Research on a Monte Carlo global variance reduction method based on an automatic importance sampling method

Yi-Sheng Hao,Zhen Wu, Shen-Shen Gao, Rui Qiu, Hui Zhang, Jun-Li Li

Nuclear Science and Techniques(2024)

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摘要
Global variance reduction is a bottleneck in Monte Carlo shielding calculations.The global variance reduction problem requires that the statistical error of the entire space is uniform.This study proposed a grid-AIS method for the global variance reduction problem based on the AIS method,which was implemented in the Monte Carlo program MCShield.The proposed method was validated using the VENUS-Ⅲ international benchmark problem and a self-shielding calculation example.The results from the VENUS-Ⅲ benchmark problem showed that the grid-AIS method achieved a significant reduction in the variance of the statistical errors of the MESH grids,decreasing from 1.08 × 10-2 to 3.84 × 10-3,representing a 64.00%reduction.This demonstrates that the grid-AIS method is effective in addressing global issues.The results of the self-shielding calculation demonstrate that the grid-AIS method produced accurate computational results.Moreover,the grid-AIS method exhibited a computational efficiency approximately one order of magnitude higher than that of the AIS method and approximately two orders of magnitude higher than that of the conventional Monte Carlo method.
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关键词
Monte Carlo,Global variance reduction,Reactor shielding,Automatic importance sampling
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