EXC 2046/1: Sparse Deep Neuronal Networks for the Design of Solar Energy Materials (P AA2-7)


The design of new materials for solar cells still relies heavily on very time-consuming material screenings. A simulation-based approach is capable of classifying compounds of Perovskite type with respect to thermodynamic stability in the formation and further properties using density function theory [1]. Likewise, the relationship between key performance indicators can be assessed from experimental data [2]. A major challenge for the fast and reliable design of new solar energy materials is the fact that there are still significant discrepancies between the compound properties predicted by simulation and the experimental data for numerous Perovskite type materials. This motivates the development of new mathematical techniques for improved machine learning approaches targeted within this project.


Principal Investigators
Walther, Andrea Prof. Dr. (Details) (Mathematical Optimization)

Duration of Project
Start date: 07/2020
End date: 06/2023

Last updated on 2021-11-08 at 13:35