research papers
The local monodisperse approximation (LMA) is a two-parameter model commonly employed for the retrieval of size distributions from the small-angle scattering (SAS) patterns obtained from dense nanoparticle samples (e.g. dry powders and concentrated solutions). This work features a novel implementation of the LMA model resolution for the inverse scattering problem. The method is based on the expectation-maximization iterative algorithm and is free of any fine-tuning of model parameters. The application of this method to SAS data acquired under laboratory conditions from dense nanoparticle samples is shown to provide good results.
Keywords: small-angle scattering; expectation maximization; interacting nanoparticles; local monodisperse approximation; nanopowders.
Supporting information
Zip compressed file https://doi.org/10.1107/S1600576719009373/vg5107sup1.zip |