首页> 外文期刊>Radiation Protection Dosimetry >FEASIBILITY STUDY ON THE FUSION OF PHITS SIMULATIONS AND THE DLNN ALGORITHM FOR A NEW QUANTITATIVE METHOD OF IN-SITU MULTIPLE-CHANNEL DEPTH DISTRIBUTION SPECTROMETRY
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FEASIBILITY STUDY ON THE FUSION OF PHITS SIMULATIONS AND THE DLNN ALGORITHM FOR A NEW QUANTITATIVE METHOD OF IN-SITU MULTIPLE-CHANNEL DEPTH DISTRIBUTION SPECTROMETRY

机译:现场多通道深度分布谱定量新方法的光子模拟融合与DLNN算法的可行性研究

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摘要

We have recently have developed an in-situ multiple-channel depth distribution spectrometer (DDS) that can easily acquire on-site measurements of the depth distribution of specific radioactivities of Cs-134 and Cs-137 underground. Despite considerable improvements in the hardware developed for this device, the quantitative method for determining of radioactivities with this DDS device cannot yet achieve satisfactory performance for practical use. For example, this method cannot discriminate each gamma-ray spectra of Cs-134 and Cs-137 acquired by the 20 thallium-doped caesium iodine CsI(Tl) scintillation crystal detectors of the DDS device from corresponding depth levels of underground soil. Therefore, we have applied deep learning neural network (DLNN) as a novel radiation measurement technique to discriminate the spectra and to determine the specific radioactivities of Cs-134 and Cs-137. We have developed model soil layers on a virtual space in Monte-Carlo based PHITS simulations and transported gamma-ray radiation generated from a particular single soil layer or multiple layers as radiation sources; next, we performed PHITS calculations of those specific radioactivity measurements for each soil layer using DDS device based on machine learning via the DLNN algorithm. In this study, we obtained informative results regarding the feasibility of the proposal innovative radiation measurement method for further practical use in on-site applications.
机译:我们最近开发了一种现场多通道深度分布光谱仪(DDS),可以轻松地获取Cs-134和Cs-137地下特定放射性活度的深度分布的现场测量结果。尽管为此设备开发的硬件有了相当大的改进,但使用此DDS设备确定放射性的定量方法仍无法获得令人满意的实用性能。例如,该方法不能从DDS设备的20个掺-铯碘CsI(Tl)闪烁晶体检测器获得的Cs-134和Cs-137的每个伽玛射线光谱与地下土壤的相应深度进行区分。因此,我们已经将深度学习神经网络(DLNN)作为一种新颖的辐射测量技术来区分光谱并确定Cs-134和Cs-137的比放射性。我们已经在基于Monte-Carlo的PHITS模拟中的虚拟空间上开发了模型土壤层,并传输了从特定的单个土壤层或多层作为辐射源产生的伽马射线辐射;接下来,我们使用DDS设备基于DLNN算法基于机器学习对每个土壤层进行了特定放射性测量的PHITS计算。在这项研究中,我们获得了有关提议的创新辐射测量方法在现场应用中进一步实际应用的可行性的有益信息。

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