Litcius/Paper detail

Simultaneous Optimization of Donor/Acceptor Pairs and Device Specifications for Nonfullerene Organic Solar Cells Using a QSPR Model with Morphological Descriptors

Yaping Wen, Yunhao Liu, Bohan Yan, Théophile Gaudin, Jing Ma, Haibo Ma

2021The Journal of Physical Chemistry Letters27 citationsDOI

Abstract

Optimally efficient organic solar cells require not only a careful choice of new donor (D) and/or acceptor (A) molecules but also the fine-tuning of experimental fabrication conditions for organic solar cells (OSCs). Herein, a new framework for simultaneously optimizing D/A molecule pairs and device specifications of OSCs is proposed, through a quantitative structure-property relationship (QSPR) model built by machine learning. Combining the device bulk properties with structural and electronic properties, the built QSPR model achieved unprecedentedly high accuracy and consistency. Additionally, a large chemical space of 1 942 785 D/A pairs is explored to find potential synergistic ones. Favorable device bulk properties such as the root-mean-square of surfaces roughness for D/A blends and the D/A weight ratio are further screened by grid search methods. Overall, this study indicates that the simultaneous optimization of D/A molecule pairs and device specifications by theoretical calculations can accelerate the improvement of OSC efficiencies.

Topics & Concepts

Quantitative structure–activity relationshipOrganic solar cellAcceptorConsistency (knowledge bases)MoleculeBiological systemMaterials scienceChemical spaceComputer sciencePhotovoltaic systemChemistryArtificial intelligenceDrug discoveryMachine learningPhysicsEngineeringOrganic chemistryElectrical engineeringBiochemistryCondensed matter physicsBiologyOrganic Electronics and PhotovoltaicsConducting polymers and applicationsMachine Learning in Materials Science