Particle Size Distribution from Combined Light Scattering Measurements. A Neural Network Approach for Solving the Inverse Problem

G. Stegmayer, O. Chiotti, L. Gugliotta, J. Vega
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引用次数: 3

Abstract

A method is proposed for estimating the particle size distribution (PSD) of a latex with particle diameters in the sub-micrometer range, from combined elastic light scattering (ELS) and dynamic light scattering (DLS) measurements. The method is implemented through a general regression neural network (GRNN) that estimates the PSD from the ELS measurement carried out at several angles together with the average diameters of the PSD predicted by the DLS measurement at the same angles. The GRNN was trained with several measurements simulated on the basis of typical asymmetric PSDs. The ability of the trained GRNN was tested on the basis of two synthetic examples. The estimated PSDs are more accurate than those obtained through standard numerical techniques for `ill-conditioned' inverse problems
结合光散射测量的粒度分布。求解逆问题的神经网络方法
提出了一种利用弹性光散射(ELS)和动态光散射(DLS)相结合的测量方法来估计粒径在亚微米范围内的乳胶的粒径分布(PSD)。该方法通过广义回归神经网络(GRNN)实现,该神经网络根据在多个角度进行的ELS测量以及在相同角度的DLS测量预测的PSD的平均直径来估计PSD。在典型非对称psd的基础上,对GRNN进行了多次测量模拟训练。通过两个综合算例对训练后的GRNN进行了能力测试。估计的psd比通过“病态”反问题的标准数值技术获得的psd更准确
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