Dendrite-Free Lithium Deposition via Self-Healing Electrostatic Shield Mechanism

Fei Ding(Tianjin Research Institute of Electric Science (China)), Wu Xu(Pacific Northwest National Laboratory), Gordon L. Graff(Pacific Northwest National Laboratory), Jian Zhang(Pacific Northwest National Laboratory), Maria L. Sushko(Pacific Northwest National Laboratory), Xilin Chen(Pacific Northwest National Laboratory), Yuyan Shao(Pacific Northwest National Laboratory), Mark Engelhard(Pacific Northwest National Laboratory), Zimin Nie(Pacific Northwest National Laboratory), Jie Xiao(Pacific Northwest National Laboratory), Xingjiang Liu(Tianjin Research Institute of Electric Science (China)), Peter V. Sushko(University College London), Jun Liu(Pacific Northwest National Laboratory), Ji‐Guang Zhang(Pacific Northwest National Laboratory)
Journal of the American Chemical Society
February 28, 2013
Cited by 2,091

Abstract

Rechargeable lithium metal batteries are considered the "Holy Grail" of energy storage systems. Unfortunately, uncontrollable dendritic lithium growth inherent in these batteries (upon repeated charge/discharge cycling) has prevented their practical application over the past 40 years. We show a novel mechanism that can fundamentally alter dendrite formation. At low concentrations, selected cations (such as cesium or rubidium ions) exhibit an effective reduction potential below the standard reduction potential of lithium ions. During lithium deposition, these additive cations form a positively charged electrostatic shield around the initial growth tip of the protuberances without reduction and deposition of the additives. This forces further deposition of lithium to adjacent regions of the anode and eliminates dendrite formation in lithium metal batteries. This strategy may also prevent dendrite growth in lithium-ion batteries as well as other metal batteries and transform the surface uniformity of coatings deposited in many general electrodeposition processes.


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