How machine learning will revolutionize electrochemical sciences
File(s)acsenergylett.1c00194.pdf (3.33 MB)
Published version
Author(s)
Mistry, Aashutosh
Franco, Alejandro A
Cooper, Samuel J
Roberts, Scott A
Viswanathan, Venkatasubramanian
Type
Journal Article
Abstract
Electrochemical systems function via interconversion of electric charge and chemical species and represent promising technologies for our cleaner, more sustainable future. However, their development time is fundamentally limited by our ability to identify new materials and understand their electrochemical response. To shorten this time frame, we need to switch from the trial-and-error approach of finding useful materials to a more selective process by leveraging model predictions. Machine learning (ML) offers data-driven predictions and can be helpful. Herein we ask if ML can revolutionize the development cycle from decades to a few years. We outline the necessary characteristics of such ML implementations. Instead of enumerating various ML algorithms, we discuss scientific questions about the electrochemical systems to which ML can contribute.
Date Issued
2021-03-23
Date Acceptance
2021-03-08
Citation
ACS Energy Letters, 2021, 6 (4), pp.1422-1431
ISSN
2380-8195
Publisher
American Chemical Society (ACS)
Start Page
1422
End Page
1431
Journal / Book Title
ACS Energy Letters
Volume
6
Issue
4
Copyright Statement
© 2021 American Chemical Society.
Sponsor
Engineering and Physical Sciences Research Council
Identifier
https://pubs.acs.org/doi/10.1021/acsenergylett.1c00194
Publication Status
Published
Date Publish Online
2021-03-23