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Identifying short- and long-time modes of the mean-square displacement: An improved nonlinear fitting approach

机译:识别均方位移的短期和长期模式:一种改进的非线性拟合方法

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This paper is concerned with fitting the mean-square displacement (MSD) function, and extract reliable and accurate values for the diffusion coefficient D . In this work, we present a new optimal and robust nonlinear regression model capable of fitting the MSD function with different regimes corresponding to different time scales. The algorithm presented here achieves two major goals; a more accurate estimation of D as well as extracting information about the short time behavior. The algorithm fits the MSD to a continuous piece-wise function and predicts all the coefficients in the model including the breakpoints. The novelty of this approach lies in its ability to find the breakpoints which separate different modes of motion. We tested our algorithm using numerical experiments, and our fits described the data remarkably well. In addition, we applied our algorithm to extract D for water based on Molecular Dynamics (MD) simulations. The results of our fits are in good agreement with the experimentally reported values.
机译:本文关注均方位移(MSD)函数的拟合,并为扩散系数D提取可靠而准确的值。在这项工作中,我们提出了一种新的最优且鲁棒的非线性回归模型,该模型能够将MSD函数与对应于不同时标的不同体制进行拟合。这里介绍的算法实现了两个主要目标; D的更准确估计以及提取有关短时行为的信息。该算法将MSD拟合为连续的分段函数,并预测模型中包括断点的所有系数。这种方法的新颖之处在于它能够找到将不同运动模式分开的断点。我们使用数值实验测试了我们的算法,我们的拟合非常好地描述了数据。此外,我们基于分子动力学(MD)模拟将我们的算法应用于水的D提取。我们的拟合结果与实验报告的值非常吻合。

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