posted on 2024-12-23, 23:03authored byRaghuram Gaddam, Zirui Wang, Yichen Li, Lauren C. Harris, Michael A. Pence, Efren R. Guerrero, Paul J. A. Kenis, Andrew A. Gewirth, Joaquín Rodríguez-López
Automated, rapid electrocatalyst discovery techniques
that comprehensively
address the exploration of chemical spaces, characterization of catalyst
robustness, reproducibility, and translation of results to (flow)
electrolysis operation are needed. Responding to the growing interest
in biomass valorization, we studied the glycerol electro-oxidation
reaction (GEOR) on gold in alkaline media as a model reaction to demonstrate
the efficacy of such methodology introduced here. Our platform combines
individually addressable electrode arrays with HardPotato, a Python
application programming interface for potentiostat control, to automate
electrochemical experiments and data analysis operations. We systematically
investigated the effects of reduction potential (El) and pulse width (PW) on GEOR activity during the electrodeposition
(Edep) of gold, evaluating 28 different conditions in triplicate measurements
with great versatility. Our findings reveal a direct correlation between El and GEOR activity. Upon CV cycling, we recorded
a 52% increase in peak current density and a −0.25 V shift
in peak potential as El varied from −0.2
to −1.4 V. We also identified an optimal PW of ∼1.0
s, yielding maximum catalytic performance. The swift analysis enabled
by our methodology allowed us to correlate performance enhancements
with increased electrochemical surface area and preferential deposition
of Au(110) and Au(111) sites, even in disparate Edep conditions. We
validate our methodology by scaling the Edep process to larger electrodes
and correlating intrinsic activity with product speciation via flow
electrolysis measurements. Our platform highlights opportunities in
automation for electrocatalyst discovery to address pressing needs
toward industrial decarbonization, such as biomass valorization.