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Neutron spectrum unfolding using genetic algorithm in a Monte Carlo simulation

机译:蒙特卡罗模拟中使用遗传算法的中子谱展开

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摘要

A spectrum unfolding technique GAMCD (Genetic Algorithm and Monte Carlo based spectrum Deconvolution) has been developed using the genetic algorithm methodology within the framework of Monte Carlo simulations. Each Monte Carlo history starts with initial solution vectors (population) as randomly generated points in the hyper dimensional solution space that are related to the measured data by the response matrix of the detection system. The transition of the solution points in the solution space from one generation to another are governed by the genetic algorithm methodology using the techniques of cross-over (mating) and mutation in a probabilistic manner adding new solution points to the population. The population size is kept constant by discarding solutions having lesser fitness values (larger differences between measured and calculated results). Solutions having the highest fitness value at the end of each Monte Carlo history are averaged over all histories to obtain the final spectral solution. The present method shows promising results in neutron spectrum unfolding for both under-determined and over-determined problems with simulated test data as well as measured data when compared with some existing unfolding codes. An attractive advantage of the present method is the independence of the final spectra from the initial guess spectra.
机译:频谱展开技术GAMCD(基于遗传算法和基于蒙特卡洛的频谱去卷积)已经在蒙特卡洛模拟的框架内使用遗传算法方法进行了开发。每个蒙特卡洛历史记录都以初始解矢量(种群)作为超维解空间中随机生成的点开始,这些点与检测系统的响应矩阵与测量数据有关。遗传算法方法通过使用交叉(交配)和突变技术,以概率方式通过遗传算法来控制求解空间中求解点从一代到另一代的过渡,从而为种群增加新的求解点。通过丢弃适应性值较小(测量结果与计算结果之间的差异较大)的解决方案,可将种群数量保持恒定。在每个蒙特卡洛历史的末尾,具有最高适用性值的解决方案将在所有历史上进行平均,以获得最终的频谱解决方案。当与一些现有的展开代码相比时,本方法在模拟测试数据以及测量数据的未定和超定问题中均显示出中子谱展开的可喜结果。本方法的一个吸引人的优点是最终光谱与初始猜测光谱的独立性。

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