麻豆淫院

May 27, 2009

New Gas Sensor Based on Multiwalled Carbon Nanotubes

Hybrid sensor fabrication process: (top) SEM image of a few MWCNTs spanning across two neighboring Au 铿乶gers of the interdigitated electrode; (bottom) HRTEM image of a MWCNT uniformly coated with SnO nanocrystals.
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Hybrid sensor fabrication process: (top) SEM image of a few MWCNTs spanning across two neighboring Au 铿乶gers of the interdigitated electrode; (bottom) HRTEM image of a MWCNT uniformly coated with SnO nanocrystals.

Argonne Center for Nanoscale Materials staff in the Nanofabrication & Devices Group together with collaborative users from the University of Wisconsin-Milwaukee have fabricated a miniaturized gas sensor using hybrid nanostructures consisting of SnO2 nanocrystals supported on multiwalled carbon nanotubes (MWCNTs).

In contrast to the high-temperature operation required for SnO2 nanocrystals alone, and to the insensitivity towards H2 and CO for CNTs alone, the hybrid sensor exhibits room-temperature sensing capability when exposed to low-concentration gases such as NO2, H2, and CO. The performance of the hybrid nanostructure sensor is attributed to the effective between SnO2 nanocrystals and MWCNTs and to the increase in the speci铿乧 surface area.

The hybrid platform as a sensing element provides an opportunity to engineer sensing devices with quantum-mechanical attributes due to the electron transfer. The nanomaterials employed are affordable, and the technique is simple and compatible with existing microfabrication capabilities; the latter, in turn, facilitates a scale-up process. This new sensing scheme will be instrumental for the development of new based on hybrid nanostructures.

More information: "Room-Temperature Gas Sensing Based on Electron Transfer between Discrete Tin Oxide Nanocrystals and Multiwalled Carbon Nanotubes," G. Lu, L.E. Ocola, and J. Chen, Adv. Mater., 21, 1-5, 2009.

Provided by Argonne National Laboratory ( : )

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