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SGSD: A novel Sequential Gamma-ray Spectrum Deconvolution algorithm

机译:SGSD:一种新颖的顺序伽马射线谱去卷积算法

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A novel approach for analyzing complex gamma-ray spectra using a sequential algorithm is introduced. The developed Sequential Gamma-ray Spectrum Deconvolution (SGSD) algorithm produces a sequence of spectra converging to the best estimation of output spectrum of a gamma-ray detector. In each point of sequence, an isotope of unknown gamma-ray source is identified and the respective response of the detector to unknown source is reconstructed. Effectiveness of the developed algorithm is demonstrated by two empirical and simulation studies. In the case of empirical study, a number of recorded gamma-ray spectra related to a mixed gamma-ray source including different combinations of 5 isotopes (Co-60, Cs-137, Na-22, Eu-152 and Am-241) are analyzed using whole information of spectra. Furthermore, a number of simulated gamma-ray spectra related to a mixed gamma-ray source including different combinations of 30 isotopes are analyzed in simulation study. Both man-made and natural radioisotopes like Ba-133, Co-60, Ir-192, Cs-137, K-40, Th-232 series, U-238 series, Ac-227 series, etc. are used for Monte Carlo simulations. The numerical results of the SGSD algorithm are compared with those of the conventional Non-Negative Least Squares (NNLS) algorithm. Based on the results, the identification procedure of the SGSD algorithm has a remarkable superiority over the NNLS algorithm. (C) 2019 Elsevier Ltd. All rights reserved.
机译:介绍了一种使用顺序算法分析复杂伽马射线光谱的新颖方法。发达的顺序伽马射线谱解卷积(SGSD)算法可生成一系列光谱,这些序列会聚到对伽马射线探测器输出光谱的最佳估计。在每个序列点中,识别未知伽马射线源的同位素,并重建检测器对未知源的相应响应。两项经验和仿真研究证明了所开发算法的有效性。在经验研究的情况下,许多记录的与混合伽玛射线源有关的伽玛射线光谱包括5种同位素(Co-60,Cs-137,Na-22,Eu-152和Am-241)的不同组合使用光谱的全部信息进行分析。此外,在模拟研究中分析了与包括30种同位素的不同组合的混合伽马射线源有关的许多模拟伽马射线光谱。蒙特卡洛使用了Ba-133,Co-60,Ir-192,Cs-137,K-40,Th-232系列,U-238系列,Ac-227系列等人造和天然放射性同位素模拟。将SGSD算法的数值结果与常规的非负最小二乘(NNLS)算法进行了比较。根据结果​​,SGSD算法的识别过程比NNLS算法具有明显的优越性。 (C)2019 Elsevier Ltd.保留所有权利。

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