Charge distribution modulation and morphology controlling of copper selenide for an enhanced elemental mercury adsorption activity in flue gas

CHEMICAL ENGINEERING JOURNAL(2022)

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摘要
The abatement of elemental mercury (Hg0) emissions from industrial flue gases remains an enormous challenge. Metal selenides have been demonstrated to be promising Hg0 remediators, and the electron-transfer ability of selenide ligands is one of the key factors that determining the uptake capacity and adsorption rate of Hg0. Herein, a charge distribution modulation strategy was developed to generate desired selenide ligands. The selenide ligands on a tutorial sample, copper selenide (Cu2Se), was artificially modulated to -1 valances (Se1-) via electrostatic adsorption of positively charged head groups of cetyltrimethylammonium bromide (CTAB). Unlike other selenide ligand such as Se2-, the Se1- directly acted as an electron acceptor for Hg0 and realize one-step immobilization of Hg0 as environmentally stable mercury selenide (HgSe). Besides, CTAB was beneficial to construct nanosheets with thinner and larger plates, hence facilitated a sufficient exposure of active sites for binding Hg0. Profiting from the above advantages, the Hg0 adsorption capacity of CTAB modulated Cu2Se (Cu2Se-CTAB) was up to 80.2 mg center dot g- 1, about two times higher than that of bare Cu2Se. Meanwhile, the average Hg0 adsorption rate of Cu2Se-CTAB before achieving saturation was 9.99 mg center dot g- 1 center dot h- 1, much faster comparing with 6.90 mg center dot g- 1 center dot h- 1 for regular Cu2Se. The Cu2Se-CTAB showed superior Hg0 adsorption performance at 40-80 degrees C and excellent resistance to flue gas interference, which are crucial for real-world applications. This newly designed method not only provides an excellent Hg0 remediator but also offers a tutorial example for a rational modulation of metal selenides for diverse environmental remediations.
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关键词
Elemental mercury,Selenide,Charge distribution,Coal combustion,Flue gas
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