Site icon News Bit

Predicting the device performance of perovskite solar cells through machine learning

Screening the fabrication process parameters for perovskite solar cells by machine learning. Credit: Journal of Energy Chemistry (2022). DOI: 10.1016/j.jechem.2022.10.024

Metal halide perovskite solar cells (PSCs) have been rapidly developed in the past decade. To obtain high-performance PSCs, it is imperative to optimize the fabrication processes and the composition of the perovskite films. Extensive work has been carried out to determine the effects of the fabrication processes and composition of the perovskite films on the device performance.

However, it has been challenging to elucidate their correlations because of the enormous variable space constructed by these factors. Exploring these relations is undoubtedly critical to predict the device performance for efficient device optimization. However, owing to the complexity of these factors, it has been impossible thus far to carry out this work solely through experimentation.

Recently, Professor Zheng Xu and Associate Professor Dandan Song of Beijing Jiaotong University adopted the machine learning (ML) approach to explore these correlations by learning the existing experimental results, thereby enabling the prediction of the device performance from these factors.

The effects of these factors on the device performance were analyzed by shapley additive explanations (SHAP) analysis. Furthermore, to improve the interpretability of the ML model, the authors considered A-site cations as an example to explain and verify the predicted results by density functional theory (DFT) calculations and experiments. This work thoroughly elucidates how ML guides device optimization, thereby also serving as a guide for the reverse design of experiments to obtain high-performance PSCs.

This research was published in the Journal of Energy Chemistry.

More information:
Yao Lu et al, Predicting the device performance of the perovskite solar cells from the experimental parameters through machine learning of existing experimental results, Journal of Energy Chemistry (2022). DOI: 10.1016/j.jechem.2022.10.024
Provided by
Chinese Academy of Sciences


Citation:
Predicting the device performance of perovskite solar cells through machine learning (2022, November 17)
retrieved 17 November 2022
from https://techxplore.com/news/2022-11-device-perovskite-solar-cells-machine.html

This document is subject to copyright. Apart from any fair dealing for the purpose of private study or research, no
part may be reproduced without the written permission. The content is provided for information purposes only.

For all the latest Technology News Click Here 

 For the latest news and updates, follow us on Google News

Read original article here

Denial of responsibility! NewsBit.us is an automatic aggregator around the global media. All the content are available free on Internet. We have just arranged it in one platform for educational purpose only. In each content, the hyperlink to the primary source is specified. All trademarks belong to their rightful owners, all materials to their authors. If you are the owner of the content and do not want us to publish your materials on our website, please contact us by email – abuse@newsbit.us. The content will be deleted within 24 hours.
Exit mobile version