Physics-informed machine learning to accelerate stability research on perovskite solar cells
Acronym
ACCELERATE-PER
Description of the granted funding
The development of sustainable energy production technologies, such as new types of solar cells, has traditionally taken decades. These research cycles need to be accelerated in order to respond to the urgent climate change crisis. Perovskite solar cells (PSCs) are a recent technology that boast high electricity production efficiencies, however they suffer from insufficient lifetimes. Since there are thousands of material candidates even for a single layer of a PSC, it is challenging to search for stable materials and infer device degradation mechanisms. This project aims to implement machine learning (ML) as a part of the solution. I will create an accelerated, ML-assisted research cycle for improving the lifetime of PSCs: I will focusing on optimizing the composition of the light absorbing layer – perovskite – for stability. I will show the resulting stability improvements in full PSCs and develop faster inference of the remaining PSC degradation mechanisms. The acceleration in the cycle arises from i) using ML to save experimental bandwidth, ii) designing experiments that are directly compatible with ML (opposed to first collecting data and then figuring out how to use it with ML), and iii) maximizing effectiveness by teaching physics to the ML algorithm. For example, at the materials level, the algorithm needs to know that certain perovskite compositions do not exist as mixed materials according to density functional theory. The physics integration aligns ML algorithms with physical reality and alleviates data scarcity that has traditionally hindered the use of ML in experimental science. My highly collaborative and interdisciplinary project demonstrates the potential of integrated ML-assisted research cycles in accelerating stability research, and develops applied ML methods applicable to optimization in both research and industry. The project leads to more stable PSCs, thus taking us closer to sustainable energy production.
Show moreStarting year
2023
End year
2025
Granted funding
MASSACHUSETTS INSTITUTE OF TECHNOLOGY (US)
Participant
FRIEDRICH-ALEXANDER-UNIVERSITAET ERLANGEN NUERNBERG (DE)
Participant
Amount granted
199 694 €
Funder
European Union
Funding instrument
HORIZON TMA MSCA Postdoctoral Fellowships - European Fellowships
Framework programme
Horizon Europe (HORIZON)
Call
Programme part
Marie Skłodowska-Curie Actions (MSCA) (11677Topic
MSCA Postdoctoral Fellowships 2021 (HORIZON-MSCA-2021-PF-01-01Call ID
HORIZON-MSCA-2021-PF-01 Other information
Funding decision number
101059891