Guochao Shi
Yanshan University
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Featured researches published by Guochao Shi.
Chinese Physics B | 2018
Yuhong Wang; Mingli Wang; Lin Shen; Yanying Zhu; Xin Sun; Guochao Shi; Xiaona Xu; Ruifeng Li; Wanli Ma
Noble metal nanorough surfaces that support strong surface-enhanced Raman scattering (SERS) is widely applied in the practical detection of organic molecules. A low-cost, large-area, and environment-friendly SERS-active substrate was acquired by sputtering inexpensive copper (Cu) on natural dragonfly wing (DW) with an easily controlled way of magnetron sputtering. By controlling the sputtering time of the fabrication of Cu on the DW, the performance of the SERS substrates was greatly improved. The SERS-active substrates, obtained at the optimal sputtering time (50 min), showed a low detection limit (10−6M) to 4-aminothiophenol (4-ATP), a high average enhancement factor (EF, , excellent signal uniformity, and good reproducibility. In addition, the results of the 3D finite-difference time-domain (3D-FDTD) simulation illustrated that the SERS-active substrates provided high-density hot spots, leading to a large SERS enhancement.
Nanomaterials | 2018
Mingli Wang; Guochao Shi; Yanying Zhu; Yuhong Wang; Wanli Ma
Rapid sampling and multicomponent analysis are vital in pesticide residue detection. In this work, we proposed a SERS platform to detect three kinds of pesticides on apple peels simultaneously by a straightforward “press and peel off” method. The flexible Au/dragonfly wing (Au/DW) substrate was obtained from sputtering Au nanoislands on DW bioscaffold arrays by a simple direct current (DC) magnetron sputtering system. The high-performance substrate exhibited a low limit of detection (LOD) to 4-aminothiophenol (4-ATP) (10−9 M), outstanding reproducibility (less than 12.15%), good stability and suitability in multifold pesticide residues detection. Considering its excellent sample collection efficiency, the Au/DW substrate was employed to solve critical pesticide residue problems for detection of acephate (APT), cypermethrin (CPT), tsumacide (MTMC) and their multiple components on apple peels. The results show that the LOD was 10−3 ng/cm2 for APT obtained on the apple surface with a calculation equation of y = 0.26x + 6.68 and a determination coefficient (R2) of 0.970. Additionally, the LOD values for CPT and MTMC were 10−3 ng/cm2 and 10−4 ng/cm2, respectively. The finding in this work may provide a promising biomimetic SERS platform for on-spot detection of other organic pollutants in the food industry and inenvironmental protection.
AIP Advances | 2018
Yuhong Wang; Mingli Wang; Xin Sun; Guochao Shi; Wanli Ma; Lijian Ren
A rapid and simple detection method of metolcarb residues in apples with spectral analysis technology was achieved drawing support from the high sensitive and flexible silver/dragonfly wing (Ag/DW) surface-enhanced Raman scattering (SERS) substrates. The three steps “spray”, “press” and “separate” greatly simplified the procedures of extraction and sampling of pesticide molecules, resulting in the entire detection process was completed just in a few minutes. Importantly, the Ag nanoislands offered strong electromagnetic (EM) field enhancement near metallic nanostructures and significantly improved the sensitivity and reproducibility of the Raman signals. Meanwhile, surface plasmon coupling at the nanogaps between adjacent nanoislands created abundant “hot spots”, which became enormous enhancement necessary for high sensitivity SERS detection of metolcarb. Taking the apple peels as carriers, the trace detection of metolcarb residues on them was realized, whose detection limit reached 1×10-9 g/cm2. In addition, the linear relationship (R2 = 0.98666) between the logarithmic concentrations of metolcarb residues and the logarithmic peak areas at 1581 cm-1 was established, which was the more accurate reference for the prediction of the unknown concentration of metolcarb residues. In order to carry out the actual emulation, we studied metolcarb in mixed solution, and its obvious characteristic peaks were observed. These results indicated that SERS technology coupled with “spray-press-separate-test” method had the potential to qualitatively and quantitatively analyse metolcarb residues on complex apple peels.A rapid and simple detection method of metolcarb residues in apples with spectral analysis technology was achieved drawing support from the high sensitive and flexible silver/dragonfly wing (Ag/DW) surface-enhanced Raman scattering (SERS) substrates. The three steps “spray”, “press” and “separate” greatly simplified the procedures of extraction and sampling of pesticide molecules, resulting in the entire detection process was completed just in a few minutes. Importantly, the Ag nanoislands offered strong electromagnetic (EM) field enhancement near metallic nanostructures and significantly improved the sensitivity and reproducibility of the Raman signals. Meanwhile, surface plasmon coupling at the nanogaps between adjacent nanoislands created abundant “hot spots”, which became enormous enhancement necessary for high sensitivity SERS detection of metolcarb. Taking the apple peels as carriers, the trace detection of metolcarb residues on them was realized, whose detection limit reached 1×10-9 g/cm2. In addit...
Optics Communications | 2018
Guochao Shi; Mingli Wang; Yanying Zhu; Lin Shen; Yuhong Wang; Wanli Ma; Yuee Chen; Ruifeng Li
Applied Surface Science | 2018
Yuhong Wang; Mingli Wang; Lin Shen; Xin Sun; Guochao Shi; Wanli Ma; Xiaoya Yan
Optik | 2017
Guochao Shi; Yanying Zhu; Mingli Wang; Lin Shen; Yuee Chen; Yuhong Wang; Xiaona Xu; Ruifeng Li; Wanli Ma
Optics Communications | 2018
Guochao Shi; Mingli Wang; Yanying Zhu; Yuhong Wang; Wanli Ma
Optik | 2018
Xiaoya Yan; Yuhong Wang; Guochao Shi; Mingli Wang; Jinzan Zhang; Xin Sun; Haijun Xu
Optik | 2018
Ruifeng Li; Guochao Shi; Yuhong Wang; Mingli Wang; Yanying Zhu; Xin Sun; Haijun Xu; Caixia Chang
Optics Express | 2018
Yuhong Wang; Mingli Wang; Xin Sun; Guochao Shi; Jinzan Zhang; Wanli Ma; Lijian Ren