A new way to understand perovskite performance
AI methods guide researchers in developing improved manufacturing processes
Perovskite tandem solar cells boast an efficiency of more than 33 percent. Moreover, they use inexpensive raw materials. But manufacturing the high-grade, multi-crystalline thin layers without deficiencies or holes using low-cost and scalable methods is a big challenge, according to Ulrich W. Paetzold who conducts research at the Institute of Microstructure Technology and the Light Technology Institute of Karlsruher Institut fur Technologie (KIT).
Even under apparently perfect lab conditions, there may be unknown factors that cause variations in semiconductor layer quality: “This drawback eventually prevents a quick start of industrial-scale production of these highly efficient solar cells, which are needed so badly for the energy turnaround,” explains Paetzold.
To find the factors that influence coating, an interdisciplinary team consisting of the perovskite solar cell experts of KIT has joined forces with specialists for Machine Learning and Explainable Artificial Intelligence (XAI) of Helmholtz Imaging and Helmholtz AI at the DKFZ in Heidelberg.
The researchers developed AI methods that train and analyse neural networks using a huge dataset. This dataset includes video recordings that show the photoluminescence of the thin perovskite layers during the manufacturing process. “Since even experts could not see anything particular on the thin layers, the idea was born to train an AI system for Machine Learning (Deep Learning) to detect hidden signs of good or poor coating from the millions of data items on the videos,” Lukas Klein and Sebastian Ziegler from Helmholtz Imaging at the DKFZ explain.
To filter and analyse the widely scattered indications output by the Deep Learning AI system, the researchers subsequently relied on methods of Explainable Artificial Intelligence.
The researchers found out experimentally that the photoluminescence varies during production and that this phenomenon has an influence on the coating quality. “Key to our work was the targeted use of XAI methods to see which factors have to be changed to obtain a high-grade solar cell,” Klein and Ziegler say. This is not the usual approach. In most cases, XAI is only used as a kind of guardrail to avoid mistakes when building AI models. “This is a change of paradigm: Gaining highly relevant insights in materials science in such a systematic way is a totally new experience.”
It was indeed the conclusion drawn from the photoluminescence variation that enabled the researchers to take the next step. After the neural networks had been trained accordingly, the AI was able to predict whether each solar cell would achieve a low or a high level of efficiency based on which variation of light emission occurred at what point in the manufacturing process.
“These are extremely exciting results,” says Ulrich W. Paetzold. “Thanks to the combined use of AI, we have a solid clue and know which parameters need to be changed in the first place to improve production. Now we are able to conduct our experiments in a more targeted way and are no longer forced to look blindfolded for the needle in a haystack. This is a blueprint for follow-up research that also applies to many other aspects of energy research and materials science.”
Reference
'Discovering Process Dynamics for Scalable Perovskite Solar Cell Manufacturing with Explainable AI' by Lukas Klein et al ; Advanced Materials ( 2023)