4.8 Article

Machine learning-assisted development of organic photovoltaics via high-throughput in situ formulation

Journal

ENERGY & ENVIRONMENTAL SCIENCE
Volume 14, Issue 6, Pages 3438-3446

Publisher

ROYAL SOC CHEMISTRY
DOI: 10.1039/d1ee00641j

Keywords

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Funding

  1. Australian Centre for Advanced Photovoltaics (ACAP) program - Australian Government through the Australian Renewable Energy Agency (ARENA)
  2. Technology Development Program to Solve Climate Changes of the National Research Foundation (NRF) - Ministry of Science, ICT & Future Planning [NRF-2016M1A2A2940914, 2020M1A2A2080746]

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The development of OPVs using industrial roll-to-roll slot die coating, in conjunction with machine learning techniques, has led to the fabrication of high-efficiency devices. The ML model based on Random Forest regression algorithm successfully predicted high-performance formulations, resulting in the highest efficiency for R2R-processed OPVs.
The discovery of high-performance non-fullerene acceptors and ternary blend systems has resulted in a breakthrough in the efficiency of organic photovoltaics (OPVs) and has created new opportunities for commercialization. However, manufacturing technology has remained far behind expectations. Here we show a new research approach to develop OPVs via industrial roll-to-roll (R2R) slot die coating in conjunction with the in situ formulation technique and machine learning (ML) technology. The formulated PM6:Y6:IT-4F ternary blends deposited on continuously moving substrates resulted in the high-throughput fabrication of OPVs with various compositions. The system was used to produce training data for ML prediction. The composition/deposition parameters, referred to as deposition densities, and the efficiencies of 2218 devices were used to screen ML algorithms and to train an ML model based on a Random Forest regression algorithm. The generated model was used to predict high-performance formulations and the prediction was experimentally validated by fabricating 10.2% efficiency devices, the highest efficiency for R2R-processed OPVs so far.

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