MoS 2 Defect Healing for High-Performance Chemical Sensing of Polycyclic Aromatic Hydrocarbons.

ACS nano(2022)

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摘要
The increasing population and industrial development are responsible for environmental pollution. Among toxic chemicals, polycyclic aromatic hydrocarbons (PAHs) are highly carcinogenic contaminants resulting from the incomplete combustion of organic materials. Two-dimensional materials, such as transition metal dichalcogenides (TMDCs), are ideal sensory scaffolds, combining high surface-to-volume ratio with physical and chemical properties that are strongly susceptible to environmental changes. TMDCs can be integrated in field-effect transistors (FETs), which can operate as high-performance chemical detectors of (non)covalent interaction with small molecules. Here, we have developed MoS-based FETs as platforms for PAHs sensing, relying on the affinity of the planar polyaromatic molecules for the basal plane of MoS and the structural defects in its lattice. X-ray photoelectron spectroscopy analysis, photoluminescence measurements, and transfer characteristics showed a notable reduction in the defectiveness of MoS and a p-type doping upon exposure to PAHs solutions, with a magnitude determined by the correlation between the ionization energies () of the PAH and that of MoS. Naphthalene, endowed with the higher among the studied PAHs, exhibited the highest output. We observed a log-log correlation between MoS doping and naphthalene concentration in water in a wide range (10-10 M), as well as a reversible response to the analyte. Naphthalene concentrations as low as 0.128 ppb were detected, being below the limits imposed by health regulations for drinking water. Furthermore, our MoS devices can reversibly detect vapors of naphthalene with both an electrical and optical readout, confirming that our architecture could operate as a dual sensing platform.
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关键词
MoS2,defect healing,doping,field-effect transistors,polycyclic aromatic hydrocarbons,sensing,transition metal dichalcogenides
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