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Modulating particle adhesion with micro-patterned surfaces.

作者信息

Yu Cong, Ma Jianwei, Zhang Jiangnan, Lou Jun, Wen Donghui, Li Qilin

机构信息

Department of Civil and Environmental Engineering, Rice University , Houston, Texas 77005, United States.

出版信息

ACS Appl Mater Interfaces. 2014 Jun 11;6(11):8199-207. doi: 10.1021/am500887w. Epub 2014 May 19.

Abstract

We report the first experimental study on the modulation of adhesion force distribution by surface micro-patterns and its impact on particle attachment. The effect of substratum topography on particle adhesion was evaluated using well-defined microscopic surface patterns consisting of orthogonal arrays of cuboid pillars or pits with different sizes and spacing fabricated by the conventional photolithography and reactive ion etching (RIE). Adhesion of carboxyl modified poly(styrene-co-acrylic-acid) particles of 6 μm in diameter under favorable deposition conditions was found to be markedly lower on all the micro-patterned surfaces compared with that on the smooth control surface, and particle adhesion depended on the characteristic dimensions of the surface micro-structures relative to the particle size. Particle adhesion was minimal when the pillar cross-sectional dimension was below a critical value close to the diameter of the particle while the spacing between pillars was less important. Meanwhile, particles adhered displayed unique distribution on the micro-patterned surfaces. The majority of particles preferentially adhered on or close to the edge of the pillars (in the valley). Atomic force microscopy measurements using a colloidal probe revealed that the surface features strongly modulated the spatial and probability distribution of adhesion forces on the micro-patterned surfaces. Micro-sized pillars changed the adhesion force probability distribution from monomodal to bimodal, with significantly reduced maximum adhesion force. This was hypothesized to be responsible for the reduced total particle adhesion.

摘要

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