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Radiation Source Localization Using Surrogate Models Constructed from 3-D Monte Carlo Transport Physics Simulations

机译:使用由3-D Monte Carlo运输物理模拟构建的代理模型的辐射源定位

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摘要

Recent research has focused on the development of surrogate models for radiation source localization in a simulated urban domain. We employ the Monte Carlo N-Particle (MCNP) code to provide high-fidelity simulations of radiation transport within an urban domain. The model is constructed to employ a source location (x,y, z) as input and return the estimated count rate for a set of specified detector locations. Because MCNP simulations are computationally expensive, we develop efficient and accurate surrogate models of the detector responses. We construct surrogate models using Gaussian processes and neural networks that we train and verify using the MCNP simulations. The trained surrogate models provide an efficient framework for Bayesian inference and experimental design. We employ Delayed Rejection Adaptive Metropolis (DRAM), a Markov Chain Monte Carlo algorithm, to infer the location and intensity of an unknown source. The DRAM results yield a posterior probability distribution for the source s location conditioned on the observed detector count rates. The posterior distribution exhibits regions of high and low probability within the simulated environment identifying potential source locations. In this manner, we can quantify the source location to within at least one of these regions of high probability in the considered cases. Employing these methods, we are able to reduce the space of potential source locations by at least 60%.
机译:最近的研究专注于模拟城市域中辐射源定位的替代模型的发展。我们采用Monte Carlo N粒子(MCNP)代码来提供城市领域内的辐射运输的高保真模拟。该模型被构造为使用源位置(x,y,z)作为输入,并返回一组指定的检测器位置的估计计数率。因为MCNP模拟是计算昂贵的,所以我们开发了探测器响应的高效准确的代理模型。我们使用高斯进程和使用MCNP模拟进行培训和验证的神经网络构建代理模型。训练有素的代理模型为贝叶斯推理和实验设计提供了一种有效的框架。我们采用延迟拒绝自适应大都市(DRAM),马尔可夫链蒙特卡罗算法,推断未知来源的位置和强度。 DRAM结果为观察到的探测器计数速率的源S位置产生后验概率分布。后部分布在识别潜在源位置的模拟环境内显示出高且低概率的区域。以这种方式,我们可以将源位置量化到所考虑的情况下的高概率中的至少一个内。采用这些方法,我们能够将潜在源位置的空间减少至少60%。

著录项

  • 来源
    《Nuclear Technology》 |2021年第1期|37-53|共17页
  • 作者单位

    North Carolina State University Department of Mathematics Raleigh North Carolina 27695;

    North Carolina State University Department of Mathematics Raleigh North Carolina 27695;

    University of Michigan Department of Nuclear Engineering and Radiological Sciences Ann Arbor Michigan 48109;

    University of Michigan Department of Nuclear Engineering and Radiological Sciences Ann Arbor Michigan 48109;

    University of Michigan Department of Nuclear Engineering and Radiological Sciences Ann Arbor Michigan 48109;

    North Carolina State University Department of Nuclear Engineering Raleigh North Carolina 27695;

    North Carolina State University Department of Mathematics Raleigh North Carolina 27695;

  • 收录信息 美国《科学引文索引》(SCI);美国《工程索引》(EI);美国《生物学医学文摘》(MEDLINE);
  • 原文格式 PDF
  • 正文语种 eng
  • 中图分类
  • 关键词

    Radiation detection; inverse problem; Bayesian inference; MCNP; surrogate modeling;

    机译:辐射检测;反问题;贝叶斯推理;MCNP;代理建模;

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