Boosting Zn2+ Kinetics Via the Multifunctional Pre-Desolvation Interface for Dendrite-Free Zn Anodes
JOURNAL OF ENERGY CHEMISTRY(2023)
Zhejiang Univ
Abstract
Aqueous zinc ion batteries(AZIBs) are an advanced secondary battery technology to supplement lithiumion batteries.It has been widely concerned and developed recently based on the element abundance and safety advantages.However,AZIBs still suffer from serious problems such as dendrites Zn,hydrogen evolution corrosion,and surface passivation,which hinder the further commercial application of AZIBs.Herein,an in-situ ZnCr 2 O 4 (ZCO) interface endows AZIBs with dendrite-free and ultra-low polarization by realizing Zn 2+ pre-desolvation,constraining H 2 O-induced corrosio n,and boosting Zn 2+ transport/deposition kinetics.The ZCO@Zn anode harvests an ultrahigh cumulative capacity of~20000 mA h cm -2 (cycle time:over 4000 h) at a high current density of 10 mA cm -2 ,indicating excellent reversibility of Zn deposition,Such superior performance is among the best cyclability in AZIBs.Moreover,the multifunctional ZCO interface improves the Coulombic efficiency(CE) to 99.7% for more than 2600 cycles.The outstanding electrochemical performance is also verified by the long-term cycle stability of ZCO@Zn//α-MnO 2 full cells.Notably,the as-proposed method is efficient and low-cost enough to enable mass production.This work provides new insights into the uniform Zn electrodeposition at the scale of interfacial Zn 2+ predesolvation and kinetics improvement.
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Key words
Zinc ion battery,Dendrite-free Zn anode,In-situ reaction,Pre-desolvation,Zn2+kinetics
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