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The FAST/SKA Site Selection in Guizhou Province*

Published online by Cambridge University Press:  12 April 2016

B. Zhu
Affiliation:
LARSIS, Institute of Remote Sensing Applications, Chinese Academy of SciencesChina
Y. Nie
Affiliation:
LARSIS, Institute of Remote Sensing Applications, Chinese Academy of SciencesChina
R. Nan
Affiliation:
Beijing Astronomical Observatory, National Astronomical Observatories, China
B. Peng
Affiliation:
Beijing Astronomical Observatory, National Astronomical Observatories, China

Abstract

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Many karst depressions with diameters of 300 m to 500 m, suitable for constructing Arecibo-style radio telescopes, were identified in the south of Guizhou Province by Remote Sensing (RS) and Geographic Information System (GIS) technologies together with field investigations. Fundamental topography and landform databases were established for 391 candidate depressions, and using GIS the 3-dimensional images of depressions, at a scale of 1:10000, were then simulated to fit a spherical antenna.

Type
Chapter Five Future Large Telescope Projects: SKA and FAST
Copyright
Copyright © Kluwer 2001

Footnotes

*

Supported by National Natural Science Foundation of China.

References

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