Computer Science ›› 2019, Vol. 46 ›› Issue (6A): 532-536.

• Interdiscipline & Application • Previous Articles     Next Articles

Cloud Computing Based Geographical Information Service Technologies

ZHANG Xin, HU Xiao-dong, WEI Jia-wei   

  1. National Key Laboratory of Remote Sensing,Institute of Remote Sensing and Digital Earth,Chinese Academy of Sciences,Beijing 100101,China
  • Online:2019-06-14 Published:2019-07-02

Abstract: Based on the limitations of existing research on geographic information service technology,which is only limited to the new software deployment of existing GIS software in the cloud computing environment and the application mode of a single field,this paper proposed that the research on geographic information service technology needs to carry out in-depth research on the application mode in the cloud computing environment and deepen the fusion application of geospatial and temporal big data characterized by earth observation information.Furthermore,it analyzed the technical characteristics of cloud GIS service platform in five aspects:data management,geographic computing,geographic information mapping and terminal service,thematic application system construction,network application and service mode.By referring to and classifying and dialectically analyzing the classic theoretical and empirical literatures in this field at home and abroad,in line with the latest trend of cloud GIS research,the technical framework of cloud GIS platform integrating “store-computing-service” was designed,and five models of geographic information service based on cloud computing were proposed according to the current application status of cloud GIS platform.MongoDB was adopted as the carrier of information and business data and GridFS file system was applied as a kind of underlying heterogeneous storage.At the same time,Redis was utilized as the data exchange cache of the data engine to ensure the processing efficiency,and ZeroMQ was leveraged as the transmission middleware to develop the data engine and resource service of the “Mannger-worker” mode based on Node.js.Aiming at the problem of storage and management of massive,high-throughput,spatially-structured remote sensing image data and its basic land information products,a prototype system was developed based on MongoDB database and tested with PB data,which verified the feasibility and advancement of the research results in this paper.

Key words: Cloud computing, Geographical spatitemporal data, Service mode

CLC Number: 

  • TP391
[1]周成虎.全空间地理信息系统展望[J].地理科学进展,2015,34(2):129-131.
[2]方雷.基于云计算的土地资源服务高效处理平台关键技术探索与研究[D].杭州:浙江大学,2011.
[3]汪品先.穿凿地球系统的时间隧道[J].中国科学(D辑:地球科学),2009,39(10):1313-1338.
[4]王钦敏.经济社会发展中的大数据应用[J].地理学报,2015,70(5):691-695.
[5]李丰丹.基于云GIS架构的地质信息服务关键技术研究[D].北京:中国地质大学(北京),2015.
[6]陆锋,张恒才.大数据与广义GIS[J].武汉大学学报(信息科学版),2014,39(6):645-654.
[7]李清泉,李德仁.大数据GIS[J].武汉大学学报(信息科学版),2014,39(6):641-644,666.
[8]倪永,陈荣国.主流云GIS平台软件应用分析[J].测绘科学技术学报,2013,30(2):177-181.
[9]GOLDBERG D,OLIVARESM,LI Z X,et al.Maps & GIS Data Libraries in the Era of Big Data and Cloud Computing[J].Journal of Map & Geography Libraries,2014,10(1):100-122.
[10]YANG C W,HUANG Q Y,LI Z,et al.Big Data and cloud computing:innovation opportunities and challenges[J].International Journal of Digital Earth,2017,10(1):13-53.
[11]TSAI W F,CHANG J Y,YAN S Y,et al.Cloud Based Web 3D GIS Taiwan Platform[J].ISPRS-International Archives of the Photogrammetry,Remote Sensing and Spatial Information Scien-ces,2012,XXXVIII-6/(1):19-22.
[12]FUSTES D,CANTORNA D,DAFONTE C,et al.Acloud-inte-grated web platform for marine monitoring using GIS and remote sensing.Application to oil spill detection through SARima-ges[J].Future Generation Computer Systems,2014,34(5):155-160.
[13]周成虎,欧阳,李增元.我国遥感数据的集成与共享研究[J].中国工程科学,2008(6):51-55,75.
[14]左尧,王少华,钟耳顺,等.高性能GIS研究进展及评述[J].地球信息科学学报,2017,19(4):437-446.
[15]谭娟,白鹤峰,陈勇,等.开放式遥感数据服务系统架构技术研究[J].武汉大学学报(信息科学版),2015,40(7):950-956.
[16]刘义,陈荦,景宁,等.利用MapReduce进行批量遥感影像瓦片金字塔构建[J].武汉大学学报(信息科学版),2013,38(3):278-282.
[17]李国庆,张红月,张连翀,等.地球观测数据共享的发展和趋势[J].遥感学报,2016,20(5):979-990.
[18]李国庆,黄震春.遥感大数据的基础设施:集成、管理与按需服务[J].计算机研究与发展,2017,54(2):267-283.
[19]任伏虎,王晋年.遥感云服务平台技术研究与实验[J].遥感学报,2012,16(6):1331-1346.
[20]徐冠华.创新驱动—中国GIS软件发展的必由之路[J].地理信息世界,2017,24(5):1-7.
[1] GAO Shi-yao, CHEN Yan-li, XU Yu-lan. Expressive Attribute-based Searchable Encryption Scheme in Cloud Computing [J]. Computer Science, 2022, 49(3): 313-321.
[2] WANG Zheng, JIANG Chun-mao. Cloud Task Scheduling Algorithm Based on Three-way Decisions [J]. Computer Science, 2021, 48(6A): 420-426.
[3] PAN Rui-jie, WANG Gao-cai, HUANG Heng-yi. Attribute Access Control Based on Dynamic User Trust in Cloud Computing [J]. Computer Science, 2021, 48(5): 313-319.
[4] CHEN Yu-ping, LIU Bo, LIN Wei-wei, CHENG Hui-wen. Survey of Cloud-edge Collaboration [J]. Computer Science, 2021, 48(3): 259-268.
[5] JIANG Hui-min, JIANG Zhe-yuan. Reference Model and Development Methodology for Enterprise Cloud Service Architecture [J]. Computer Science, 2021, 48(2): 13-22.
[6] WANG Wen-juan, DU Xue-hui, REN Zhi-yu, SHAN Di-bin. Reconstruction of Cloud Platform Attack Scenario Based on Causal Knowledge and Temporal- Spatial Correlation [J]. Computer Science, 2021, 48(2): 317-323.
[7] MAO Han-yu, NIE Tie-zheng, SHEN De-rong, YU Ge, XU Shi-cheng, HE Guang-yu. Survey on Key Techniques and Development of Blockchain as a Service Platform [J]. Computer Science, 2021, 48(11): 4-11.
[8] WANG Qin, WEI Li-fei, LIU Ji-hai, ZHANG Lei. Private Set Intersection Protocols Among Multi-party with Cloud Server Aided [J]. Computer Science, 2021, 48(10): 301-307.
[9] LEI Yang, JIANG Ying. Anomaly Judgment of Directly Associated Nodes Under Cloud Computing Environment [J]. Computer Science, 2021, 48(1): 295-300.
[10] XU Yun-qi, HUANG He, JIN Zhong. Application Research on Container Technology in Scientific Computing [J]. Computer Science, 2021, 48(1): 319-325.
[11] ZHNAG Kai-qi, TU Zhi-ying, CHU Dian-hui, LI Chun-shan. Survey on Service Resource Availability Forecast Based on Queuing Theory [J]. Computer Science, 2021, 48(1): 26-33.
[12] LI Yan, SHEN De-rong, NIE Tie-zheng, KOU Yue. Multi-keyword Semantic Search Scheme for Encrypted Cloud Data [J]. Computer Science, 2020, 47(9): 318-323.
[13] MA Xiao-xiao and HUANG Yan. Publicly Traceable Accountable Ciphertext Policy Attribute Based Encryption Scheme Supporting Large Universe [J]. Computer Science, 2020, 47(6A): 420-423.
[14] LIANG Jun-bin, ZHANG Min, JIANG Chan. Research Progress of Social Sensor Cloud Security [J]. Computer Science, 2020, 47(6): 276-283.
[15] JIN Xiao-min, HUA Wen-qiang. Energy Optimization Oriented Resource Management in Mobile Cloud Computing [J]. Computer Science, 2020, 47(6): 247-251.
Viewed
Full text


Abstract

Cited

  Shared   
  Discussed   
No Suggested Reading articles found!