Dec 4, 2024
10:15am - 10:30am
Hynes, Level 2, Room 209
Jingwen Sun1,Hongyuan Sheng1,Oliver Rodríguez2,Joaquin Rodriguez-Lopez2,Chong Liu1
University of California, Los Angeles1,University of Illinois at Urbana-Champaign2
Jingwen Sun1,Hongyuan Sheng1,Oliver Rodríguez2,Joaquin Rodriguez-Lopez2,Chong Liu1
University of California, Los Angeles1,University of Illinois at Urbana-Champaign2
Electrochemical research often requires stringent combinations of experimental parameters that are demanding to manually locate. Recent advances in automated instrumentation and machine-learning algorithms unlock the possibility for accelerated studies of electrochemical fundamentals via high-throughput, online decision-making. Here we report an autonomous electrochemical platform that implements an adaptive, closed-loop workflow for mechanistic investigation of molecular electrochemistry. As a proof-of-concept, this platform autonomously identifies and investigates an EC mechanism, an interfacial electron transfer (E step) followed by a solution reaction (C step), for cobalt tetraphenylporphyrin exposed to a library of organohalide electrophiles. The generally applicable workflow accurately discerns the EC mechanism’s presence amid negative controls and outliers, adaptively designs desired experimental conditions, and quantitatively extracts kinetic information of the C step spanning over 7 orders of magnitude, from which mechanistic insights into oxidative addition pathways are gained. This work opens opportunities for autonomous mechanistic discoveries in self-driving electrochemistry laboratories without manual intervention.