Solar hydrogen peroxide production on carbon nanotubes wired to titania nanorod arrays catalyzing As(III) oxidation
- Authors
- Choi, Seung Yo; Kim, Seonghun; Lee, Kyung Jin; Kim, Jin Young; Han, Dong Suk; Park, Hyunwoong
- Issue Date
- 2019-09-05
- Publisher
- ELSEVIER
- Citation
- APPLIED CATALYSIS B-ENVIRONMENTAL, v.252, pp.55 - 61
- Abstract
- We present an off-grid, standalone electrocatalytic H2O2 production reaction (HPR) using carbon nanotubes (CNT) wired to hydrogen-treated TiO2 nanorod (h-TNR) arrays catalyzing the oxidation of As(III) to As(V) under simulated solar light (AM 1.5; 100 mW cm(-2)). Loading CNT onto acid-treated carbon paper (a-CP) significantly enhances the catalytic 2-electron transfer to O-2, leading to a Faradaic efficiency (FE) of similar to 100% for the HPR. To drive the HPR, the 2-electron oxidation of toxic As(III) to less toxic As(V) that accompanies the production of the proton/electron couples is achieved at an FE of > 80% using the h-TNR arrays. The high FEs of the anodic and cathodic reactions are maintained over 10 h when a direct-current voltage of 0.7 V is applied to the h-TNR photoanode and CNT/a-CP cathode pair. The coupling of a mono-Si photovoltaic array that is one-tenth the size of h-TNR photoanode to the pair of h-TNR and CNT/a-CP successfully drives the standalone operation of both reactions at the high FEs (> 90%). The surface characterization of the as-synthesized materials and the reaction mechanism are discussed in detail.
- Keywords
- OXYGEN REDUCTION REACTION; ELECTROCHEMICAL GENERATION; H2O2; ARSENITE; LAYERS; OXYGEN REDUCTION REACTION; ELECTROCHEMICAL GENERATION; H2O2; ARSENITE; LAYERS; Artificial photosynthesis; Oxygen reduction reaction; Arsenic oxidation; Carbon electrode; TiO2 nanorod arrays
- ISSN
- 0926-3373
- URI
- https://pubs.kist.re.kr/handle/201004/119584
- DOI
- 10.1016/j.apcatb.2019.03.060
- Appears in Collections:
- KIST Article > 2019
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