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A complete and effective target-based data-driven flow screening for reliable cathode materials for aluminum-ion batteries

Author

Listed:
  • Zheng, Li
  • Liu, Ruxiang
  • Zhang, Chunfang
  • Shi, Yusong
  • Man, Jianlin
  • Wang, Yaqun
  • Chang, Long
  • Cai, Mian
  • Yang, Ze
  • Du, Huiping

Abstract

Rechargeable multivalent aluminum-ion batteries (AIBs) are expected to be the alternative energy storage batteries with great promise for future development due to the abundance of aluminum elements and low cost. However, the current lack of high voltage, high capacity, high ▪ transportability, and high energy density AIBs cathode materials is a major impediment to the practical development. In this work, we develop a comprehensive and effective data-driven workflow with the starting point of screening for more reliable cathode materials for multivalent AIBs. The proposed workflow is mainly supported by machine learning (ML) algorithms and deep learning framework. Driven by data from density functional theory (DFT) calculations, and additional experimental data from the literature are added to correct for the workflow’s model errors. In the context of the current poor availability of data on various properties of AIBs, a database of 1470 promising novel inorganic cathode materials for AIBs has been created. It provides the selected material’s performance in terms of voltage, ▪ transportability. A flexible framework for extending other important unexplored features is also developed, including theoretical specific capacity (&C), energy density (&E), and max volume change parameters (&M). Finally, based on the excellent experimental performance of the ▪ -based, portions of which are subjected for DFT calculation for verifying the workflow’s interpretability, and all of the selected ▪ -based obtain a better voltage plateau with a lower diffusion barrier. The presented work demonstrates a valuable experimental reference for the progress of cathode materials for AIBs and offers possible new avenues for accelerating the progress of inorganic cathode materials.

Suggested Citation

  • Zheng, Li & Liu, Ruxiang & Zhang, Chunfang & Shi, Yusong & Man, Jianlin & Wang, Yaqun & Chang, Long & Cai, Mian & Yang, Ze & Du, Huiping, 2024. "A complete and effective target-based data-driven flow screening for reliable cathode materials for aluminum-ion batteries," Applied Energy, Elsevier, vol. 376(PB).
  • Handle: RePEc:eee:appene:v:376:y:2024:i:pb:s0306261924015654
    DOI: 10.1016/j.apenergy.2024.124182
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    1. Chuan Wu & Sichen Gu & Qinghua Zhang & Ying Bai & Matthew Li & Yifei Yuan & Huali Wang & Xinyu Liu & Yanxia Yuan & Na Zhu & Feng Wu & Hong Li & Lin Gu & Jun Lu, 2019. "Electrochemically activated spinel manganese oxide for rechargeable aqueous aluminum battery," Nature Communications, Nature, vol. 10(1), pages 1-10, December.
    2. Wen, Lulu & Zhou, Kaile & Yang, Shanlin & Lu, Xinhui, 2019. "Optimal load dispatch of community microgrid with deep learning based solar power and load forecasting," Energy, Elsevier, vol. 171(C), pages 1053-1065.
    3. Tian Xie & Arthur France-Lanord & Yanming Wang & Jeffrey Lopez & Michael A. Stolberg & Megan Hill & Graham Michael Leverick & Rafael Gomez-Bombarelli & Jeremiah A. Johnson & Yang Shao-Horn & Jeffrey C, 2022. "Accelerating amorphous polymer electrolyte screening by learning to reduce errors in molecular dynamics simulated properties," Nature Communications, Nature, vol. 13(1), pages 1-10, December.
    4. Yuanhe Song & Zheng Chen & Qinghua Zhang & Haichao Xu & Xia Lou & Xiaoyang Chen & Xiaofeng Xu & Xuetao Zhu & Ran Tao & Tianlun Yu & Hao Ru & Yihua Wang & Tong Zhang & Jiandong Guo & Lin Gu & Yanwu Xie, 2021. "High temperature superconductivity at FeSe/LaFeO3 interface," Nature Communications, Nature, vol. 12(1), pages 1-8, December.
    5. Meng-Chang Lin & Ming Gong & Bingan Lu & Yingpeng Wu & Di-Yan Wang & Mingyun Guan & Michael Angell & Changxin Chen & Jiang Yang & Bing-Joe Hwang & Hongjie Dai, 2015. "An ultrafast rechargeable aluminium-ion battery," Nature, Nature, vol. 520(7547), pages 324-328, April.
    6. Li, Yi & Zou, Changfu & Berecibar, Maitane & Nanini-Maury, Elise & Chan, Jonathan C.-W. & van den Bossche, Peter & Van Mierlo, Joeri & Omar, Noshin, 2018. "Random forest regression for online capacity estimation of lithium-ion batteries," Applied Energy, Elsevier, vol. 232(C), pages 197-210.
    7. Foley, Aoife M. & Leahy, Paul G. & Marvuglia, Antonino & McKeogh, Eamon J., 2012. "Current methods and advances in forecasting of wind power generation," Renewable Energy, Elsevier, vol. 37(1), pages 1-8.
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