Data Cleansing and Sub‐Unit‐Based Molecular Description Enable Accurate Prediction of The Energy Levels of Non‐Fullerene Acceptors Used in Organic Solar Cells

Author:

Zhang Ting1,Yuk Lin Lai Joshua2,Shi Mingzhe1,Li Qing1,Zhang Chen1,Yan He2ORCID

Affiliation:

1. Department of Computing The Hong Kong Polytechnic University 11 Yuk Choi Road, Hung Hom, KLN Hong Kong 999077 China

2. Department of Chemistry Hong Kong University of Science and Technology Clear Water Bay, Kowloon Hong Kong 999077 China

Abstract

AbstractNon‐fullerene acceptors (NFAs) have recently emerged as pivotal materials for enhancing the efficiency of organic solar cells (OSCs). To further advance OSC efficiency, precise control over the energy levels of NFAs is imperative, necessitating the development of a robust computational method for accurate energy level predictions. Unfortunately, conventional computational techniques often yield relatively large errors, typically ranging from 0.2 to 0.5 electronvolts (eV), when predicting energy levels. In this study, the authors present a novel method that not only expedites energy level predictions but also significantly improves accuracy , reducing the error margin to 0.06 eV. The method comprises two essential components. The first component involves data cleansing, which systematically eliminates problematic experimental data and thereby minimizes input data errors. The second component introduces a molecular description method based on the electronic properties of the sub‐units comprising NFAs. The approach simplifies the intricacies of molecular computation and demonstrates markedly enhanced prediction performance compared to the conventional density functional theory (DFT) method. Our methodology will expedite research in the field of NFAs, serving as a catalyst for the development of similar computational approaches to address challenges in other areas of material science and molecular research.

Funder

Hong Kong Polytechnic University

Publisher

Wiley

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