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Main Authors: Ganti, Subhash V. S., Woelfel, Lukas, Kuenneth, Christopher
Format: Preprint
Published: 2025
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Online Access:https://arxiv.org/abs/2502.13899
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author Ganti, Subhash V. S.
Woelfel, Lukas
Kuenneth, Christopher
author_facet Ganti, Subhash V. S.
Woelfel, Lukas
Kuenneth, Christopher
contents The use of transition group metals in electric batteries requires extensive usage of critical elements like lithium, cobalt and nickel, which poses significant environmental challenges. Replacing these metals with redox-active organic materials offers a promising alternative, thereby reducing the carbon footprint of batteries by one order of magnitude. However, this approach faces critical obstacles, including the limited availability of suitable redox-active organic materials and issues such as lower electronic conductivity, voltage, specific capacity, and long-term stability. To overcome the limitations for lower voltage and specific capacity, a machine learning (ML) driven battery informatics framework is developed and implemented. This framework utilizes an extensive battery dataset and advanced ML techniques to accelerate and enhance the identification, optimization, and design of redox-active organic materials. In this contribution, a data-fusion ML coupled meta learning model capable of predicting the battery properties, voltage and specific capacity, for various organic negative electrodes and charge carriers (positive electrode materials) combinations is presented. The ML models accelerate experimentation, facilitate the inverse design of battery materials, and identify suitable candidates from three extensive material libraries to advance sustainable energy-storage technologies.
format Preprint
id arxiv_https___arxiv_org_abs_2502_13899
institution arXiv
publishDate 2025
record_format arxiv
spellingShingle AI-Driven Discovery of High Performance Polymer Electrodes for Next-Generation Batteries
Ganti, Subhash V. S.
Woelfel, Lukas
Kuenneth, Christopher
Materials Science
Machine Learning
Applied Physics
The use of transition group metals in electric batteries requires extensive usage of critical elements like lithium, cobalt and nickel, which poses significant environmental challenges. Replacing these metals with redox-active organic materials offers a promising alternative, thereby reducing the carbon footprint of batteries by one order of magnitude. However, this approach faces critical obstacles, including the limited availability of suitable redox-active organic materials and issues such as lower electronic conductivity, voltage, specific capacity, and long-term stability. To overcome the limitations for lower voltage and specific capacity, a machine learning (ML) driven battery informatics framework is developed and implemented. This framework utilizes an extensive battery dataset and advanced ML techniques to accelerate and enhance the identification, optimization, and design of redox-active organic materials. In this contribution, a data-fusion ML coupled meta learning model capable of predicting the battery properties, voltage and specific capacity, for various organic negative electrodes and charge carriers (positive electrode materials) combinations is presented. The ML models accelerate experimentation, facilitate the inverse design of battery materials, and identify suitable candidates from three extensive material libraries to advance sustainable energy-storage technologies.
title AI-Driven Discovery of High Performance Polymer Electrodes for Next-Generation Batteries
topic Materials Science
Machine Learning
Applied Physics
url https://arxiv.org/abs/2502.13899