For disordered catalysts such as atomically dispersed "single-atom"metals on amorphous silica, the active sites inherit different properties from their quenched-disordered local environments. The observed kinetics are site-averages, typically dominated by a small fraction of highly active sites. Standard sampling methods require expensive ab initio calculations at an intractable number of sites to converge on the site-averaged kinetics. We present a new method that efficiently estimates the site-averaged turnover frequency (TOF). The new estimator uses the same importance learning algorithm [Vandervelden et al., React. Chem. Eng. 5, 77 (2020)] that we previously used to compute the site-averaged activation energy. We demonstrate the method by computing the site-averaged TOF for a simple disordered lattice model of an amorphous catalyst. The results show that with the importance learning algorithm, the site-averaged TOF and activation energy can now be obtained concurrently with orders of magnitude reduction in required ab initio calculations.
CITATION STYLE
Vandervelden, C. A., Khan, S. A., & Peters, B. (2020). Importance learning estimator for the site-averaged turnover frequency of a disordered solid catalyst. Journal of Chemical Physics, 153(24). https://doi.org/10.1063/5.0037450
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