Deep Learning for Optoelectronic Properties of Organic Semiconductors
Chengqiang Lu, Qi Liu, Qiming Sun, Chang-Yu Hsieh, Shengyu Zhang,, Liang Shi, and Chee-Kong Lee

TL;DR
This paper demonstrates that deep neural networks, especially SchNet, can accurately predict electronic and optoelectronic properties of organic semiconductors, significantly reducing computational costs compared to traditional quantum chemistry methods.
Contribution
The study evaluates and compares recent deep learning models for predicting properties of organic semiconductors, showing SchNet's superior performance and applicability to modeling spectra.
Findings
SchNet achieves 20-80meV prediction errors for HOMO/LUMO energies.
SchNet outperforms shallow neural networks, especially for large molecules.
Predicted UV-Vis spectra closely match experimental data.
Abstract
Atomistic modeling of energetic disorder in organic semiconductors (OSCs) and its effects on the optoelectronic properties of OSCs requires a large number of excited-state electronic-structure calculations, a computationally daunting task for many OSC applications. In this work, we advocate the use of deep learning to address this challenge and demonstrate that state-of-the-art deep neural networks (DNNs) are capable of predicting the electronic properties of OSCs at an accuracy comparable with the quantum chemistry methods used for generating training data. We extensively investigate the performances of four recent DNNs (deep tensor neural network, SchNet, message passing neural network, and multilevel graph convolutional neural network) in predicting various electronic properties of an important class of OSCs, i.e., oligothiophenes (OTs), including their HOMO and LUMO energies,…
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