A strategy is presented for the machine-learning emulation of electronic structure calculations carried out in the electronically grand-canonical ensemble. The approach relies upon a dual-learning scheme, where both the system charge and the system energy are predicted for each image. The scheme is shown to be capable of emulating basic electrochemical reactions at a range of potentials, and coupling it with a bootstrap-ensemble approach gives reasonable estimates of the prediction uncertainty. The method is also demonstrated to accelerate saddle-point searches, and to extrapolate to systems with one to five water layers. We anticipate that this method will allow for larger length- and time-scale simulations necessary for electrochemical simulations.
CITATION STYLE
Chen, X., El Khatib, M., Lindgren, P., Willard, A., Medford, A. J., & Peterson, A. A. (2023). Atomistic learning in the electronically grand-canonical ensemble. Npj Computational Materials, 9(1). https://doi.org/10.1038/s41524-023-01007-6
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