Effectively Exploring Parameter Space: Design of Experiments and Machine Learning-assisted Organic Solar Cell Efficiency Optimization

 · Invited

Abstract

Organic solar cells (OSCs) are a potential cost-effective way to transform solar energy into electricity due to their potential for low-cost and high-throughput roll-to-roll production.[1] Improving the power conversion efficiency (PCE) and stability of OSCs are two of the most important tasks on the way toward commercialization. While much effort has been focused on developing new materials, optimization of processing conditions is equally important, where optimization is typically done in a haphazard manner using the experimenter's "intuition" or through one-variable-at-a-time (Edisonian) manipulation. However, such methods can fail to find the maximum PCE due to the high dimensionality parameter space of processing conditions and correlations between parameters. Moreover, laboratory-scale OSC fabrication is often low-throughput, time-consuming and expensive. Herein, we report an approach that uses Design of Experiments (DOE) along with machine learning (ML) to optimize solar cell efficiency. DoE is used to systematically explore the parameter space of processing conditions and ML is then utilized to estimate the PCE landscape as a function of the processing parameters. This process is then applied recursively to successively smaller regions of parameters space in regions of interest. Utilizing this process allows experimentalists to explore a larger parameter space with fewer experimental trials while obtaining valid and objective conclusions. Specific examples of concrete improvement of the power conversion efficiency of OSCs will be described.

[1] DOI:10.1021/acs.chemrev.5b00098

*This work was supported by Future Energy Systems of the University of Alberta (https://futureenergysystems.ca; Grant Nos. T12-P04 and T12-P01), the Natural Sciences and Engineering Research Council (NSERC, Grant Nos. RGPIN-2014-05195 and RGPIN-2018-04294), Alberta Innovates Technology Futures (Grant No. AITF iCORE IC50-T1 G2013000198), and the Canada Research Chairs program (CRC 207142).

Presenters

  • Erik Luber

    • University of Alberta

Authors

  • Bing Cao

    • University of Alberta
  • Lawrence A Adutwum

    • Pharmaceutical Chemistry, University of Ghana
  • Anton O Oliynyk

    • University of Alberta
  • Erik Luber

    • University of Alberta
  • Brian C Olsen

    • University of Alberta
  • Arthur Mar

    • University of Alberta
  • Jillian M Buriak

    • University of Alberta