Literature DB >> 35576674

Applying Classical, Ab Initio, and Machine-Learning Molecular Dynamics Simulations to the Liquid Electrolyte for Rechargeable Batteries.

Nan Yao1, Xiang Chen1, Zhong-Heng Fu1, Qiang Zhang1.   

Abstract

Rechargeable batteries have become indispensable implements in our daily life and are considered a promising technology to construct sustainable energy systems in the future. The liquid electrolyte is one of the most important parts of a battery and is extremely critical in stabilizing the electrode-electrolyte interfaces and constructing safe and long-life-span batteries. Tremendous efforts have been devoted to developing new electrolyte solvents, salts, additives, and recipes, where molecular dynamics (MD) simulations play an increasingly important role in exploring electrolyte structures, physicochemical properties such as ionic conductivity, and interfacial reaction mechanisms. This review affords an overview of applying MD simulations in the study of liquid electrolytes for rechargeable batteries. First, the fundamentals and recent theoretical progress in three-class MD simulations are summarized, including classical, ab initio, and machine-learning MD simulations (section 2). Next, the application of MD simulations to the exploration of liquid electrolytes, including probing bulk and interfacial structures (section 3), deriving macroscopic properties such as ionic conductivity and dielectric constant of electrolytes (section 4), and revealing the electrode-electrolyte interfacial reaction mechanisms (section 5), are sequentially presented. Finally, a general conclusion and an insightful perspective on current challenges and future directions in applying MD simulations to liquid electrolytes are provided. Machine-learning technologies are highlighted to figure out these challenging issues facing MD simulations and electrolyte research and promote the rational design of advanced electrolytes for next-generation rechargeable batteries.

Entities:  

Year:  2022        PMID: 35576674     DOI: 10.1021/acs.chemrev.1c00904

Source DB:  PubMed          Journal:  Chem Rev        ISSN: 0009-2665            Impact factor:   60.622


  2 in total

Review 1.  Molecular Modeling in Anion Exchange Membrane Research: A Brief Review of Recent Applications.

Authors:  Mirat Karibayev; Sandugash Kalybekkyzy; Yanwei Wang; Almagul Mentbayeva
Journal:  Molecules       Date:  2022-06-02       Impact factor: 4.927

2.  Significance of Antisolvents on Solvation Structures Enhancing Interfacial Chemistry in Localized High-Concentration Electrolytes.

Authors:  Yanzhou Wu; Aiping Wang; Qiao Hu; Hongmei Liang; Hong Xu; Li Wang; Xiangming He
Journal:  ACS Cent Sci       Date:  2022-08-31       Impact factor: 18.728

  2 in total

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