Literature DB >> 31809047

Machine Learning and Scaling Laws for Prediction of Accurate Adsorption Energy.

Sanjay Nayak1, Satadeep Bhattacharjee1, Jung-Hae Choi2, Seung Cheol Lee1.   

Abstract

Finding an "ideal" catalyst is a matter of great interest in the communities of chemists and material scientists, partly because of its wide spectrum of industrial applications. Information regarding a physical parameter termed "adsorption energy", which dictates the degrees of adhesion of an adsorbate on a substrate, is a primary requirement in selecting the catalyst for catalytic reactions. Both experiments and in silico modeling are extensively being used in estimating the adsorption energies, both of which are an Edisonian approach, demand plenty of resources, and are time-consuming. In this paper, employing a data-mining approach, we predict the adsorption energies of monoatomic and diatomic gases on the surfaces of many transition metals (TMs) in no time. With less than a set of 10 simple atomic features, our predictions of the adsorption energies are within a root-mean-squared error (RMSE) of 0.4 eV with the quantum many-body perturbation theory estimates, a computationally expensive method with a good experimental agreement. Based on the important features obtained from machine learning models, we construct a set of mathematical equations using the compressed sensing technique to calculate adsorption energy. We also show that the RMSE can be further minimized up to 0.10 eV using the precomputed adsorption energies obtained with the conventional exchange and correlation (XC) functional by a new set of scaling relations.

Year:  2019        PMID: 31809047     DOI: 10.1021/acs.jpca.9b07569

Source DB:  PubMed          Journal:  J Phys Chem A        ISSN: 1089-5639            Impact factor:   2.781


  2 in total

1.  Machine learning-accelerated prediction of overpotential of oxygen evolution reaction of single-atom catalysts.

Authors:  Lianping Wu; Tian Guo; Teng Li
Journal:  iScience       Date:  2021-04-03

2.  Predicting the Redox Potentials of Phenazine Derivatives Using DFT-Assisted Machine Learning.

Authors:  Siddharth Ghule; Soumya Ranjan Dash; Sayan Bagchi; Kavita Joshi; Kumar Vanka
Journal:  ACS Omega       Date:  2022-03-29
  2 in total

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