High‐resolved Surface‐enhanced Raman Scattering on Ag@TiO2 Plasmonic Nanostructure
JOURNAL OF THE AMERICAN CERAMIC SOCIETY(2024)
Beijing Univ Posts & Telecommun
Abstract
Surface-enhanced Raman scattering (SERS) is an ultrasensitive spectroscopic analysis technique widely used for molecule detection. However, manufacturing uniform, stable, and ultrasensitive substrates remains a challenge for the practical application of the SERS technology. Precious metals and semiconductors have been proved to be attractive and universal for SERS detection. In this work, a facile strategy is applied to prepare uniform three-dimensional (3D) Ag@TiO2 nanostructures as SERS sensors. The Scanning electron microscopy and X-ray photoelectron spectroscopy results indicate that silver nanoparticles are uniformly deposited into the pores of the TiO2 nanocavity arrays. The 3D hybrid substrate presents highly sensitive SERS signals of 4-mercaptobenzoicacid (4-MBA) with a detection limitation as low as 10(-17) M. To prevent the oxidization of Ag and keep the activity of the film, a polymer mask was deposited on the SERS substrate and brought about excellent stability after weeks of reserving in air. In a nutshell, a SERS substrate with a high sensitivity and stability as well as good uniformity has been successfully developed in this work, which has a potential application for high-precision SERS detection.
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Key words
Ag nanoparticles,polymer coating,SERS,TiO2 nanocavity arrays
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