Geoscience knowledge graph in the big data era

被引:0
|
作者
Chenghu Zhou
Hua Wang
Chengshan Wang
Zengqian Hou
Zhiming Zheng
Shuzhong Shen
Qiuming Cheng
Zhiqiang Feng
Xinbing Wang
Hairong Lv
Junxuan Fan
Xiumian Hu
Mingcai Hou
Yunqiang Zhu
机构
[1] Chinese Academy of Sciences,State Key Laboratory of Resources and Environmental Information System, Institute of Geographic Sciences and Natural Resources Research
[2] University of Chinese Academy of Sciences,School of Earth Sciences and Resources
[3] China University of Geosciences (Beijing),Key Laboratory of Deep
[4] Chinese Academy of Geological Sciences,Earth Dynamics of Ministry of Natural Resources, Institute of Geology
[5] Beihang University,Institute of Artificial Intelligence
[6] Nanjing University,State Key Laboratory for Mineral Deposits Research, School of Earth Sciences and Engineering
[7] Sinopec Petroleum Exploration & Production Research Institute,School of Electronic, Information and Electrical Engineering
[8] Shanghai Jiao Tong University,Department of Automation
[9] Tsinghua University,Institute of Sedimentary Geology
[10] Chengdu University of Technology,undefined
来源
关键词
Geoscience knowledge graph; All-domain geoscience knowledge representation model; Federated crowd intelligence collaboration; High-precision geological time scale;
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学科分类号
摘要
Since the beginning of the 21st century, the geoscience research has been entering a significant transitional period with the establishment of a new knowledge system as the core and with the drive of big data as the means. It is a revolutionary leap in the research of geoscience knowledge discovery from the traditional encyclopedic discipline knowledge system to the computer-understandable and operable knowledge graph. Based on adopting the graph pattern of general knowledge representation, the geoscience knowledge graph expands the unique spatiotemporal features to the Geoscience knowledge, and integrates geoscience knowledge elements, such as map, text, and number, to establish an all-domain geoscience knowledge representation model. A federated, crowd intelligence-based collaborative method of constructing the geoscience knowledge graph is developed here, which realizes the construction of high-quality professional knowledge graph in collaboration with global geo-scientists. We also develop a method for constructing a dynamic knowledge graph of multi-modal geoscience data based on in-depth text analysis, which extracts geoscience knowledge from massive geoscience literature to construct the latest and most complete dynamic geoscience knowledge graph. A comprehensive and systematic geoscience knowledge graph can not only deepen the existing geoscience big data analysis, but also advance the construction of the high-precision geological time scale driven by big data, the compilation of intelligent maps driven by rules and data, and the geoscience knowledge evolution and reasoning analysis, among others. It will further expand the new directions of geoscience research driven by both data and knowledge, break new ground where geoscience, information science, and data science converge, realize the original innovation of the geoscience research and achieve major theoretical breakthroughs in the spatiotemporal big data research.
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页码:1105 / 1114
页数:9
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