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Inicio  /  Water  /  Vol: 15 Par: 24 (2023)  /  Artículo
ARTÍCULO
TITULO

ZnO-CuO Nanocomposite as an Efficient Adsorbent for As(III) Removal from Water

Jesús Plácido Medina Salas    
Francisco Gamarra Gómez    
Elisban Juani Sacari Sacari    
Wilson Orlando Lanchipa Ramos    
Rocío María Tamayo Calderón    
Efracio Mamani Flores    
Víctor Yapuchura Platero    
Walter Dimas Florez Ponce de León and Elmer Marcial Limache Sandoval    

Resumen

Arsenic (III) exposure, often from contaminated water, can have severe health repercussions. Chronic exposure to this toxic compound is linked to increased risks of various health issues. Various technologies exist for arsenic (III) removal from contaminated water sources. This work synthesized ZnO-CuO nanocomposites through ultrasound-assisted coprecipitation, generating abundant hydroxylated sites via the deposition of ZnO nanoparticles onto CuO sheets for enhanced arsenic (III) adsorption. Structural characterization verified the formation of phase-pure heterostructures with emergent properties. Batch studies demonstrated exceptional 85.63% As(III) removal at pH 5, where binding with prevalent neutral H3AsO3 occurred through inner-sphere complexation with protonated groups. However, competing anions decreased removal through site blocking. Favorable pseudo-second order chemisorption kinetics and the 64.77 mg/g maximum Langmuir capacity revealed rapid multilayer uptake, enabled by intrinsic synergies upon nanoscale mixing of Zn/Cu oxides. The straightforward, energy-efficient ultrasonic production route makes this material promising for real-world water treatment integration.

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