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REMOTE SENSING FOR LAND & RESOURCES    1997, Vol. 9 Issue (4) : 26-32     DOI: 10.6046/gtzyyg.1997.04.05
Applied Research |
STUDIES ON THE DEVELOPMENT DEGREE DIVISIONS OF GEOLOGICAL HAZARD MUD-ROCK FLOW、ROCKSLIDE、 COLLAPSE OF HEBEI MOUNTAINS AREA
Qiao Yanxiao, Guo Qingshi
Remote Sensing Center of Hebei Province, 050021
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Abstract  

Based on using remote sensing technique to study in detail geological hazard dominated by the mud-rock flow in the mountains area of Hebei Province, the method of multi-factor comprehensive judgment is used for the development degree divisions of geological hazard in this paper. In the meantime, some important geological hazard areas to be monitored and controlled are delimited. This result provides a scientific basis for the surveillance and control of geological hazard in order to reduce the damage caused by disaster and provide disaster relief etc., this result has great practical value.

Keywords The Yellow River      Remote sensing      Concealed fault      River erosion     
Issue Date: 02 August 2011
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ZHU Jia-Wei
ZHAO Yun-Zhang
WANG Xiao-Qing
XU Li
LIU De-Jun
LIU Chong-Min
Cite this article:   
ZHU Jia-Wei,ZHAO Yun-Zhang,WANG Xiao-Qing, et al. STUDIES ON THE DEVELOPMENT DEGREE DIVISIONS OF GEOLOGICAL HAZARD MUD-ROCK FLOW、ROCKSLIDE、 COLLAPSE OF HEBEI MOUNTAINS AREA[J]. REMOTE SENSING FOR LAND & RESOURCES, 1997, 9(4): 26-32.
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https://www.gtzyyg.com/EN/10.6046/gtzyyg.1997.04.05     OR     https://www.gtzyyg.com/EN/Y1997/V9/I4/26


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