Transition States Energies from Machine Learning: An Application to Reverse Water-Gas Shift on Single-Atom Alloys
Journal:
arXiv
Published Date:
May 1, 2025
Abstract
Obtaining accurate transition state (TS) energies is a bottleneck in
computational screening of complex materials and reaction networks due to the
high cost of TS search methods and first-principles methods such as density
functional theory (DFT). Here we propose a machine learning (ML) model for
predicting TS energies based on Gaussian process regression with the
Wasserstein Weisfeiler-Lehman graph kernel (WWL-GPR). Applying the model to
predict adsorption and TS energies for the reverse water-gas shift (RWGS)
reaction on single-atom alloy (SAA) catalysts, we show that it can
significantly improve the accuracy compared to traditional approaches based on
scaling relations or ML models without a graph representation. Further
benefitting from the low cost of model training, we train an ensemble of
WWL-GPR models to obtain uncertainties through subsampling of the training data
and show how these uncertainties propagate to turnover frequency (TOF)
predictions through the construction of an ensemble of microkinetic models.
Comparing the errors in model-based vs DFT-based TOF predictions, we show that
the WWL-GPR model reduces errors by almost an order of magnitude compared to
scaling relations. This demonstrates the critical impact of accurate energy
predictions on catalytic activity estimation. Finally, we apply our model to
screen new materials, identifying promising catalysts for RWGS. This work
highlights the power of combining advanced ML techniques with DFT and
microkinetic modeling for screening catalysts for complex reactions like RWGS,
providing a robust framework for future catalyst design.