Issue 13, 2024

Physics-based extraction of material parameters from perovskite experiments via Bayesian optimization

Abstract

The ability to extract material parameters of a perovskite from quantitative experimental analysis is essential for rational design of photovoltaic and optoelectronic applications. However, the difficulty of this analysis increases significantly with the complexity of the theoretical model and the number of material parameters for the perovskite. Here we use Bayesian optimization to develop a flexible, desktop-implementable analysis platform that can extract up to 8 fundamental material parameters of an organometallic perovskite semiconductor from a transient photoluminescence experiment based on a complex full-physics model that includes drift-diffusion of carriers and dynamic defect occupation. An example study of thermal degradation reveals that the carrier mobility and trap-assisted recombination coefficient are reduced noticeably, while the defect energy level remains nearly unchanged. The reduced carrier mobility can dominate the overall effect on thermal degradation of perovskite solar cells by reducing the fill factor, despite the opposite effect of the reduced trap-assisted recombination coefficient on increasing the fill factor. In future, this platform can be conveniently applied to other experiments or to combinations of experiments, accelerating materials discovery and optimization of semiconductor materials for photovoltaics and other applications.

Graphical abstract: Physics-based extraction of material parameters from perovskite experiments via Bayesian optimization

Supplementary files

Article information

Article type
Paper
Submitted
28 Feb 2024
Accepted
28 May 2024
First published
29 May 2024

Energy Environ. Sci., 2024,17, 4735-4745

Physics-based extraction of material parameters from perovskite experiments via Bayesian optimization

H. Zhan, V. Ahmad, A. Mayon, G. Dansoa Tabi, A. D. Bui, Z. Li, D. Walter, H. Nguyen, K. Weber, T. White and K. Catchpole, Energy Environ. Sci., 2024, 17, 4735 DOI: 10.1039/D4EE00911H

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