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首页> 外文期刊>International journal of swarm intelligence research >Application of Fireworks Algorithm in Gamma-Ray Spectrum Fitting for Radioisotope Identification
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Application of Fireworks Algorithm in Gamma-Ray Spectrum Fitting for Radioisotope Identification

机译:Fireworks算法在放射性同位素识别的伽马射线谱拟合中的应用

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Identification of radioisotopic signature patterns in gamma-ray spectra is ofparamount importance in various applications of gamma spectroscopy. Therefore, there are several active research efforts to develop accurate and precise methods to perform automated spectroscopic analysis and subsequently recognize gamma-ray signatures. In this work, the authors present anew methodfor radioisotope identification in gamma-ray spectra obtainedwith a low resolution radiation detector. The methodfits the obtained spectrum with a linear combination of known template signature patterns. Coefficients of the linear combination are evaluated by computing the solution of a single objective optimization problem, whose objective is the Theil-1 inequality coefficient. Optimization of the problem is performed by the Fireworks Algorithm, which identifies a set of coefficients that minimize the Theil-1 value. The computed coefficients are statistically tested for being significantly different than zero or not, and if at least one is found to be zero then the Fireworks Algorithm is used to reiterate fitting using the non-zero templates. Fitting iterations are continued up to the point that no linear coefficients are found to be zero. The output of the method is a list that contains the radioisotopes that have been identified in the measured spectrum. The method is tested on a set of both simulated and real experimental gamma-ray spectra comprised of a variety of isotopes, and compared to a multiple linear regression fitting, and genetic algorithm Theil-1 basedfitting. Results demonstrate the potentiality of the Fireworks Algorithm based method, expressed as higher accuracy and similar precision over the other two tested methodologies for radioisotope signature pattern identification in the framework of gamma-ray spectrum fitting.
机译:在伽玛光谱学的各种应用中,对伽马射线光谱中放射性同位素特征码模式的识别至关重要。因此,进行了积极的研究工作,以开发出准确而精确的方法来执行自动光谱分析并随后识别伽玛射线特征。在这项工作中,作者提出了一种用低分辨率辐射探测器获得的伽马射线光谱中放射性同位素鉴定的新方法。该方法用已知模板特征图样的线性组合拟合获得的光谱。通过计算单个目标优化问题的解来评估线性组合的系数,该问题的目标是Theil-1不等式系数。该问题的优化是由Fireworks算法执行的,该算法确定了使Theil-1值最小的一组系数。对计算出的系数进行统计学检验以发现是否显着不同于零,并且如果发现至少一个为零,则使用Fireworks算法使用非零模板来重复拟合。拟合迭代一直进行到没有线性系数为零的程度。该方法的输出是一个列表,其中包含已在测量光谱中识别出的放射性同位素。该方法在一组由多种同位素组成的模拟和实际实验伽玛射线光谱上进行了测试,并与多元线性回归拟合和基于遗传算法Theil-1的拟合进行了比较。结果证明了基于Fireworks算法的方法的潜力,与其他两种在γ射线光谱拟合框架中用于放射性同位素特征码模式识别的测试方法相比,具有更高的准确性和相似的精度。

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