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@ARTICLE{VanHerck:889108,
author = {Van Herck, Walter and Fisher, Jonathan and Ganeva, Marina},
title = {{D}eep learning for {X}-ray or neutron scattering under
grazing-incidence: extraction of distributions},
journal = {Materials Research Express},
volume = {8},
issn = {2053-1591},
address = {Bristol},
publisher = {IOP Publ.},
reportid = {FZJ-2021-00038},
pages = {04515},
year = {2021},
abstract = {Grazing-incidence small-angle scattering (GISAS) is a
technique of significant importance for the investigation of
thin multilayered films containing nano-sized objects. It
provides morphology information averaged over the sample
area. However, this averaging together with multiple
reflections and the well-known phase problem make the data
analysis challenging and time consuming. In the present
paper we show that densely connected neural networks
(DenseNets) can be applied for GISAS data analysis and
deliver fast and plausible results. The extraction of the
rotational distributions of hexagonal nanoparticle
arrangements is taken as a case study.},
cin = {JCNS-FRM-II / MLZ},
ddc = {620},
cid = {I:(DE-Juel1)JCNS-FRM-II-20110218 / I:(DE-588b)4597118-3},
pnm = {6G4 - Jülich Centre for Neutron Research (JCNS) (FZJ)
(POF4-6G4) / 623 - Data Management and Analysis (POF4-623)},
pid = {G:(DE-HGF)POF4-6G4 / G:(DE-HGF)POF4-623},
experiment = {EXP:(DE-MLZ)SCG-20150203},
typ = {PUB:(DE-HGF)16},
UT = {WOS:000642500400001},
doi = {10.1088/2053-1591/abd590},
url = {https://juser.fz-juelich.de/record/889108},
}