Electrochemical mechanistic analysis from cyclic voltammograms based on deep learning

09 June 2022, Version 1
This content is a preprint and has not undergone peer review at the time of posting.

Abstract

For decades, employing cyclic voltammetry for mechanistic investigation demands manual inspection of voltammograms. Here we report a deep-learning-based algorithm that automatically analyzes cyclic voltammograms and designates a electrochemical probable mechanism among five of the most common ones in homogenous molecular electrochemistry. The reported algorithm will aid researchers’ mechanistic analysis, utilize otherwise elusive features in voltammograms, and experimentally observe the gradual mechanism transitions encountered in electrochemistry. An automated voltammogram analysis will aid the analysis of complex electrochemical systems and promise autonomous high-throughput research in electrochemistry with minimal human interference.

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