Issue 34, 2021

Monitoring the role of site chemistry on the formation energy of perovskites via deep learning analysis of Hirshfeld surfaces

Abstract

This paper presents a new approach for predicting thermodynamic properties of perovskites that harnesses deep learning and crystal structure fingerprinting based on Hirshfeld surface analysis. It is demonstrated that convolutional neural network methods capture critical features embedded in two-dimensional Hirshfeld surface fingerprints that enable a quantitative assessment of the formation energy of perovskites. Building on our recent work on lattice parameter prediction from Hirshfeld surface calculations, we show how transfer learning can be used to speed up the training of the neural network, allowing multiple properties to be trained using the same feature extraction layers. We also predict formation energies for various perovskite polymorphs, and our predictions are found to give generally improved performance over a well-established graph network method, but with the methods better suited to different types of datasets. Analysis of the structure types within the dataset reveals the Hirshfeld surface-based method to excel for the less symmetric and similar structures, while the graph network performs better for very symmetric and similar structures.

Graphical abstract: Monitoring the role of site chemistry on the formation energy of perovskites via deep learning analysis of Hirshfeld surfaces

Supplementary files

Article information

Article type
Paper
Submitted
28 Apr 2021
Accepted
21 Jul 2021
First published
22 Jul 2021

J. Mater. Chem. C, 2021,9, 11153-11162

Author version available

Monitoring the role of site chemistry on the formation energy of perovskites via deep learning analysis of Hirshfeld surfaces

L. Williams, A. Mukherjee, A. Dasgupta and K. Rajan, J. Mater. Chem. C, 2021, 9, 11153 DOI: 10.1039/D1TC01972D

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