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基于蒙卡模拟能量响应的CLYC探测器γ能谱解析方法

李宇浩 郑洪龙 庹先国 贺平 魏世平 杨剑波 王朝林 李宇航 余佳佳 邓淇元

李宇浩, 郑洪龙, 庹先国, 等. 基于蒙卡模拟能量响应的CLYC探测器γ能谱解析方法[J]. 强激光与粒子束. doi: 10.11884/HPLPB202638.250242
引用本文: 李宇浩, 郑洪龙, 庹先国, 等. 基于蒙卡模拟能量响应的CLYC探测器γ能谱解析方法[J]. 强激光与粒子束. doi: 10.11884/HPLPB202638.250242
Li Yuhao, Zheng Honglong, Tuo Xianguo, et al. Gamma spectrum analysis method for CLYC detectors based on Monte Carlo-simulated energy response[J]. High Power Laser and Particle Beams. doi: 10.11884/HPLPB202638.250242
Citation: Li Yuhao, Zheng Honglong, Tuo Xianguo, et al. Gamma spectrum analysis method for CLYC detectors based on Monte Carlo-simulated energy response[J]. High Power Laser and Particle Beams. doi: 10.11884/HPLPB202638.250242

基于蒙卡模拟能量响应的CLYC探测器γ能谱解析方法

doi: 10.11884/HPLPB202638.250242
基金项目: 国家自然科学基金项目(42204179, 42374227); 四川省科技计划项目(2024NSFSC1358); 核测量方法与智能装备“652”科研创新团队项目(SUSE652A001)
详细信息
    作者简介:

    李宇浩,liyuhaosuse@163.com

    通讯作者:

    郑洪龙,zhenghlswust@126.com

  • 中图分类号: TL81

Gamma spectrum analysis method for CLYC detectors based on Monte Carlo-simulated energy response

  • 摘要: 对于能量分辨能力不足的探测器,能谱解析工作能够提高核素识别和活度计算的准确度。CLYC探测器以其能够同时探测中子和γ光子的优点被广泛应用于中子-光子双模探测领域中,其能量分辨能力与高纯锗、碲锌镉等半导体探测器相比相对较差,在复杂的辐射环境中难以保证对γ能谱的分析精度。采用蒙特卡罗方法计算CLYC探测器的γ能量响应函数,并通过插值法构建探测器的能量响应矩阵,利用极大似然期望最大化算法(MLEM)进行γ能谱解析。选取0~3 MeV的能量区间,每间隔0.05 MeV计算一个响应函数,利用插值算法构建了CLYC探测器对γ射线的高精度响应矩阵,并结合MLEM算法对226Ra能谱、60Co - 137Cs混合能谱以及152Eu复杂能谱进行解谱验证,对特征峰面积进行了定量计算。结果表明:该方法能够有效克服探测器能量分辨率的限制,解谱后特征峰位清晰,复杂能谱中的重峰区域实现了有效分离,特征峰面积计算结果稳定,清晰反映了入射γ射线的能量和强度信息,提高了能谱分析的精度。
  • 图  1  两个模拟响应函数之间的插值方法

    Figure  1.  Interpolation method between two simulated response functions

    图  2  CLYC能谱解析工作流程

    Figure  2.  CLYC detector energy spectrum analysis process

    图  3  CLYC能谱测量实验

    Figure  3.  CLYC detector energy spectrum measurement experiment

    图  4  60Co - 137Cs混合源及226Ra能谱图

    Figure  4.  Gamma-ray spectrum of 60Co - 137Cs mixed source and 226Ra source

    图  5  CLYC探测器MCNP模型

    Figure  5.  MCNP model of the CLYC detector

    图  6  CLYC探测器对γ射线的能量响应

    Figure  6.  Energy response of CLYC detectors to gamma rays

    图  7  CLYC探测器对γ射线的响应矩阵R

    Figure  7.  Energy response matrix of CLYC detectors to gamma rays

    图  8  不同迭代次数下的解谱对比

    Figure  8.  Comparison of spectrum unfolding results under different iteration counts

    图  9  60Co - 137Cs混合源3000次迭代解谱对比

    Figure  9.  Spectrum unfolding at 3000 iterations of 60Co - 137Cs mixed source

    图  10  152Eu复杂γ能谱解析结果

    Figure  10.  Unfolding results of the complex 152Eu γ-ray spectrum

    图  11  特征峰面积随迭代次数的变化曲线

    Figure  11.  Variation of characteristic peak area with the number of iterations

    表  1  解谱结果

    Table  1.   Results of energy spectrum interpretation

    energy/
    MeV
    experimental
    FWHM/MeV
    analytical
    FWHM/MeV
    experimental
    channel
    analytical
    channel
    experimental
    resolution/%
    analytical
    resolution/%
    relative
    improvement/%
    0.196 0.02387 0.00581 66 65 12.17 2.97 75.60
    0.295 0.02855 0.01565 93 95 9.68 5.31 45.18
    0.386 0.03912 0.00965 124 122 10.13 2.50 75.33
    0.647 0.06931 0.01098 213 212 10.71 1.70 83.25
    0.662 0.07012 0.01525 223 224 10.59 2.30 78.25
    1.173 0.07939 0.05184 390 390 6.77 4.42 34.70
    1.332 0.08402 0.05149 446 445 6.31 3.87 38.72
    下载: 导出CSV

    表  2  不同迭代次数下的峰面积计算结果

    Table  2.   Calculation results of peak areas at different numbers of iterations

    iterations energy/MeV
    0.196 0.295 0.386 0.647 0.662 1.173 1.332
    50 14056 / 34385 26088 128649 473261 478623
    100 13397 11399 24484 25572 143790 479086 493475
    500 12312 13905 23123 25062 146766 476543 508245
    1000 12227 14195 23157 24976 145330 478110 506116
    2000 12128 14052 23225 24891 144097 480865 497697
    3000 12114 14005 23282 24857 143585 491375 490585
    4000 12103 13982 23314 24835 143322 491351 491791
    下载: 导出CSV
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出版历程
  • 收稿日期:  2025-07-29
  • 修回日期:  2026-01-23
  • 录用日期:  2026-01-09
  • 网络出版日期:  2026-02-27

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