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McSAS: software for the retrieval of model parameter distributions from scattering patterns

机译:McSAS:用于从散射图案中检索模型参数分布的软件

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摘要

A user-friendly open-source Monte Carlo regression package (McSAS) is presented, which structures the analysis of small-angle scattering (SAS) using uncorrelated shape-similar particles (or scattering contributions). The underdetermined problem is solvable, provided that sufficient external information is available. Based on this, the user picks a scatterer contribution model (or ‘shape’) from a comprehensive library and defines variation intervals of its model parameters. A multitude of scattering contribution models are included, including prolate and oblate nanoparticles, core–shell objects, several polymer models, and a model for densely packed spheres. Most importantly, the form-free Monte Carlo nature of McSAS means it is not necessary to provide further restrictions on the mathematical form of the parameter distribution; without prior knowledge, McSAS is able to extract complex multimodal or odd-shaped parameter distributions from SAS data. When provided with data on an absolute scale with reasonable uncertainty estimates, the software outputs model parameter distributions in absolute volume fraction, and provides the modes of the distribution (e.g. mean, variance etc.). In addition to facilitating the evaluation of (series of) SAS curves, McSAS also helps in assessing the significance of the results through the addition of uncertainty estimates to the result. The McSAS software can be integrated as part of an automated reduction and analysis procedure in laboratory instruments or at synchrotron beamlines.
机译:提出了一种用户友好的开源蒙特卡洛回归软件包(McSAS),该软件包使用不相关的形状相似粒子(或散射贡献)来构成小角度散射(SAS)的分析。只要有足够的外部信息可用,那么不确定的问题就可以解决。基于此,用户可以从综合库中选择散射体贡献模型(或“形状”),并定义其模型参数的变化间隔。包括大量的散射贡献模型,包括长圆形和扁圆形的纳米颗粒,核-壳物体,几个聚合物模型以及一个密堆积球体模型。最重要的是,McSAS的无形式蒙特卡洛性质意味着没有必要对参数分布的数学形式提供进一步的限制。在没有先验知识的情况下,McSAS能够从SAS数据中提取复杂的多峰或奇形参数分布。当提供具有合理不确定性估计值的绝对规模的数据时,该软件以绝对体积分数输出模型参数分布,并提供分布模式(例如均值,方差等)。除了便于评估(一系列)SAS曲线外,McSAS还通过在结果中添加不确定性估计来帮助评估结果的重要性。 McSAS软件可以作为自动还原和分析程序的一部分集成在实验室仪器中或在同步加速器射线束中。

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