Exciton diffusion in amorphous organic semiconductors: Reducing simulation overheads with machine learning

Author:

Wechwithayakhlung Chayanit12ORCID,Weal Geoffrey R.234ORCID,Kaneko Yu5ORCID,Hume Paul A.34ORCID,Hodgkiss Justin M.34ORCID,Packwood Daniel M.12ORCID

Affiliation:

1. Institute for Integrated Cell-Material Sciences (iCeMS), Kyoto University 1 , Kyoto, Japan

2. Center for Integrated Data-Material Sciences (iDM), MacDiarmid Institute for Advanced Materials and Nanotechnology 2 , Wellington, New Zealand

3. MacDiarmid Institute for Advanced Materials and Nanotechnology 3 , Wellington, New Zealand

4. School of Chemical and Physical Sciences, Victoria University of Wellington 4 , Wellington, New Zealand

5. Daicel Corporate Research Center, Innovation Park (iPark), Daicel Corporation 5 , Himeiji, Japan

Abstract

Simulations of exciton and charge hopping in amorphous organic materials involve numerous physical parameters. Each of these parameters must be computed from costly ab initio calculations before the simulation can commence, resulting in a significant computational overhead for studying exciton diffusion, especially in large and complex material datasets. While the idea of using machine learning to quickly predict these parameters has been explored previously, typical machine learning models require long training times, which ultimately contribute to simulation overheads. In this paper, we present a new machine learning architecture for building predictive models for intermolecular exciton coupling parameters. Our architecture is designed in such a way that the total training time is reduced compared to ordinary Gaussian process regression or kernel ridge regression models. Based on this architecture, we build a predictive model and use it to estimate the coupling parameters which enter into an exciton hopping simulation in amorphous pentacene. We show that this hopping simulation is able to achieve excellent predictions for exciton diffusion tensor elements and other properties as compared to a simulation using coupling parameters computed entirely from density functional theory. This result, along with the short training times afforded by our architecture, shows how machine learning can be used to reduce the high computational overheads associated with exciton and charge diffusion simulations in amorphous organic materials.

Funder

Marsden Fund

Japan Society for the Promotion of Science

Publisher

AIP Publishing

Subject

Physical and Theoretical Chemistry,General Physics and Astronomy

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