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Get Free AccessThis work focuses on capillary-induced collapse of high-aspect-ratio silicon nanopillars. Modification of the surface chemistry is demonstrated to be an efficient approach for reducing capillary forces and consequently reduce pattern collapse. Special effort is spent on determination of the wetting state of chemically modified surfaces as complete structure wetting is of utmost importance in wet processing. In light of this, an ATR-FTIR based method has been developed to unambiguously distinguish between wetting and non-wetting states.
Nandi Vrancken, Guy Vereecke, Stef Bal, Stefanie Sergeant, Geert Doumen, Frank Holsteyns, Herman Terryn, Stefan De Gendt, XiuMei Xu (2016). Pattern Collapse of High-Aspect-Ratio Silicon Nanostructures - A Parametric Study. Diffusion and defect data, solid state data. Part B, Solid state phenomena/Solid state phenomena, 255, pp. 136-140, DOI: 10.4028/www.scientific.net/ssp.255.136.
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Type
Article
Year
2016
Authors
9
Datasets
0
Total Files
0
Language
English
Journal
Diffusion and defect data, solid state data. Part B, Solid state phenomena/Solid state phenomena
DOI
10.4028/www.scientific.net/ssp.255.136
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