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An improved Bayesian inversion method for the estimation of multimodal particle size distributions using multiangle Dynamic Light Scattering measurements

机译:一种改进的贝叶斯反演方法,用于使用多模动态光散射测量估算多式联粒度分布

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An improved and robust Bayesian method is proposed to estimate the number-weighted Particle Size-Distributions (PSD) from data obtained by Multiangle Dynamic Light Scattering (MDLS). Compared to former approach presented by Clementi, the originality of our method lies in the fact that it is directly applied to raw MDLS data without any preprocessing. Indeed, the PSD Bayesian estimation proposed by Clementi requires the prior evaluation of the harmonic intensity averaged particle diameters at different angles by means of the cumulants method. The spreading of the estimation errors is inherent in this method which makes the multimodal PSD estimation worsens. The efficiency and robustness of the method proposed are evaluated through simulated and experimental data. Comparisons with the Clementi method are also presented. We show an improvement of the resolution and the repeatability, and a better correlation between our results and the original distributions.
机译:提出了一种改进和强大的贝叶斯方法来估计来自多聚动态光散射(MDL)获得的数据的数量加权粒度分布(PSD)。与由Clementi呈现的前一种方法相比,我们方法的原创性在于它在没有任何预处理的情况下直接应用于原始MDLS数据。实际上,Clementi提出的PSD贝叶斯估计需要通过累积剂方法在不同角度以不同角度进行谐波强度平均粒径的先前评估。该方法中的估计误差的扩展是固有的,这使得多模式PSD估计恶化。所提出的方法的效率和稳健性通过模拟和实验数据进行评估。还提出了与Clementi方法的比较。我们展示了解决方案和重复性的提高,以及我们的结果与原始分布之间的更好相关性。

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