利用层次均质化和前馈神经网络确定电极材料最佳混合比以获得最佳锂离子电池性能的新数值方法

IF 5.3 3区 工程技术 Q1 ENGINEERING, MANUFACTURING International Journal of Precision Engineering and Manufacturing-Green Technology Pub Date : 2024-05-13 DOI:10.1007/s40684-024-00628-6
Boil Seo, Cheol Kim
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引用次数: 0

摘要

电极材料的组成会改变电极的有效电导率(EEC)和容量,从而对锂离子电池(LIB)的性能产生重大影响。本研究旨在开发一种更高效的数值优化方法,将分层均质化和前馈神经网络 (FNN) 整合在一起,以确定电极材料的最佳成分。目前,这种确定方法在很大程度上依赖于进行多次实验。根据其配方,阴极的 EEC 可通过对其成分进行分层均质化来评估。在均质化过程中使用 FNN 加快了优化速度。通过分层均质化和 Doyle/Fuller/Newman 模型,根据阴极配方对 LIB 电池的性能进行评估。使用改进的 NSGA-II 提出并解决了多目标优化问题。由此得出的帕累托最优解确定了功率优化电池和能量优化电池。与初始电池相比,前者的功率密度提高了 51%,而能量密度保持不变;后者的能量密度提高了 68%,而功率密度保持不变。
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New Numerical Approach to Determine the Optimum Mixing Ratio of Electrode Materials for Maximum Li-ion Battery Performance by the Hierarchical Homogenization and Feedforward Neural Networks

The effective electrical conductivity (EEC) and capacity of the electrodes are altered by the composition of electrode materials, leading to a significant impact on the performance of the Li-ion battery (LIB) cells. This study aims to develop a more efficient numerical optimization method that integrates hierarchical homogenization and feedforward neural networks (FNN) to identify the optimal composition of electrode materials. Currently, this determination heavily relies on conducting multiple experiments. The cathode's EEC, as per its formulation, is assessed through hierarchical homogenization of its components. The optimization is expedited using FNN in the homogenization. The LIB cell's performance is evaluated based on the cathode formulation via the hierarchical homogenization and the Doyle/Fuller/Newman model. The multi-objective optimization problem is formulated and solved using the modified NSGA-II. The resulting Pareto-optimal solutions identify the power optimized and energy optimized cells. The power density of the former is increased by 51% while maintaining the same energy density and the latter cell's energy density is increased by 68% while maintaining the same power density, as compared to the initial cell.

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来源期刊
CiteScore
10.30
自引率
9.50%
发文量
65
审稿时长
5.3 months
期刊介绍: Green Technology aspects of precision engineering and manufacturing are becoming ever more important in current and future technologies. New knowledge in this field will aid in the advancement of various technologies that are needed to gain industrial competitiveness. To this end IJPEM - Green Technology aims to disseminate relevant developments and applied research works of high quality to the international community through efficient and rapid publication. IJPEM - Green Technology covers novel research contributions in all aspects of "Green" precision engineering and manufacturing.
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