Optimization methods for characterization of single particles from light scattering patterns

Autori

  • M. A. Yurkin Institute of Chemical Kinetics and Combustion, SB RAS
  • G. V. Dyatlov
  • K. V. Gilev
  • V. P. Maltsev

DOI:

https://doi.org/10.1478/C1V89S1P096

Parole chiave:

inverse light scattering problem, optimization, nearest-neighbor interpolation, scanning flow cytometer

Abstract

We address the inverse light-scattering problem for particles described by a several-parameters model, when experimental data are given as an angle-resolved light-scattering pattern (LSP). This problem is reformulated as an optimization (nonlinear regression) problem, for which two solution methods are proposed. The first one is based on standard gradient optimization method, but with careful choice of the starting point. The second method is based on precalculated database of theoretical LSPs, from which the closest one to an experimental LSP is selected for characterization. We tested both methods for characterization of polystyrene microspheres using a scanning flow cytometer (SFC).

Biografia autore

  • M. A. Yurkin, Institute of Chemical Kinetics and Combustion, SB RAS

    Laboratory of Cytometry and Biokinetics, Researcher

Pubblicato

2011-09-15

Fascicolo

Sezione

Conference Papers