MTRL-SCILGAPP-PHOct 31, 2025

Transfer learning discovery of molecular modulators for perovskite solar cells

arXiv:2511.00204v1h-index: 15
Originality Incremental advance
AI Analysis

This work addresses the problem of slow and costly experimental screening for perovskite solar cell materials, offering a machine learning-based solution that is incremental in improving efficiency.

The study tackled the challenge of discovering molecular modulators for perovskite solar cells by applying a transfer learning framework, which predicted effects on power conversion efficiency and experimentally validated top modulators to achieve a champion PCE of 26.91%.

The discovery of effective molecular modulators is essential for advancing perovskite solar cells (PSCs), but the research process is hindered by the vastness of chemical space and the time-consuming and expensive trial-and-error experimental screening. Concurrently, machine learning (ML) offers significant potential for accelerating materials discovery. However, applying ML to PSCs remains a major challenge due to data scarcity and limitations of traditional quantitative structure-property relationship (QSPR) models. Here, we apply a chemical informed transfer learning framework based on pre-trained deep neural networks, which achieves high accuracy in predicting the molecular modulator's effect on the power conversion efficiency (PCE) of PSCs. This framework is established through systematical benchmarking of diverse molecular representations, enabling lowcost and high-throughput virtual screening over 79,043 commercially available molecules. Furthermore, we leverage interpretability techniques to visualize the learned chemical representation and experimentally characterize the resulting modulator-perovskite interactions. The top molecular modulators identified by the framework are subsequently validated experimentally, delivering a remarkably improved champion PCE of 26.91% in PSCs.

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