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Sample characterization using both neutron and gamma multiplicities

机译:使用中子和伽马多重性进行样品表征

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Formulas for multiplicity counting rates (singles, doubles, etc.), used for the unfolding of parameters of an unknown sample, can be derived from those for the corresponding factorial moments. So far such rates were derived only for neutrons. The novelty of this paper is related to the derivation of the individual gamma and mixed neutron-gamma detection rates as well as to investigation of the possibilities and actual algorithms for the sample parameter unfolding.rnTaking the individual gamma and mixed neutron-gamma moments up to third order, together with the neutron moments, there will be nine auto- and cross-factorial moments and corresponding multiplicity rates, as well as a larger number of unknowns than for pure neutron detection. The total number of measurable multiplicities exceeds the number of unknowns, but on the other hand the structure of the additional equations is substantially more complicated than that of the neutron moments. Since an analytical inversion of the highly non-linear system of over-determined equations is not possible, the use of artificial neural networks (ANNs) is suggested, which can handle both the non-linearity and the redundance in the measured quantities in an effective and accurate way. The use of ANNs is demonstrated with good results on the unfolding of various combination of multiplicities for certain combinations of the unknown parameters, including the sample fission rate, the leakage multiplication and the α and γ ratios.
机译:多重计数率(单,双等)的公式可用于展开未知样品的参数,可以从相应阶乘矩的公式中得出。到目前为止,这种比率仅针对中子得出。本文的新颖性与单个伽玛和混合中子-伽玛探测率的推导以及样品参数展开的可能性和实际算法的研究有关。与纯中子探测相比,三阶和中子矩将有9个自因和交叉因数矩以及相应的重合率,以及更多的未知数。可测多重性的总数超过了未知数,但另一方面,附加方程的结构比中子矩的结构复杂得多。由于无法对超定方程的高度非线性系统进行分析求逆,因此建议使用人工神经网络(ANN),它可以有效地处理测量值中的非线性和冗余准确的方法。在针对未知参数的某些组合(包括样品裂变率,泄漏倍增以及α和γ比)的多种多重性组合的展开中,ANN的使用被证明具有良好的效果。

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