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MOOGLE: A Multi-Objective Optimization tool for three-dimensional nuclear fuel assembly design

机译:MOOGLE:用于三维核燃料组件设计的多目标优化工具

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摘要

MOOGLE is a new genetic algorithm based methodology for the 3D design of nuclear fuel assemblies. MOOGLE uses common fuel rod types as the decision variable to develop a suite of 3D fuel assemblies to provide optimized solutions to the design problem. Pressurized water reactor (PWR) fuel assemblies were optimized using Integral Fuel Burnable Absorber (IFBA) and gadolinium (Gd_2O_3) as burnable poisons to compare how burnable poison choice affects optimization results. Boiling water reactor (BWR) fuel bundles were also optimized using three unique fuel rod palettes to study how the size of the design space affects optimization results. Burnable poison analysis showed that utilizing IFBA and Gd_2O_3 as burnable poisons produced the best and widest range of optimized solutions. BWR fuel bundle optimization results indicate that the inclusion of additional fuel rod types produced a wider solution space but did not improve optimization results for regions explored using fewer unique fuel rods. These tests demonstrate MOOGLE's ability to analyze the trade-offs between the inclusion of different fuel elements and their effects on assembly performance.
机译:MOOGLE是一种新的基于遗传算法的核燃料组件3D设计方法。MOOGLE使用常见的燃料棒类型作为决策变量来开发一套3D燃料组件,为设计问题提供优化的解决方案。使用整体燃料可燃吸收器(IFBA)和钆(Gd_2O_3)作为可燃毒物对压水堆(PWR)燃料组件进行优化,以比较可燃毒物的选择如何影响优化结果。沸水堆 (BWR) 燃料束还使用三个独特的燃料棒调色板进行了优化,以研究设计空间的大小如何影响优化结果。可燃毒物分析表明,利用IFBA和Gd_2O_3作为可燃毒物可产生最佳和最广泛的优化解决方案。BWR燃料束优化结果表明,包含额外的燃料棒类型产生了更宽的求解空间,但并没有改善使用较少的独特燃料棒探索的区域的优化结果。这些测试证明了 MOOGLE 能够分析包含不同燃料元件及其对装配性能的影响之间的权衡。

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