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首页> 外文期刊>Nuclear Instruments & Methods in Physics Research. Section A, Accelerators, Spectrometers, Detectors and Associated Equipment >Quantitative analysis of Nal(Tl) gamma-ray spectrometry using an artificial neural network
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Quantitative analysis of Nal(Tl) gamma-ray spectrometry using an artificial neural network

机译:使用人工神经网络对Nal(Tl)γ射线光谱法进行定量分析

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In this manuscript, we propose an algorithm based on an artificial neural network (ANN) for the analysis of the NaI(Tl) gamma-ray spectra with radioisotope (RI) mixtures to identify RIs and determine the relative activity levels of the identified RIs. The ANN was trained based on the spectra that were generated by synthesizing previously identified spectra from single RIs, considering the characteristics of the measurement environments, such as gain shift effects and statistical fluctuations in the spectrum. The proposed ANN was evaluated through several measured spectra that contained up to six certified reference materials for a quantitative analysis. We also evaluated the shift in the spectra due to temperature variations in the range of 0-50 degrees C and the low-count spectra with a one-second acquisition period. These results were compared with those from an ANN trained through simulated spectra to emphasize the importance of acquiring a high-quality training dataset. In addition, we show that complex low-resolution spectra can be accurately analyzed with the proposed ANN under various scenarios, in which the maximum root mean square error was found to be 2.8%.
机译:在此手稿中,我们提出了一种基于人工神经网络(ANN)的算法,用于分析具有放射性同位素(RI)混合物的NaI(Tl)伽玛射线谱,以识别RI并确定已识别RI的相对活性水平。考虑到测量环境的特性(例如增益漂移效应和频谱中的统计波动),基于通过从单个RI合成先前识别的光谱而生成的光谱对ANN进行了训练。拟议的人工神经网络通过几个测得的光谱进行了评估,其中包含多达六种经认证的参考物质,用于定量分析。我们还评估了由于温度变化(在0-50摄氏度范围内)和具有一秒钟采集周期的低计数光谱导致的光谱偏移。将这些结果与通过模拟光谱训练的ANN的结果进行比较,以强调获取高质量训练数据集的重要性。此外,我们表明,所提出的人工神经网络可以在各种情况下准确地分析复杂的低分辨率光谱,其中最大均方根误差为2.8%。

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