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REMOTE SENSING FOR LAND & RESOURCES    1997, Vol. 9 Issue (2) : 22-26,31     DOI: 10.6046/gtzyyg.1997.02.05
Remote Sensing Application in the Jingjiu Governance Line Areas |
PRELIMINARY EVALUATION OF SEISMIC HAZARD AND REGIONAL TECTONIC STABILITY ABOUT THE NORTH SECTION OF JINGJIU RAILWAY ALONG THE YELLOW RIVER USING REMOTE SENSING
Zhang Tianyi
Center for Remote Sensing of Henan Province
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Abstract  

The plain of the lower reaches of the Yellow River is one of the area where earthquake often occurred. The area deals with seismic belt of magnituale VI 480000km2 and magnitude Ⅷ 450000km2. According to the historical statastic data, since 1812 the Huaihe area have entered active period and earthquake action have been concentrating toward the south of Huabei. After Jingjiu railway entered the Yellow River overflow regions, it passed through Liaolan fault belt about 200 km and crossed hanging river—the current Yellow River's course in Taiqian of Henan province. In history, there were the records of Yellow River overflowed, which were caused by earthquake. Therefore seismoaction as well as the Yellow River overflow caused by seismoaction are unstability factors, the tremendous influence to Jingjiu railway and along the railway line areexert. In view of the above mentioned facts, we must strengthen defence system's construction in order to avoid the second disaster.

Keywords Remote sensing      Geography information system      Liaohe river delta      Wetland      Driving forces     
Issue Date: 02 August 2011
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JIANG Wei-Guo
LI Jing
WANG Wen-Jie
XIE Zhi-Ren
GONG Hui-Li
YANG Qiang
GE Liang-Quan
LAI Wan-Chang
REN Xiang
GU Yi
Cite this article:   
JIANG Wei-Guo,LI Jing,WANG Wen-Jie, et al. PRELIMINARY EVALUATION OF SEISMIC HAZARD AND REGIONAL TECTONIC STABILITY ABOUT THE NORTH SECTION OF JINGJIU RAILWAY ALONG THE YELLOW RIVER USING REMOTE SENSING[J]. REMOTE SENSING FOR LAND & RESOURCES, 1997, 9(2): 22-26,31.
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https://www.gtzyyg.com/EN/10.6046/gtzyyg.1997.02.05     OR     https://www.gtzyyg.com/EN/Y1997/V9/I2/22



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