Research on Monte Carlo Global Variance Reduction Method Combining Source Bias and Weight Window

Author:

Zhang Xian ,Liu Shi-Chang ,Wei Jun-Xia ,Li Shu ,Wang Xin ,Shangguan Dan-Hua , , ,

Abstract

The global tally problem has a wide range of application scenarios in major research fields such as Monte Carlo simulations of pin-by-pin reactor models and time-dependent particle transport problems in multiphysics coupling calculations. Due to the uneven power distribution of the simulated system, the statistical errors of all tallies are unevenly distributed, which leads to some low global efficiency. For this kind of problem with global characteristics, it is necessary to develop global variance reduction techniques to accurately obtain the distribution of target tallies in the entire space. A large number of global variance reduction algorithms have been studied based on the consideration of flattening global tally error distribution, so as to improve global efficiency. This work focuses on the combination of two efficient global variance reduction algorithms, namely, the uniform tally density algorithm and the weight window algorithm which belongs to source bias and transport process bias, respectively. In total, a method is proposed to adjust the weight window parameters using the bias factor of the uniform tally density algorithm. Then, the weight window method will be used to reduce the weight fluctuation caused by the uniform tally density method. 12 By this way, an organic combination of these two algorithms can be realized. A series of comparative tests are carried out based on the Hoogenboom-Martin pressurized water reactor benchmark, and it is verified that the hybrid global variance reduction algorithm proposed in this paper is better than the single weight window algorithm or the uniform tally density algorithm. In terms of reducing the maximum error, the global efficiency of the hybrid algorithm is 2.6 times and 3 times that of the weight window algorithm and the uniform tally density algorithm, respectively. In addition, through comparative analysis of computational asymmetry degree and computational efficiency, it is verified that the uniform tally density algorithm has better performance than the classical uniform fission site algorithm, and the performance advantages of the uniform tally density algorithm are quantitatively evaluated based on some new indicators. The results show that the hybrid global variance reduction algorithm proposed in this paper can solve the global tally problem efficiently, further promoting research in related fields.

Publisher

Acta Physica Sinica, Chinese Physical Society and Institute of Physics, Chinese Academy of Sciences

Subject

General Physics and Astronomy

Reference20 articles.

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