锂(药物)
沉积(地质)
扩散
材料科学
枝晶(数学)
电解质
阳极
动力学
化学镀
人工神经网络
生物系统
热力学
多层感知器
金属锂
活化能
计算机科学
统计物理学
纳米技术
人工智能
感知器
化学物理
能量(信号处理)
电流(流体)
金属
作者
Jiayue Guo,Wang Lv,Kang Liu,Huidong Liu,Peihua Yang
标识
DOI:10.1021/acsenergylett.5c03229
摘要
Lithium metal anodes offer exceptionally high energy density but are hindered by dendrite growth, which compromises safety and stability. Temperature, a critical yet complex factor, influences both ion diffusion and interfacial reaction kinetics, but its overall effect remains undetermined. Herein, aphase-field model incorporating Arrhenius-type diffusion and kinetics was developed to investigate the influence of temperature on lithium deposition stability. To overcome the limitations of high computational cost, a multilayer perceptron was trained on phase-field simulation data to predict and interpolate the stable deposition capacity across a broad parameter space. The model identifies optimal temperature ranges corresponding to different combinations of diffusion and kinetics parameters, revealing a nonmonotonic temperature dependence of dendrite formation. This machine-learning-assisted framework provides quantitative insight into temperature-governed deposition behavior and offers guidance for electrolyte engineering and operational strategies in high-energy lithium–metal batteries.
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