Mussel Inspired Modification of Polypropylene Separators by Catechol/Polyamine for Li-Ion Batteries

Hao Wang(Beijing National Laboratory for Molecular Sciences), Junjie Wu(Beijing National Laboratory for Molecular Sciences), Chao Cai(Chinese Academy of Sciences), Jing Guo(Institute of Chemistry), Haosen Fan(Chinese Academy of Sciences), Caizhen Zhu(University of Chinese Academy of Sciences), Haixia Dong(Institute of Chemistry), Ning Zhao(University of Chinese Academy of Sciences), Jian Xu(University of Chinese Academy of Sciences)
ACS Applied Materials & Interfaces
March 31, 2014
Cited by 178

Abstract

Inspired by the remarkable adhesion of mussel, dopamine, a mimicking adhesive molecule, has been widely used for surface modification of various materials ranging from organic to inorganic. However, dopamine and its derivatives are expensive which impede their application in large scale. Herein, we replaced dopamine with low-cost catechol and polyamine (only 8% of the cost of dopamine), which could be polymerized in an alkaline solution and deposited on the surfaces of various materials. By using this cheap and simple modification method, polypropylene (PP) separator could be transformed from hydrophobic to hydrophilic, while the pore structure and mechanical property of the separator remained intact. The uptake of electrolyte increased from 80% to 270% after the hydrophilic modification. Electrochemical studies demonstrated that battery with the modified PP separator had a better Coulombic efficiency (80.9% to 85.3%) during the first cycle at a current density of 0.1 C, while the discharging current density increased to 15 C and the discharge capacity increased by 1.4 times compared to the battery using the bare PP separator. Additionally, the modification allowed excellent stability during manifold cycles. This study provides new insights into utilizing low-cost chemicals to mimic the mussel adhesion and has potential practical application in many fields.


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