR磁芯,库存中的FA类型不受限制。为了实现此目标,通过修改基因型的经典表示形式开发了创新的遗传算法。为了在更短的时间内获得最佳结果,不仅更改了表示形式,而且还更改了算法以使用核内燃料管理启发式规则。测试了改进的GA代码,以演示和验证新增强功能的优势。本文阐述了所开发的方法,并给出了VVER-1000反应堆六角形几何核和TMI-1 PWR的初步结果。测试了改进的GA代码,以验证新增强功能的优势。这项研究中用于VVER的核心物理代码是Moby-Dick,它是由SKODA Inc.开发来分析VVER的。SIMULATE-3代码是高级的两组节点代码,用于分析TMI-1。 。

著录项

  • 作者

    Alim, Fatih.;

  • 作者单位

    The Pennsylvania State University.;

  • 授予单位 The Pennsylvania State University.;
  • 学科 Engineering Nuclear.
  • 学位 Ph.D.
  • 年度 2006
  • 页码 288 p.
  • 总页数 288
  • 原文格式 PDF
  • 正文语种 eng
  • 中图分类 原子能技术;
  • 关键词

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