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Fabrication of Sandwich-Structured Capacitor Containing Core@shell Polystyrene@graphene Oxide Microspheres for Switchable Removal of Dyes from Water by Dielectrophoresis Force

SEPARATION AND PURIFICATION TECHNOLOGY(2024)

Natl Taiwan Univ Sci & Technol

Cited 4|Views18
Abstract
Absorption rates for traditional adsorbents were predominately determined by the concentration gradient from bulk to absorbents and surface area. A novel sandwich-structured capacitor (SSC) containing adsorbents is designed to reduce the time consuming of absorption of pollutants by dielectrophoresis force (F-DEP). Graphene oxide (GO) are coated on polystyrene microspheres (PSs) as the core/shell PS@GO adsorbents that were encapsulated within the SSC to treat the solution of dye-emulsified micells (DEM). The F-DEP results the assem-bling of PS@GOs and DEMs under polarization and enhance the adsorption rate ca. 1 similar to 2 times with polarization at 3 V and 200 kHz. Additionally, most adsorbents are recycled with secondary pollution. Only two-fifth pure water volume of the wastewater through the SSC could achieve the recycling of the adsorbents at 900 kHz. The high complex permittivity of GO coating at high frequency allows ultrafast alternative spinning of the induced dipoles in the PS@GOs facilitates desorption and hinders the re-adsorption of the DEM during the recycling of PS@GOs. The PS@GOs was reused ca. 10 times at 20 mL min(-1) of flow rate through the SSC without damages between 200 and 900 kHz. The designed SSC containing PS@GOs accomplishes either reusing of adsorbents or concentrating of dyes with low secondary pollution in practice through frequency manipulation.
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Key words
Graphene oxide,Capacitor,Dye adsorbent,Sandwich-structured
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