Litcius/Paper detail

Self‐Healing Mechanism of Lithium in Lithium Metal

Junyu Jiao, Genming Lai, Liang Zhao, Jiaze Lu, Qidong Li, Xianqi Xu, Yao Jiang, Yan‐Bing He, Chuying Ouyang, Feng Pan, Hong Li, Jiaxin Zheng

2022Advanced Science53 citationsDOIOpen Access PDF

Abstract

Li is an ideal anode material for use in state-of-the-art secondary batteries. However, Li-dendrite growth is a safety concern and results in low coulombic efficiency, which significantly restricts the commercial application of Li secondary batteries. Unfortunately, the Li-deposition (growth) mechanism is poorly understood on the atomic scale. Here, machine learning is used to construct a Li potential model with quantum-mechanical computational accuracy. Molecular dynamics simulations in this study with this model reveal two self-healing mechanisms in a large Li-metal system, viz. surface self-healing, and bulk self-healing. It is concluded that self-healing occurs rapidly in nanoscale; thus, minimizing the voids between the Li grains using several comprehensive methods can effectively facilitate the formation of dendrite-free Li.

Topics & Concepts

Self-healingLithium (medication)Materials scienceAnodeDendrite (mathematics)NanotechnologyFaraday efficiencyLithium metalMechanism (biology)MetalNanoscopic scaleDeposition (geology)Molecular dynamicsChemical physicsChemistryMetallurgyComputational chemistryPhysicsPhysical chemistryMathematicsMedicineGeometryPathologyEndocrinologySedimentBiologyAlternative medicinePaleontologyElectrodeQuantum mechanicsAdvanced Battery Materials and TechnologiesAdvancements in Battery MaterialsMachine Learning in Materials Science
Self‐Healing Mechanism of Lithium in Lithium Metal | Litcius