New applications of Bayesian optimization based on element mapping to design high-capacity NASICON-type cathode of sodium-ion battery

Bibliographic Details
Title: New applications of Bayesian optimization based on element mapping to design high-capacity NASICON-type cathode of sodium-ion battery
Authors: Park, Sanghyeon, Shim, Yoonsu, Hur, Junpyo, Jeon, Dongmin, Yuk, Jong Min, Lee, Chan-Woo
Publication Year: 2024
Collection: Condensed Matter
Subject Terms: Condensed Matter - Materials Science
More Details: Sodium-ion batteries are emerging as promising alternatives to lithium-ion batteries due to the abundance of sodium resources. Na3V2(PO4)2F3 (NVPF), a cathode material for sodium ion batteries, is attracting attention from its rate capability and high working voltage, but its low discharge capacity is one of the challenges. In this work, we aim to design a high-capacity NASICON-type cathode of sodium-ion battery by discovering element combinations that can stabilize the sodium excess phase in NVPFs. For the efficient discovery of element combinations, we propose a Bayesian optimization-based algorithm for chemical composition discovery. Specifically, we propose an element mapping technique to solve the limitation of Bayesian optimization in discovering chemical composition. By constructing a chemical space applicable to Bayesian optimization through element mapping and optimizing the constructed chemical space, we found optimal binary element combinations. This work not only offers insights into designing high-capacity cathodes, but also demonstrates the efficacy of the proposed algorithm in data-driven materials design.
Comment: 20 pages, 5 figures
Document Type: Working Paper
Access URL: http://arxiv.org/abs/2411.01117
Accession Number: edsarx.2411.01117
Database: arXiv
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