期刊
SURFACE & COATINGS TECHNOLOGY
卷 421, 期 -, 页码 -出版社
ELSEVIER SCIENCE SA
DOI: 10.1016/j.surfcoat.2021.127400
关键词
Electroplating; Mixed dispersion coating; Nanocrystalline nickel; Microhardness; Wear; Self-lubrication
资金
- project FunDisCo - Stiftelsen for Kunskapsoch Kompetensutveckling, Sweden [20310117]
Ni-based mixed particles composite coatings are designed for superior wear resistance by combining hard carbides and solid lubricants. The presence of MoS2 particles leads to nanocrystallinity in the nickel matrix, resulting in extremely high hardness of approximately 1110 HV and self-lubrication capability.
Ni-based mixed particles composite coatings were designed to achieve superior wear resistance by combining hard carbides and solid lubricants as a reinforcing particles mix. Pure nickel and single-particles composites were electrodeposited in the same conditions for benchmarking. A pre-study was carried out to optimise the current density to avoid loss of process efficiency due to hydrogen evolution. The production process was also improved by employing ultrasounds to avoid porosity and dendritic growth in the metal caused by conductive MoS2 particles. The presence of MoS2 particles led to nanocrystallinity in the nickel matrix, confirmed by electron backscatter diffraction (EBSD) maps and transmission electron microscopy (TEM). The microstructural changes and codeposition in the different composites were correlated to microhardness and pin-on-disc tests. An extremely high hardness was observed in the mixed particles composite (approximate to 1110 HV) due to the combined effect of the nanocrystalline matrix and high codeposition rate (approximate to 15 vol% SiC and approximate to 8 vol% MoS2). The codeposition of MoS2 particles provided a self-lubrication capability to the coating, reducing the friction coefficient compared to pure Ni from 0.15 to 0.07. The wear rate was reduced more than 12 times by the mixed reinforcement compared to pure Ni and more than 6 times compared to Ni-SiC.
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