Computer-aided bimetallic catalyst screening for ester selective hydrogenation†
Abstract
Heterogeneous hydrogenation of esters is a promising chemical process to produce alcohols. However, the selective hydrogenation of dibasic esters is still a challenge for both academia and industry. In this work, taking dimethyl oxalate (DMO) hydrogenation as an example, we have performed microkinetic analysis to explain the trend in the dimethyl oxalate hydrogenation activity and methyl glycolate (MG) selectivity across Ag, Cu, Ni, and Ru, using C and O adsorption energies as two descriptors. Ag is identified to be the best elemental metal catalyst for MG production. An unsupervised machine learning method based on the bisecting k-means hierarchical clustering algorithm is employed to determine the stable adsorption configurations over 1482 A3B1 and 741 A1B1 alloys. Ag3Zn1, Ag3Sn1, and Ag3Mg1 catalysts are selected as promising bimetallic catalyst candidates due to their enhanced catalytic performance and relatively low cost.