Machine Learning for Ultra High Throughput Screening of Organic Solar Cells: Solving the Needle in the Haystack Problem

Author:

Hußner Markus1ORCID,Pacalaj Richard Adam2ORCID,Olaf Müller‐Dieckert Gerhard3,Liu Chao45,Zhou Zhisheng6,Majeed Nahdia7,Greedy Steve7,Ramirez Ivan8,Li Ning546,Hosseini Seyed Mehrdad8,Uhrich Christian8,Brabec Christoph Josef54,Durrant James Robert29,Deibel Carsten3,MacKenzie Roderick Charles Ian1ORCID

Affiliation:

1. Department of Engineering Lower Mount Joy Durham University South Road Durham DH1 3LE UK

2. Department of Chemistry and Centre for Processable Electronics Imperial College London 82 Wood Lane London W12 0BZ UK

3. Institut für Physik Technische Universität Chemnitz 09126 Chemnitz Germany

4. Department of Materials Science and Engineering Friedrich‐Alexander‐Universität Erlangen‐Nürnberg 91054 Erlangen Germany

5. Helmholtz Institute Erlangen‐Nürnberg for Renewable Energy (HI ERN) Immerwahrstrasse 2 91058 Erlangen Germany

6. State Key Laboratory of Luminescent Materials and Devices Institute of Polymer Optoelectronic Materials and Devices School of Materials Science and Engineering South China University of Technology Guangzhou 510640 China

7. Faculty of Engineering The University of Nottingham University Park Nottingham NG7 2RD UK

8. Heliatek GmbH Treidlerstraße 3 01139 Dresden Germany

9. SPECIFIC IKC Department of Materials University of Swansea Bay Campus Swansea SA1 8EN UK

Abstract

AbstractOver the last two decades the organic solar cell community has synthesized tens of thousands of novel polymers and small molecules in the search for an optimum light harvesting material. These materials are often crudely evaluated simply by measuring the current–voltage (JV) curves in the light to obtain power conversion efficiencies (PCEs). Materials with low PCEs are quickly disregarded in the search for higher efficiencies. More complex measurements such as frequency/time domain characterization that could explain why the material performed as it is often not performed as they are too time consuming/complex. This limited feedback forced the field to advance using a more or less random walk of material development and has significantly slowed progress. Herein, a simple technique based on machine learning that can quickly and accurately extract recombination time constants and charge carrier mobilities as a function of light intensity simply from light/dark JV curves alone. This technique reduces the time to fully analyze a working cell from weeks to seconds and opens up the possibility of not only fully characterizing new devices as they are fabricated, but also data mining historical data sets for promising materials the community has overlooked.

Funder

Engineering and Physical Sciences Research Council

Publisher

Wiley

Subject

General Materials Science,Renewable Energy, Sustainability and the Environment

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