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Multiangle dynamic light scattering analysis using an improved recursion algorithm

机译:使用改进的递归算法进行多角度动态光散射分析

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Multiangle dynamic light scattering (MDLS) compensates for the low information in a single-angle dynamic light scattering (DLS) measurement by combining the light intensity autocorrelation functions from a number of measurement angles. Reliable estimation of PSD from MDLS measurements requires accurate determination of the weighting coefficients and an appropriate inversion method. We propose the Recursion Nonnegative Phillips-Twomey (RNNPT) algorithm, which is insensitive to the noise of correlation function data, for PSD reconstruction from MDLS measurements. The procedure includes two main steps: 1) the calculation of the weighting coefficients by the recursion method, and 2) the PSD estimation through the RNNPT algorithm. And we obtained suitable regularization parameters for the algorithm by using MR-L-curve since the overall computational cost of this method is sensibly less than that of the L-curve for large problems. Furthermore, convergence behavior of the MR-L-curve method is in general superior to that of the L-curve method and the error of MR-L-curve method is monotone decreasing. First, the method was evaluated on simulated unimodal lognormal PSDs and multimodal lognormal PSDs. For comparison, reconstruction results got by a classical regularization method were included. Then, to further study the stability and sensitivity of the proposed method, all examples were analyzed using correlation function data with different levels of noise. The simulated results proved that RNNPT method yields more accurate results in the determination of PSDs from MDLS than those obtained with the classical regulation method for both unimodal and multimodal PSDs.
机译:多角度动态光散射(MDLS)通过组合来自多个测量角度的光强度自相关函数来补偿单角度动态光散射(DLS)测量中的低信息。根据MDLS测量值对PSD进行可靠的估算,需要准确确定加权系数并采用适当的反演方法。我们提出了递归非负菲利普斯-Twomey(RNNPT)算法,它对相关函数数据的噪声不敏感,用于从MDLS测量中重建PSD。该过程包括两个主要步骤:1)通过递归方法计算加权系数,以及2)通过RNNPT算法进行PSD估计。并且由于使用MR-L曲线,我们为算法获得了合适的正则化参数,因为该方法的总体计算成本明显小于大问题的L曲线。此外,MR-L-曲线方法的收敛行为通常优于L-曲线方法,并且MR-L-曲线方法的误差单调减小。首先,对模拟的单峰对数正态PSD和多峰对数正态PSD进行了评估。为了进行比较,包括通过经典正则化方法获得的重建结果。然后,为进一步研究所提出方法的稳定性和灵敏度,使用具有不同噪声水平的相关函数数据对所有示例进行了分析。仿真结果证明,与传统的单峰和多峰PSD调节方法相比,RNNPT方法从MDLS中确定PSD可获得更准确的结果。

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