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Capacitive tendency concept alongside supervised machine-learning toward classifying electrochemical behavior of battery and pseudocapacitor materials

Author

Listed:
  • Siraprapha Deebansok

    (VISTEC, Institute of Science and Technology)

  • Jie Deng

    (Chengdu University)

  • Etienne Calvez

    (Nantes Université, CNRS, Institut des Matériaux de Nantes Jean Rouxel, IMN
    CNRS FR 3459, 33 rue Saint Leu)

  • Yachao Zhu

    (ICGM, Université de Montpellier, CNRS)

  • Olivier Crosnier

    (Nantes Université, CNRS, Institut des Matériaux de Nantes Jean Rouxel, IMN
    CNRS FR 3459, 33 rue Saint Leu)

  • Thierry Brousse

    (Nantes Université, CNRS, Institut des Matériaux de Nantes Jean Rouxel, IMN
    CNRS FR 3459, 33 rue Saint Leu)

  • Olivier Fontaine

    (VISTEC, Institute of Science and Technology
    Institut Universitaire de France)

Abstract

In recent decades, more than 100,000 scientific articles have been devoted to the development of electrode materials for supercapacitors and batteries. However, there is still intense debate surrounding the criteria for determining the electrochemical behavior involved in Faradaic reactions, as the issue is often complicated by the electrochemical signals produced by various electrode materials and their different physicochemical properties. The difficulty lies in the inability to determine which electrode type (battery vs. pseudocapacitor) these materials belong to via simple binary classification. To overcome this difficulty, we apply supervised machine learning for image classification to electrochemical shape analysis (over 5500 Cyclic Voltammetry curves and 2900 Galvanostatic Charge-Discharge curves), with the predicted confidence percentage reflecting the shape trend of the curve and thus defined as a manufacturer. It’s called “capacitive tendency”. This predictor not only transcends the limitations of human-based classification but also provides statistical trends regarding electrochemical behavior. Of note, and of particular importance to the electrochemical energy storage community, which publishes over a hundred articles per week, we have created an online tool to easily categorize their data.

Suggested Citation

  • Siraprapha Deebansok & Jie Deng & Etienne Calvez & Yachao Zhu & Olivier Crosnier & Thierry Brousse & Olivier Fontaine, 2024. "Capacitive tendency concept alongside supervised machine-learning toward classifying electrochemical behavior of battery and pseudocapacitor materials," Nature Communications, Nature, vol. 15(1), pages 1-9, December.
  • Handle: RePEc:nat:natcom:v:15:y:2024:i:1:d:10.1038_s41467-024-45394-w
    DOI: 10.1038/s41467-024-45394-w
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    References listed on IDEAS

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    1. Simon Fleischmann & Yuan Zhang & Xuepeng Wang & Peter T. Cummings & Jianzhong Wu & Patrice Simon & Yury Gogotsi & Volker Presser & Veronica Augustyn, 2022. "Continuous transition from double-layer to Faradaic charge storage in confined electrolytes," Nature Energy, Nature, vol. 7(3), pages 222-228, March.
    2. Yunwei Zhang & Qiaochu Tang & Yao Zhang & Jiabin Wang & Ulrich Stimming & Alpha A. Lee, 2020. "Identifying degradation patterns of lithium ion batteries from impedance spectroscopy using machine learning," Nature Communications, Nature, vol. 11(1), pages 1-6, December.
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