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Application of support vector regression in removing Poisson fluctuation from pulse height gamma-ray spectra

机译:支持向量回归在脉冲高度伽马射线光谱中移除泊松波动时的应用

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Analysis of pulse height gamma-ray signals is crucial in a variety of applications regarding safeguards and homeland security. Because of the inherent random nature of radiation measurements, the spectra obtained from gamma-ray sources exhibit a high variance that can be modeled as Poisson fluctuation. This variance imposes serious difficulties to spectrum analysis and isotope identification algorithms. To that end, artificial intelligence offers a variety of tools for automated, accurate, and the fast processing of gamma-ray signals. This paper discusses the use of a support vector regression (SVR) based methodology for removing Poisson fluctuation from pulse height radiation spectra. The proposed methodology utilizes an interval based smoothing of the spectrum and subsequently suppresses the variance. Methodology performance is tested on gamma-ray spectra taken with a low-resolution sodium iodide detector having a length of 1024 bins. Furthermore, this SVR technique is benchmarked against the 3-point and 7-point simple moving average methods. The results of this benchmarking demonstrate the effectiveness of the proposed methodology in removing Poisson fluctuation over the other methods tested.
机译:脉冲高度伽马射线信号的分析对于关于保障和国土安全的各种应用是至关重要的。由于辐射测量的固有随机性,从伽马射源获得的光谱表现出高方差,可以以泊松波动为模拟。这种方差对频谱分析和同位素识别算法施加了严重的困难。为此,人工智能提供了各种用于自动化,准确,以及伽马射线信号的快速处理的工具。本文讨论了基于支持向量(SVR)的方法,用于从脉冲高度辐射光谱去除泊松波动。所提出的方法利用基于间隔的频谱平滑,随后抑制方差。在用长度为1024箱的低分辨率碘化钠检测器拍摄的γ射线光谱上测试方法性能。此外,该SVR技术与三点和7点简单的移动平均方法基准测试。该基准测试的结果证明了所提出的方法在检测到的其他方法上除去泊松波动的有效性。

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