People | Locations | Statistics |
---|---|---|
Naji, M. |
| |
Motta, Antonella |
| |
Aletan, Dirar |
| |
Mohamed, Tarek |
| |
Ertürk, Emre |
| |
Taccardi, Nicola |
| |
Kononenko, Denys |
| |
Petrov, R. H. | Madrid |
|
Alshaaer, Mazen | Brussels |
|
Bih, L. |
| |
Casati, R. |
| |
Muller, Hermance |
| |
Kočí, Jan | Prague |
|
Šuljagić, Marija |
| |
Kalteremidou, Kalliopi-Artemi | Brussels |
|
Azam, Siraj |
| |
Ospanova, Alyiya |
| |
Blanpain, Bart |
| |
Ali, M. A. |
| |
Popa, V. |
| |
Rančić, M. |
| |
Ollier, Nadège |
| |
Azevedo, Nuno Monteiro |
| |
Landes, Michael |
| |
Rignanese, Gian-Marco |
|
Solanki, Ankur
in Cooperation with on an Cooperation-Score of 37%
Topics
Publications (5/5 displayed)
- 2023Hybrid perovskites thin films morphology identification by adapting multiscale-SinGAN architecture, heat transfer search optimized feature selection and machine learning algorithmscitations
- 2022Bandgap prediction of metal halide perovskites using regression machine learning modelscitations
- 2019Tunable Ferroelectricity in Ruddlesden-Popper Halide Perovskitescitations
- 2019Indirect tail states formation by thermal-induced polar fluctuations in halide perovskitescitations
- 2019Indirect tail states formation by thermal-induced polar fluctuations in halide perovskitescitations
Places of action
Organizations | Location | People |
---|
article
Bandgap prediction of metal halide perovskites using regression machine learning models
Abstract
Organometal halide perovskites represent a type of nanomaterials, which are extensively used in solar cells, light-emitting diodes, detectors and memristors due to their outstanding optical, electrical and mechanical properties. Here, we use a dataset composed of 240 perovskites to train two machine learning models, ElasticNet and Isotonic Regression, able to predict the bandgaps. The performance of our ML models is evaluated using Correlation coefficient, Mean Absolute Error (MAE), and Root Mean Square Error (RMSE). The lowest MAE of 0.09 eV is calculated for Cs-based perovskites from ElasticNet and Ten-fold cross-validation results. While the highest MAE of 0.34 eV was obtained for MA-based perovskites with Isotonic Regression. Furthermore, a high correlation value of 0.98 between the DFT calculated and ML predicted results is observed. From the detailed comparative analysis, ElasticNet emerges as a prominent machine learning model for predicting the bandgap of metal halide perovskites more accurately and can also be further employed to predict the various properties of materials and their selection for different applications as well as to expand the investigation to other structures and organic molecules.