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Big Earth Data from space: a new engine for Earth science
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  • 作者:Huadong Guo ; Lizhe Wang ; Dong Liang
  • 关键词:Big data ; Big Earth Data from space ; Digital Earth ; Earth sciences ; Earth observation ; Scientific big data ; Data ; intensive science
  • 刊名:Chinese Science Bulletin
  • 出版年:2016
  • 出版时间:April 2016
  • 年:2016
  • 卷:61
  • 期:7
  • 页码:505-513
  • 全文大小:444 KB
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  • 作者单位:Huadong Guo (1)
    Lizhe Wang (1)
    Dong Liang (1)

    1. Institute of Remote Sensing and Digital Earth, Chinese Academy of Sciences, Beijing, 100094, China
  • 刊物主题:Science, general; Life Sciences, general; Physics, general; Chemistry/Food Science, general; Earth Sciences, general; Engineering, general;
  • 出版者:Springer Berlin Heidelberg
  • ISSN:1861-9541
文摘
Big data is a strategic highland in the era of knowledge-driven economies, and it is also a new type of strategic resource for all nations. Big data collected from space for Earth observation—so-called Big Earth Data—is creating new opportunities for the Earth sciences and revolutionizing the innovation of methodologies and thought patterns. It has potential to advance in-depth development of Earth sciences and bring more exciting scientific discoveries. The Academic Divisions of the Chinese Academy of Sciences Forum on Frontiers of Science and Technology for Big Earth Data from Space was held in Beijing in June of 2015. The forum analyzed the development of Earth observation technology and big data, explored the concepts and scientific connotations of Big Earth Data from space, discussed the correlation between Big Earth Data and Digital Earth, and dissected the potential of Big Earth Data from space to promote scientific discovery in the Earth sciences, especially concerning global changes.

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