Using Global Optimization for a Microparticle Identification Problem with Noisy Data

被引:0
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作者
M. C. Bartholomew-Biggs
Z. J. Ulanowski
S. Zakovic
机构
[1] University of Hertfordshire,Numerical Optimization Centre
[2] University of Hertfordshire,STRC
[3] Imperial College,Department of Computing
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关键词
Experimental Data; Noise Level; Global Optimization; Identification Problem; Real Function;
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摘要
We report some experience with optimization methods applied to an inverse light scattering problem for spherical, homogeneous particles. Such particles can be identified from experimental data using a least squares global optimization method. However, if there is significant noise in the data, the “best” solution may not correspond well to the “actual” particle. We suggest a way in which the original least squares solution may be improved by using a constrained optimization calculation which considers the position of peaks in the data. This approach is applied first to multi-angle data with varying amounts of artificially introduced noise and then to examples of single-particle experimental data patterns characterized by high noise levels.
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页码:325 / 347
页数:22
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