A data-driven approach to predicting band gap, excitation, and emission energies for Eu2+-activated phosphors†
Abstract
The prediction of excitation band edge wavelength (EBEW) and peak emission wavelength (PEW) for Eu2+-activated phosphors is intricate in practice, although a theoretical interpretation has been well established. A data-driven approach could be of great help for EBEW and PEW prediction. We collected 91 Eu2+-activated phosphors, the host structures of which exhibit a single activator site and the EBEW and PEW of which are available at the critical activator concentration. We extracted 29 descriptors (input features) that implicate the elemental and structural traits of phosphor hosts, and set up an integrated machine-learning (ML) platform consisting of 18 ML algorithms that allowed prediction of the EBEW and PEW as well as the DFT-calculated band gap (Eg). The acquired dataset involving 91 phosphors was insufficient for the 29-input-feature problem and the real-world data collected from the literature have a so-called dirty nature due to inaccurate, unstandardized experiments. Despite an unavoidable paucity of data and the dirty-data problems of real-world data-based ML implementation, we obtained acceptable holdout dataset test results for PEW predications such as R2 > 0.6, MSE < 0.02, and test_R2/training_R2 > 0.77 for four ML algorithms. The EBEW and Eg predictions returned slightly better test results than these PEW examples.
- This article is part of the themed collection: 2021 Inorganic Chemistry Frontiers HOT articles