Article ID | Journal | Published Year | Pages | File Type |
---|---|---|---|---|
10135782 | Optics Communications | 2019 | 17 Pages |
Abstract
The Tikhonov regularization is an effective method used for dynamic light scattering (DLS) data inversion. However, its inversion accuracy is low for the strong noise data. Based on filtering and Tikhonov regularization technology, we propose a filter-Tikhonov-L method. To begin with, this method uses the cubical smoothing algorithm with five-point approximation to filter out the noise of autocorrelation function (ACF). A new inversion problem is constructed by the filtered ACF, and then solved by Tikhonov regularization with L-curve criterion. This method combines the advantages of filtering and Tikhonov regularization technology, so that it has the high inversion accuracy. The simulation data of particles with particle size distribution (PSD) from 100Â nm to 700Â nm was implemented inversion studies. The investigation shows that filter-Tikhonov-L has a great advantage in peak position, relative error, the capability of recognizing double peaks and tolerance of noises. The inversion of experimental data also verifies this conclusion.
Related Topics
Physical Sciences and Engineering
Materials Science
Electronic, Optical and Magnetic Materials
Authors
Zhi Dou, Jin Shen, Tianze Li, Yajing Wang, Mingliang Gao,