使用热释光剂量计估算个人剂量当量的多阶段机器学习算法

M. Pathan, Suresh M Pradhan, T. P. Selvam, Balvinder Kaur Sapra
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摘要

当今时代,以数据驱动的各领域进步为标志,机器学习的重要性占据了突出位置。机器学习算法能够解析复杂的模式,并从大型数据集中提取深刻的见解,这巩固了其在各个科学领域的变革潜力。本文介绍了机器学习技术在辐射剂量测定领域的创新应用。具体来说,它展示了机器学习在估算职业工作者所受辐射剂量方面的适用性。这种估算以个人剂量当量表示,涉及利用基于 CaSO4:Dy 的人员监测徽章发出的热释光信号。为了估算个人剂量当量,我们提出了由机器学习模型驱动的三阶段算法。该算法系统地识别光子能量范围、计算平均光子能量并确定个人剂量当量。通过在传统的三元素剂量计上采用这种方法,该研究克服了现有的局限性,提高了剂量估算的准确性。该算法在辨别光子能量范围方面的分类准确率达到 97.8%,在估算平均光子能量方面的决定系数达到 0.988。重要的是,与现有算法相比,该算法还将估计个人剂量当量的相对偏差系数降低了 6%。这项研究提高了使用传统热释光剂量计徽章评估职业工人辐照的准确性,并建立了一种新的方法。
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A Multi-Stage Machine Learning Algorithm for Estimating Personal Dose Equivalent using Thermoluminescent Dosimeter
In the present age, marked by data-driven advancements in various fields, the importance of machine learning holds a prominent position. The ability of machine learning algorithms to resolve complex patterns and extract insights from large datasets has solidified its transformative potential in various scientific domains. This paper introduces an innovative application of machine learning techniques in the domain of radiation dosimetry. Specifically, it shows the applicability of machine learning in estimating the radiation dose received by occupational workers. This estimation is expressed in terms of personal dose equivalent, and it involves the utilization of thermoluminescence signals emitted by CaSO4:Dy–based personnel monitoring badges. To estimate personal dose equivalent, three-stage algorithm driven by machine learning models is proposed. This algorithm systematically identifies the photon energy ranges, calculates the average photon energy, and determines personal dose equivalent. By implementing this approach to the conventional three-element dosimeter, the study overcomes existing limitations and enhances accuracy in dose estimation. The algorithm demonstrates 97.8% classification accuracy in discerning photon energy ranges and achieves a coefficient of determination of 0.988 for estimating average photon energy. Importantly, it also reduces the coefficient of variation of relative deviations by up to 6% for estimated personal dose equivalent, compared to existing algorithms. The study improves accuracy and establishes a new methodology for evaluating radiation exposure to occupational workers using conventional thermoluminescent dosimeter badge.
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