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Comparison of theoretical and machine learning models to estimate gamma ray source positions using plastic scintillating optical fiber detector

机译:用塑料闪烁光纤检测器估算伽马射线源位置的理论与机器学习模型的比较

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摘要

In this study, one-dimensional gamma ray source positions are estimated using a plastic scintillating optical fiber, two photon counters and via data processing with a machine learning algorithm. A nonlinear regression algorithm is used to construct a machine learning model for the position estimation of radioactive sources. The position estimation results of radioactive sources using machine learning are compared with the theoretical position estimation results based on the same measured data. Various tests at the source positions are conducted to determine the improvement in the accuracy of source position estimation. In addition, an evaluation is performed to compare the change in accuracy when varying the number of training datasets. The proposed one-dimensional gamma ray source position estimation system with plastic scintillating fiber using machine learning algorithm can be used as radioactive leakage scanners at disposal sites.
机译:在该研究中,使用塑料闪烁光纤,两个光子计数器和具有机器学习算法的数据处理来估计一维伽马射线源位置。 非线性回归算法用于构建用于放射源位置估计的机器学习模型。 基于相同的测量数据将使用机器学习的放射源的位置估计结果与理论位置估计结果进行比较。 进行源位置的各种测试以确定源位置估计的精度的提高。 另外,执行评估以在改变训练数据集的数量时比较精度的改变。 使用机器学习算法的具有塑料闪烁纤维的提出的一维伽马射线源位置估计系统可用作处置场地的放射性泄漏扫描仪。

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