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首页> 外文期刊>Annals of nuclear energy >Optimization studies of fuel loading pattern for a typical Pressurized Water Reactor (PWR) using particle swarm method
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Optimization studies of fuel loading pattern for a typical Pressurized Water Reactor (PWR) using particle swarm method

机译:典型压水堆(PWR)的粒子群优化研究。

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摘要

A three dimensional multi-energy group computer model PRISHA, which solves the neutron diffusion equations using finite difference method is developed for Pressurized Water Reactor (PWR). This computer code can find an optimum loading of a group of fresh fuel assemblies along with fuel assemblies of different exposures. The successive line over relaxation (SLOR) method is used to solve neutron diffusion equations. After validation of this part of computer code against an IAEA - PWR benchmark problem with 177 fuel assemblies in the core, particle swarm optimization (PSO) method is incorporated in the code for finding the optimum fuel loading pattern. A typical PWR core with 157 fuel assemblies, where 289 fuel pins are arranged in 17 × 17 rectangular arrays in a fuel assembly, was analyzed using this computer model for two cycles using PSO method. Different numbers of particles and iterations were used in PSO method. The results are found to be not very sensitive to either the number of particles or the number of iterations used in PSO method for considered case. However, a number of experiments have to be performed to arrive at the best global fitness parameter. Reasonably low power peaking factors were obtained for both the cycles.
机译:为压水堆(PWR)开发了三维多能群计算机模型PRISHA,该模型利用有限差分法求解中子扩散方程。该计算机代码可以找到一组新鲜燃料组件以及不同暴露程度的燃料组件的最佳负载。连续线弛豫(SLOR)方法用于求解中子扩散方程。针对核心部分具有177个燃料组件的IAEA-PWR基准测试问题验证了这部分计算机代码之后,代码中包含了粒子群优化(PSO)方法,以找到最佳的燃料装载模式。使用此计算机模型,使用PSO方法分析了一个典型的PWR堆芯,该堆具有157个燃料组件,其中289个燃料销按17×17矩形阵列排列在一个燃料组件中,进行了两个循环。在PSO方法中使用了不同数量的粒子和迭代。对于所考虑的情况,发现结果对PSO方法中使用的粒子数或迭代数不是很敏感。但是,必须执行许多实验才能获得最佳的全局适应性参数。在两个周期中均获得了合理的低功率峰值因数。

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