2024 AIChE Annual Meeting
(669b) Investigations of Electric Field Effects on Catalysis: A Combination of Deep Learning Models and Multi-Scale Simulations
Authors
To address this gap, we designed a novel deep learning framework for predicting the field-dependent adsorption energies. Specially, we employed a Graph Neural Network (GNN) to capture the relationship among the geometries, followed by a shared multiple-layer perception (MLP) for field-induced catalytic reaction prediction. The deep learning algorithm developed here accelerates field-dependent energy predictions with acceptable accuracies by five orders of magnitudes compared to DFT alone and has the capacity of transferability, which can predict field-dependent energetics of other catalytic surfaces with high quality performance using little training data.1 Our designed deep learning framework can provide potential good catalyst candidates for field-induced heterogeneous catalysis in a short time. By this means, some unacceptable catalyst candidates can be quickly filtered out, thus avoiding the unnecessary computations.2
Reference
- M. Wan†, H. Yue†, J. Notarangelo, H. Liu, F. Che*, “Deep-Learning Assisted Electric Field-Accelerated Ammonia Synthesis”, JACS Au, 2022, 2, 1338. ACS Editor’s Choice. Invited Front Cover.
- T. Mou†, H. S. Pillai†, S. Wang†, M. Wan, X. Han, N. M. Schweitzer, F. Che, H. Xin,* "Bridging the complexity gap in computational heterogeneous catalysis with machine learning", Nat. Catal., 2023,6 (2), 122 - 136.