Modeling of the mass attenuation coefficients of X ray beams using deep neural networks (DNN) and NIST database

Gustavo BERNARDES DA SILVA, Viviane RODRIGUES BOTELHO, Carla Diniz Lopes Becker, Cassiana Viccari, Thatiane A. Pianoschi
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Abstract

Attenuation coefficients are essential physical parameters for many applications, such as the calculation of photon penetration and energy deposition to evaluate biological shielding. Estimating these parameters is complex, making it necessary to apply more sophisticated methodologies. The objective of the present study was to propose a model for estimating the attenuation coefficients using artificial neural networks. The NIST database was used to estimate the attenuation coefficients in terms of energy and atomic number from a regression problem using two approaches: the proposition of an automated model using the framework Talos and a manual model using Keras. The characteristics of the best model proposed in Talos were applied in manual training via Keras with cross-validation to evaluate the learning curves. The following were also assessed: the comparison of the curves of the attenuation coefficients predicted by the model compared with the reference data and the general comparison of the vectors X and y of the two models discussed. The Talos framework reference model obtained the following values ​​of Loss and MSE error metric: 0.13 and 0.037, respectively. The best model of the manual approach received the following results: 0.19 and 0.08 for the loss function and MSE error metric, respectively. The absolute percentage error (MAE) of the difference in the results between the two models was: 0.065 and 0.044 for the Loss and MSE metrics. Despite applying two distinct propositions, both models had the same difficulties in predicting discontinuities in the physical behavior associated with the attenuation coefficients.
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利用深度神经网络 (DNN) 和 NIST 数据库建立 X 射线光束质量衰减系数模型
衰减系数是许多应用中的基本物理参数,例如计算光子穿透和能量沉积以评估生物屏蔽。估算这些参数非常复杂,因此有必要采用更复杂的方法。本研究的目的是提出一种利用人工神经网络估算衰减系数的模型。研究人员使用 NIST 数据库,通过两种方法从回归问题中估算出能量和原子序数方面的衰减系数:一种是使用 Talos 框架提出自动模型,另一种是使用 Keras 提出人工模型。Talos 中提出的最佳模型的特征被应用于通过 Keras 进行交叉验证的手动训练,以评估学习曲线。此外,还对以下方面进行了评估:模型预测的衰减系数曲线与参考数据的比较,以及两个模型的向量 X 和 y 的总体比较。Talos 框架参考模型的损失和 MSE 误差指标值分别为 0.13 和 0.037。人工方法的最佳模型得到了以下结果:损失函数和 MSE 误差指标分别为 0.19 和 0.08。两个模型结果差异的绝对百分比误差(MAE)分别为:损失和 MSE 指标分别为 0.065 和 0.044。尽管采用了两种不同的命题,但这两种模型在预测与衰减系数相关的物理行为的不连续性时都遇到了同样的困难。
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