利用基于矩匹配的双分散粒度分布近似任何粒度分布

M. Kostoglou, T. Karapantsios
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摘要

胶体颗粒和乳液等分散相的特征在于它们的粒度分布。窄分布可以用单分散分布来表示。然而,对于较宽的分布则不然。所谓的正交矩方法假定任何分布都是双分散分布,以求解相应的种群平衡。本研究提出了这种方法的一般化(即根据双分散分布近似实际粒度分布)。这种近似方法有助于压缩描述分布的数字量,并方便计算分散的属性(尤其是在计算复杂的情况下)。在本研究中,对进行近似计算的程序进行了评估,并找到了最佳方法。结果表明,在对数正态分布的情况下(以对数正态分布为例),对于矩阶从 0 到 2 以及分散度最大为 3 的情况,近似方法效果良好。
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Approximation of Any Particle Size Distribution Employing a Bidisperse One Based on Moment Matching
Dispersed phases like colloidal particles and emulsions are characterized by their particle size distribution. Narrow distributions can be represented by the monodisperse distribution. However, this is not the case for broader distributions. The so-called quadrature methods of moments assume any distribution as a bidisperse one in order to solve the corresponding population balance. The generalization of this approach (i.e., approximation of the actual particle size distribution according to a bidisperse one) is proposed in the present work. This approximation helps to compress the amount of numbers for the description of the distribution and facilitates the calculation of the properties of the dispersion (especially convenient in cases of complex calculations). In the present work, the procedure to perform the approximation is evaluated, and the best approach is found. It was shown that the approximation works well for the case of a lognormal distribution (as an example) for a moments order from 0 to 2 and for dispersivity up to 3.
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