Inverse Design of MXenes for High-Capacity Energy Storage Materials Using Multi-Target Machine Learning
Date
2022
Authors
Li, Sichao
Barnard, Amanda
Journal Title
Journal ISSN
Volume Title
Publisher
American Chemical Society
Abstract
There is significant interest in discovering high-capacity battery
materials, prompting the investigation of the electrochemical energy storage
potential of the two-dimensional early transition metal carbides known as MXenes.
Predicting the relationship between the composition of a MXene and electrochemical properties is a focus of considerable research. In this paper we classify the
specific MXene chemical formula using a new categorical descriptor and
simultaneously predict multiple target electrochemical properties. We then invert
the design challenge and predict the formula for MXenes based on a set of battery
performance criteria. This approach involves a workflow that includes multi-target
regression and multi-target classification, focusing on the physicochemical features
most pertinent to battery design. The final inverse model recommends Li2M2C and
Mg2M2C (M = Sc, Ti, Cr) as candidates for more focused research, based on
desirable ranges of gravimetric capacity, voltage, and induced charge.
Description
Keywords
Citation
Collections
Source
Chemistry of Materials
Type
Journal article
Book Title
Entity type
Access Statement
License Rights
Restricted until
2099-12-31
Downloads
File
Description