Data-driven discovery of carbonyl organic electrode molecules: machine learning and experiment

Abstract

Carbonyl organic electrode molecules have broad prospects for application in lithium-ion batteries due to their environmental friendliness and cost-effective merit. To overcome the drawbacks associated with traditional time-consuming and costly trial and error experiments, herein, high-throughput calculations and machine learning methods have been employed to accelerate the development of high-performance carbonyl organic electrode molecules by evaluating one million molecules. Hierarchical clustering has been introduced into the selection process to find those target molecules and help us eliminate non-ring molecules. As the reduction potential is a crucial factor in evaluating the performance of electrode materials, based on the created dataset of organic electrode molecules by high-throughput calculations, we have built a machine learning model whose coefficient of determination can reach 0.88 for predicting the reduction potential. With the above efforts, naphthalene-1,4,5,8-tetraone with high reduction potential and energy density has been screened out and indeed exhibits a long cycle life of 2500 cycles at 1 A g−1 and a high discharge voltage of 2.5 V. The approach developed in this work offers new insight to filter advanced organic electrode molecules accurately and rapidly for Li-ion batteries.

Graphical abstract: Data-driven discovery of carbonyl organic electrode molecules: machine learning and experiment

Supplementary files

Article information

Article type
Paper
Submitted
07 Jan 2024
Accepted
08 Apr 2024
First published
11 Apr 2024

J. Mater. Chem. A, 2024, Advance Article

Data-driven discovery of carbonyl organic electrode molecules: machine learning and experiment

J. Du, J. Guo, Q. Sun, W. Liu, T. Liu, G. Huang and X. Zhang, J. Mater. Chem. A, 2024, Advance Article , DOI: 10.1039/D4TA00136B

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