Discovering Process Dynamics for Scalable Perovskite Solar Cell Manufacturing with Explainable AI

Author:

Klein Lukas123,Ziegler Sebastian34ORCID,Laufer Felix5ORCID,Debus Charlotte67ORCID,Götz Markus67ORCID,Maier‐Hein Klaus34ORCID,Paetzold Ulrich W.58ORCID,Isensee Fabian34ORCID,Jäger Paul F.13

Affiliation:

1. Interactive Machine Learning Group German Cancer Research Center 69120 Heidelberg Germany

2. Institute for Machine Learning ETH Zürich Zürich 8092 Switzerland

3. Helmholtz Imaging German Cancer Research Center 69120 Heidelberg Germany

4. Division of Medical Image Computing German Cancer Research Center 69120 Heidelberg Germany

5. Light Technology Institute Karlsruhe Institute of Technology 76131 Karlsruhe Germany

6. Steinbuch Centre for Computing Karlsruhe Institute of Technology 76344 Eggenstein‐Leopoldshafen Germany

7. Helmholtz AI Karlsruhe Institute of Technology 76344 Eggenstein‐Leopoldshafen Germany

8. Institute of Microstructure Technology Karlsruhe Institute of Technology 76344 Eggenstein‐Leopoldshafen Germany

Abstract

AbstractLarge‐area processing of perovskite semiconductor thin‐films is complex and evokes unexplained variance in quality, posing a major hurdle for the commercialization of perovskite photovoltaics. Advances in scalable fabrication processes are currently limited to gradual and arbitrary trial‐and‐error procedures. While the in situ acquisition of photoluminescence (PL) videos has the potential to reveal important variations in the thin‐film formation process, the high dimensionality of the data quickly surpasses the limits of human analysis. In response, this study leverages deep learning (DL) and explainable artificial intelligence (XAI) to discover relationships between sensor information acquired during the perovskite thin‐film formation process and the resulting solar cell performance indicators, while rendering these relationships humanly understandable. The study further shows how gained insights can be distilled into actionable recommendations for perovskite thin‐film processing, advancing toward industrial‐scale solar cell manufacturing. This study demonstrates that XAI methods will play a critical role in accelerating energy materials science.

Funder

Helmholtz Association

Publisher

Wiley

Subject

Mechanical Engineering,Mechanics of Materials,General Materials Science

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