Solution of the inverse problem of estimating particle size distributions

Milton Alejandro Escobar Vázquez, Silvia Reyes Mora, A. S. Cruz Félix
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Abstract

In this work, we describe two alternative methods for solving the ill-conditioned inverse problem that allows estimating the particle size distribution (PSD) from turbidimetry measurements. The first method uses the inverse Penrose matrix to solve the inverse problem in its discrete form. The second method consists of replacing an ill-posed problem with a collection of well-posed problems, penalizing the norm of the solution, and it is known as the Tikhonov regularization. Both methods are used to solve a synthetic application of the inverse problem by solving the direct problem using a theoretical expression of the distribution of particles sizes function f(D) and considering soft industrial latex particles (NBR), with average particle diameters of: 80.4, 82.8, 83.6, and 84.5 nm; and three illumination wavelengths in the UV-Vis region: 300, 450, and 600 nm. The estimated solution obtained by the inverse Penrose matrix is different from the original solution due to the inverse problem is ill-conditioned. In contrast, when using Tikhonov’s regularization, the estimate obtained is close to the original solution, which proves that the particle size distribution is adequate.
解决粒度分布估算的逆问题
在这项工作中,我们介绍了两种解决无条件逆问题的替代方法,可以通过浊度测量估算粒度分布 (PSD)。第一种方法使用彭罗斯逆矩阵来解决离散形式的逆问题。第二种方法是用一系列求解良好的问题代替求解不佳的问题,对求解的规范进行惩罚,这种方法被称为 Tikhonov 正则化。这两种方法都用于解决逆问题的合成应用,即使用颗粒大小分布函数 f(D) 的理论表达式解决直接问题,并考虑平均颗粒直径为 80.4、82.8、82.8 和 82.8 毫米的软质工业乳胶颗粒(丁腈橡胶):80.4、82.8、83.6 和 84.5 nm;紫外可见光区域的三种照明波长:300、450 和 600 纳米。由于逆问题的条件不完善,通过 Penrose 逆矩阵得到的估计解与原始解不同。相反,当使用 Tikhonov 正则化时,得到的估计值接近原始解,这证明粒度分布是适当的。
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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