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Remote Sensing Technology and Application  2018, Vol. 33 Issue (6): 1186-1192    DOI: 10.11873/j.issn.1004-0323.2018.6.1186
    
Research on Hydrological-engineering-environmental Geology Information Service Platform based on Cloud Architecture
Yu Mengliang1,2,Zhao Hui2,Sun Changyong3,Sun Fang4,Pi Kaihong4,Li Weirong5
(1.China University of Geosciences(Wuhan),Wuhan 430074,China;
2.Institute of China Geological Environment Survey,Beijing 10008,China;
3.Jere Oiland Engineering Corporation,Beijing 100021,China;
4.Research and Development Centerof Wuhan InfoEarth Information Engineering co.
LTD.,Wuhan 430074,China;
5.State Key Laboratory of Resources and Environmental Information System,Institute of GeographicSciences and Natural Resources Research,Chinese Academy of Sciences,Beijing 100101,China)
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Abstract  The information of hydrogeology,engineering geology and environmental geology (Hereinafter referred to as hydrological-engineering-environmental geology) have great significance for economic construction and geological disasters,etc.However,traditional geological environment information service mode are restricted by data format,authority and concept,and it is difficult to meet the demand of government,professionals and social public for hydrological-engineering-environmental geology information.Therefore,how to integrate multi source and heterogeneous data to realize the socialization sharing of hydrological\|engineering-environmental geology information has become a difficult problem in the hydrological-engineering-nvironmental geology domain.Firstly,thepaper analyzed the characteristics of hydrological-engineering-environmental geologyinformation and constructed service model.Then,based on big data,cloud computing and other modern information technology and concept,Combined with theactual situation of hydrological-engineering-nvironmental geology work.Introduced overall design and application model of national hydrological-engineering-environmental geology data center,national geological environment information management and service platform.Finally,the paper discussed the overall structure and key technology of hydrological-ngineering-environmental geology information service platform construction.
Key words:  Cloud computing      Hydrological-engineering-environmental geologyinformation;Cloud Architecture      Service platform     
Received:  16 January 2018      Published:  29 January 2019
ZTFLH:  P208  
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Yu Mengliang, Zhao Hui, Sun Changyong, Sun Fang, Pi Kaihong, Li Weirong. Research on Hydrological-engineering-environmental Geology Information Service Platform based on Cloud Architecture. Remote Sensing Technology and Application, 2018, 33(6): 1186-1192.

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http://www.rsta.ac.cn/EN/10.11873/j.issn.1004-0323.2018.6.1186     OR     http://www.rsta.ac.cn/EN/Y2018/V33/I6/1186

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