Model-Driven Manufacturing of High-Energy-Density Batteries: A Review

IF 5.1 4区 材料科学 Q2 ELECTROCHEMISTRY
Daria Maksimovna Vakhrusheva, Jun Xu
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引用次数: 0

Abstract

The rapid advancement in energy storage technologies, particularly high-energy density batteries, is pivotal for diverse applications ranging from portable electronics to electric vehicles and grid storage. This review paper provides a comprehensive analysis of the recent progress in model-driven manufacturing approaches for high-energy-density batteries, highlighting the integration of computational models and simulations with experimental manufacturing processes to optimize performance, reliability, safety, and cost-effectiveness. We systematically examine various modeling techniques, including electrochemical, thermal, and mechanical models, and their roles in elucidating the complex interplay of materials, design, and manufacturing parameters. The review also discusses the challenges and opportunities in scaling up these model-driven approaches, addressing key issues such as model validation, parameter sensitivity, and the integration of machine learning and artificial intelligence for predictive modeling, process optimization, and quality assurance. By synthesizing current research findings and industry practices, this paper aims to outline a roadmap for future developments in model-driven manufacturing of high-energy density batteries, emphasizing the need for interdisciplinary collaboration and innovation to meet the increasing demands for energy storage solutions.

Abstract Image

高能量密度电池模型驱动制造研究进展
能源存储技术的快速发展,特别是高能量密度电池,对于从便携式电子设备到电动汽车和电网存储的各种应用至关重要。本文全面分析了高能量密度电池模型驱动制造方法的最新进展,强调了计算模型和仿真与实验制造过程的集成,以优化性能、可靠性、安全性和成本效益。我们系统地研究各种建模技术,包括电化学,热学和力学模型,以及它们在阐明材料,设计和制造参数的复杂相互作用中的作用。这篇综述还讨论了扩大这些模型驱动方法的挑战和机遇,解决了关键问题,如模型验证、参数敏感性、机器学习和人工智能的集成,用于预测建模、过程优化和质量保证。通过综合当前的研究成果和行业实践,本文旨在概述模型驱动的高能密度电池制造的未来发展路线图,强调跨学科合作和创新的必要性,以满足日益增长的能源存储解决方案的需求。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
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来源期刊
CiteScore
8.60
自引率
5.30%
发文量
223
期刊介绍: Electrochemical energy storage devices play a transformative role in our societies. They have allowed the emergence of portable electronics devices, have triggered the resurgence of electric transportation and constitute key components in smart power grids. Batteries & Supercaps publishes international high-impact experimental and theoretical research on the fundamentals and applications of electrochemical energy storage. We support the scientific community to advance energy efficiency and sustainability.
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