Innovative approaches to the Sustainable Development Goals using Big Earth Data

IF 4.2 3区 地球科学 Q1 COMPUTER SCIENCE, INFORMATION SYSTEMS Big Earth Data Pub Date : 2021-07-03 DOI:10.1080/20964471.2021.1939989
Huadong Guo, Dong Liang, Fa-Ju Chen, Zeeshan Shirazi
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引用次数: 26

Abstract

ABSTRACT A persistent challenge for the Sustainable Development Goals (SDGs) has been a lack of data for indicators to assess progress towards each goal and varying capacities among nations to conduct these assessments. Rapid developments in big data, however, are facilitating a global approach to the SDGs. Tools and data products are emerging that can be extended to and leveraged by nations that do not yet have the capacity to measure SDG indicators. Big Earth Data, a special class of big data, integrates multi-source data within a geographic context, utilizing the principles and methodologies of the established literature on big data science, applied specifically to Earth system science. This paper discusses the research challenges related to Big Earth Data and the concerted efforts and investments required to make and measure progress towards the SDGs. As an example, the Big Earth Data Science Engineering Program (CASEarth) of the Chinese Academy of Sciences is presented along with other case studies on Big Earth Data in support of the SDGs. Lastly, the paper proposes future priorities for developments in Big Earth Data, such as human resource capacity, digital infrastructure, interoperability, and environmental considerations.
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利用大地球数据实现可持续发展目标的创新方法
可持续发展目标(sdg)面临的一个长期挑战是缺乏评估每个目标进展的指标数据,以及各国开展这些评估的能力不一。然而,大数据的快速发展正在促进实现可持续发展目标的全球方法。工具和数据产品正在出现,它们可以推广到尚未具备衡量可持续发展目标指标能力的国家,并被这些国家利用。大地球数据是一类特殊的大数据,它利用大数据科学的既定文献的原则和方法,在地理环境中集成了多源数据,专门应用于地球系统科学。本文讨论了与大地球数据相关的研究挑战,以及制定和衡量可持续发展目标进展所需的协同努力和投资。以中国科学院的大地球数据科学工程项目(CASEarth)为例,介绍了大地球数据支持可持续发展目标的其他案例研究。最后,本文提出了大地球数据未来发展的优先事项,如人力资源能力、数字基础设施、互操作性和环境考虑。
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来源期刊
Big Earth Data
Big Earth Data Earth and Planetary Sciences-Computers in Earth Sciences
CiteScore
7.40
自引率
10.00%
发文量
60
审稿时长
10 weeks
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