The study of a neutron spectrum unfolding method based on particle swarm optimization combined with maximum likelihood expectation maximization

被引:0
作者
Hong-Fei Xiao
Qing-Xian Zhang
He-Yi Tan
Bin Shi
Jun Chen
Zhi-Qiang Cheng
Jian Zhang
Rui Yang
机构
[1] Chengdu University of Technology,Applied Nuclear Technology in Geosciences Key Laboratory of Sichuan Province
[2] China Institute of Atomic Energy,National Key Laboratory for Metrology and Calibration Techniques
来源
Nuclear Science and Techniques | 2023年 / 34卷
关键词
Particle swarm optimization; Maximum likelihood expectation maximization; Neutron spectrum unfolding; Bonner spheres spectrometer; Monte Carlo method;
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学科分类号
摘要
The neutron spectrum unfolding by Bonner sphere spectrometer (BSS) is considered a complex multidimensional model, which requires complex mathematical methods to solve the first kind of Fredholm integral equation. In order to solve the problem of the maximum likelihood expectation maximization (MLEM) algorithm which is easy to suffer the pitfalls of local optima and the particle swarm optimization (PSO) algorithm which is easy to get unreasonable flight direction and step length of particles, which leads to the invalid iteration and affect efficiency and accuracy, an improved PSO-MLEM algorithm, combined of PSO and MLEM algorithm, is proposed for neutron spectrum unfolding. The dynamic acceleration factor is used to balance the ability of global and local search, and improves the convergence speed and accuracy of the algorithm. Firstly, the Monte Carlo method was used to simulated the BSS to obtain the response function and count rates of BSS. In the simulation of count rate, four reference spectra from the IAEA Technical Report Series No. 403 were used as input parameters of the Monte Carlo method. The PSO-MLEM algorithm was used to unfold the neutron spectrum of the simulated data and was verified by the difference of the unfolded spectrum to the reference spectrum. Finally, the 252Cf neutron source was measured by BSS, and the PSO-MLEM algorithm was used to unfold the experimental neutron spectrum. Compared with maximum entropy deconvolution (MAXED), PSO and MLEM algorithm, the PSO-MLEM algorithm has fewer parameters and automatically adjusts the dynamic acceleration factor to solve the problem of local optima. The convergence speed of the PSO-MLEM algorithm is 1.4 times and 3.1 times that of the MLEM and PSO algorithms. Compared with PSO, MLEM and MAXED, the correlation coefficients of PSO-MLEM algorithm are increased by 33.1%, 33.5% and 1.9%, and the relative mean errors are decreased by 98.2%, 97.8% and 67.4%.
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