期刊文献+

全球变化大数据的科学认知与云共享平台 被引量:6

Big data on global changes:Data sharing platform and recognition
原文传递
导出
摘要 本文是国家重点研发计划"全球变化及应对"专项之"全球变化大数据的科学认知与云共享平台"项目介绍。针对中国全球变化数据"数据海量、信息缺乏、知识难觅"的困局,项目力图通过联合中国对地观测领域、大气科学领域、气候变化研究领域的优势力量,建成具有中国特色的全球变化大数据共享平台,践行破除信息数据"深藏闺中"的壁垒。该平台将集大数据快速汇聚、大尺度产品快速生成、不确定性分析、大数据驱动的全球变化敏感因子认知于一体,一方面为中国全球变化研究提供中国区域最好的全球变化大数据集,另一方面为在国际相关活动中,掌握全球变化问题的主导权,发出中国的倡议与声音提供应有的支持。 China has substantial data, but less information and insufficient knowledge, which results in poor intemational influence in global change research; thus, changing this situation is urgent. In 2016, a new project of the National Key Research and Development Program on Global Changes and Adaptation entitled, "Big data on global changes: Data sharing platform and recognition", is launched. The project attempts to establish a global change-big data (GloBiD) sharing platform to change the current situation. This paper introduces this project, which comprises the establishment of three fast processing systems of global data (i.e., multi-source data aggregation and processing system, fast production system on global satellite products with 30 m spatial resolution, and fast production system on FY satellite products), uncer- tainty analysis of multi-source data impact on global changes, and the recognition of sensitive factors of global change driven by big data. Cloud technology, cluster computing, Apache Spark engine, Apache HBase, and HDFS data storage technology are adopted to build the GIoBiD sharing platform. This project will provide high-quality data for the global change research of China. It will also provide valuable information on the main problems of global change for policy making based on the recognition of sensitive factors. Hopefully, the establishment of scientific recognition and data sharing platform of global change data will promote the development of the global change research of China in the future.
出处 《遥感学报》 EI CSCD 北大核心 2016年第6期1479-1484,共6页 NATIONAL REMOTE SENSING BULLETIN
基金 国家重点研发计划(编号:2016YFA0600300)~~
关键词 全球变化大数据平台 快速算法 不确定性 敏感因子分析 global change big data platform, fast algorithm, uncertainty, sensitive factors recognition
  • 相关文献

参考文献3

二级参考文献17

  • 1李小文,高峰,王锦地,朱启疆.遥感反演中参数的不确定性与敏感性矩阵[J].遥感学报,1997,1(1):5-14. 被引量:58
  • 2徐冠华.遥感信息科学的进展和展望[J].中国科学院院刊,1997,12(1):4-14. 被引量:11
  • 3Turner V, Gantz J F, Reinsel D et al. The digital universe of oppor- ttmities: rich data and the increasing value of the internet of things, Framingham: IDC Analyze the Future, 2014.
  • 4Gantz J, Reinsel D. The digital universe in 2020: big data, bigger digital shadows, and biggest growth in the far east. Framingham: IDC Analyze the Future, 2012.
  • 5Special issue: Big data. Nature, 2008, 455(7209) : 1-136.
  • 6Jonathan T O, Gerald A M, Sandrine Bony et al. Special online collection: dealing with data. Science, 2011, 331 (6018 ) : 639-806.
  • 7Kennedy M C, O' Hagan A. Bayesian calibration of computer models. Journal of the Royal Statistical Society, Series B(Statisti cal methodology), 2001, 63 (3) :425-464. DOI:10.1111/1467- 9868.00294.
  • 8CODATA. Big data for international scientific programmes: Chal- lenges and opportunities A statement of recommendations and ac- tions. Beijing: Committee on data for science and technology, 2014.
  • 9Hey T, Tansley S, Tolle K. The fourth paradigm: Data-intensive scientific discovery. Redmond, Washington: Microsoft Research, 2009, ISBN:978-0982544204.
  • 10李国杰,程学旗.大数据研究:未来科技及经济社会发展的重大战略领域——大数据的研究现状与科学思考[J].中国科学院院刊,2012,27(6):647-657. 被引量:1591

共引文献220

同被引文献83

引证文献6

二级引证文献56

相关作者

内容加载中请稍等...

相关机构

内容加载中请稍等...

相关主题

内容加载中请稍等...

浏览历史

内容加载中请稍等...
;
使用帮助 返回顶部