dKMC: Delocalised kinetic Monte Carlo for simulating fundamental transport processes involving partially delocalised carriers in disordered materials

dKMC: Delocalised kinetic Monte Carlo for simulating fundamental transport processes involving partially delocalised carriers in disordered materials - Published in JOSS (2025)

https://github.com/kassalgroup/dkmc.jl

Science Score: 87.0%

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JOSS Publication

dKMC: Delocalised kinetic Monte Carlo for simulating fundamental transport processes involving partially delocalised carriers in disordered materials
Published
December 10, 2025
Volume 10, Issue 116, Page 8722
Authors
Daniel Balzer ORCID
School of Chemistry, University of Sydney, NSW 2006, Australia
Ivan Kassal ORCID
School of Chemistry, University of Sydney, NSW 2006, Australia
Editor
Rachel Kurchin ORCID
Tags
organic semiconductors organic photovoltaics charge transport charge separation materials science disordered materials

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