首页> 外文期刊>Nuclear Instruments & Methods in Physics Research. Section A, Accelerators, Spectrometers, Detectors and Associated Equipment >Unfolding of fast neutron spectra by superheated drop detectors using Adaptive Network-Based Fuzzy Inference System (ANFIS)
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Unfolding of fast neutron spectra by superheated drop detectors using Adaptive Network-Based Fuzzy Inference System (ANFIS)

机译:使用基于自适应网络的模糊推理系统(ANFIS),通过过热液滴探测器对快速中子光谱进行展开

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ANFIS (Adaptive Network-Based Fuzzy Inference System) was utilized for fast neutron spectrometry using responses of a set of superheated drop detectors under different external pressures (different response functions). The designed ANFIS with the best performance was trained and tested by a set of neutron spectra and corresponding detector readings. The neutron spectra were the target data for the ANFIS and the corresponding responses of five superheated drop detectors were the input data. 90% of input and corresponding target data were used for training and the rest for testing. Hybrid algorithm was used for the training phase. Two methods for construction of the rules structure and various membership function types were investigated. It was observed that "fuzzy clustering" was preferable due to fewer rules and shorter training time. Also, Gaussian membership function showed better performance in comparison with triangular and trapezoidal shape membership functions. The number of input membership functions was optimized by trial and error process. Finally, the optimized ANFIS based on fuzzy clustering method was trained to unfold three spectra measured by other researchers which were Am-241-Be neutron source, high energy reference spectrum measured at PSI and fusion environment spectrum. These three spectra were not in the train set. Root Mean of Squared Errors (RMSEs) less than 0.026 and unfolded to original total fluence ratios near to one, were in agreement with the results reported by other researchers. The results showed that the ANFIS can be considered as a new and efficient method for fast neutron spectrum unfolding.
机译:ANFIS(基于自适应网络的模糊推理系统)用于快速中子光谱分析,该方法使用了一组在不同外部压力(不同的响应函数)下的过热液滴检测器的响应。设计的具有最佳性能的ANFIS经过一组中子光谱和相应的探测器读数的训练和测试。中子光谱是ANFIS的目标数据,五个过热液滴探测器的相应响应是输入数据。 90%的输入数据和相应的目标数据用于培训,其余部分用于测试。混合算法用于训练阶段。研究了构建规则结构和各种隶属函数类型的两种方法。观察到“模糊聚类”是优选的,这是因为更少的规则和较短的训练时间。此外,与三角形和梯形形状隶属度函数相比,高斯隶属度函数表现出更好的性能。通过尝试和错误过程优化了输入隶属函数的数量。最后,对基于模糊聚类的优化ANFIS进行了训练,以展示其他研究人员测得的三个光谱,即Am-241-Be中子源,在PSI测得的高能参考光谱和聚变环境光谱。这三个光谱不在训练集中。均方根误差均方根(RMSE)小于0.026,并且展开至原始总注量比接近1,与其他研究人员的结果一致。结果表明,ANFIS可以被认为是一种快速有效的中子谱展开新方法。

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