Windowed multipole representation of R -matrix cross sections

P. Ducru, A. Alhajri, I. Meyer, B. Forget, V. Sobes, C. Josey, Jin'gang Liang
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引用次数: 4

Abstract

Nuclear cross sections are basic inputs to any nuclear computation. Campaigns of experiments are fitted with the parametric R-matrix model of quantum nuclear interactions, and the resulting cross sections are documented - both point-wise and as resonance parameters (with uncertainties) - in standard evaluated nuclear data libraries (ENDF, JEFF, BROND, JENDL, CENDL, TENDL): these constitute our common knowledge of fundamental nuclear physics. In the past decade, a collaborative effort has been deployed to establish a new nuclear cross section library format - the Windowed Multipole Library - with the goal of considerably reducing the cost of cross section calculations in nuclear transport simulations. This article lays the theoretical foundations underpinning these efforts. From general R-matrix scattering theory, we derive the windowed multipole representation of nuclear cross sections. Though physically and mathematically equivalent, the windowed multipole representation is particularly well suited for subsequent temperature treatment of angle-integrated cross sections: we show that accurate Doppler broadening can be performed analytically up to the first reaction threshold; and we derive cross sections temperature derivatives to any order. Furthermore, we here establish a way of converting the R-matrix resonance parameters uncertainty (covariance matrices) into windowed multipole parameters uncertainty. We show that generating stochastic nuclear cross sections by sampling from the resulting windowed multipole covariance matrix can reproduce the cross section uncertainty in the original nuclear data file. Through this foundational article, we hope to make the Windowed Multipole Representation accessible, reproducible, and usable for the nuclear physics community, as well as provide the theoretical basis for future research on expanding its capabilities.
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r矩阵截面的窗口多极表示
核截面是任何核计算的基本输入。实验活动与量子核相互作用的参数r矩阵模型相拟合,结果横截面被记录下来-无论是点方向还是共振参数(具有不确定性)-在标准评估核数据库(ENDF, JEFF, BROND, JENDL, CENDL, TENDL)中:这些构成了我们对基础核物理的共同知识。在过去的十年中,为了大大降低核输运模拟中截面计算的成本,已经开展了一项合作努力,以建立一种新的核截面库格式-窗口多极库。本文为这些努力奠定了理论基础。从一般的r矩阵散射理论出发,导出了核截面的窗口多极表示。虽然在物理和数学上是等效的,但加窗多极表示特别适合于角积分截面的后续温度处理:我们表明,精确的多普勒展宽可以在解析上执行到第一个反应阈值;我们可以得到任意阶的截面温度导数。此外,我们还建立了一种将r矩阵共振参数不确定性(协方差矩阵)转换为带窗多极参数不确定性的方法。我们表明,通过从结果的带窗多极协方差矩阵中采样生成随机核截面可以再现原始核数据文件中的截面不确定性。通过这篇基础性文章,我们希望使窗口多极表示在核物理学界具有可访问性、可重复性和可使用性,并为进一步扩展其功能的研究提供理论基础。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
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