Journal of Jilin University(Earth Science Edition) ›› 2025, Vol. 55 ›› Issue (1): 340-350.doi: 10.13278/j.cnki.jjuese.20230166

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Big Data Mining and Fusion Towards Resources Evaluation of  Polymetallic Nodules

Li Weilu, Gao Siyu, Yang Jinkun, Han Chunhua, Wei Guanghao, Kong Min   

  1. National Marine Data and Information Service, Tianjin 300171, China
  • Received:2023-07-12 Online:2025-01-26 Published:2025-02-07
  • Supported by:
    the National Natural Science Foundation of China (42206226) and the National Key R&D Program of China (2022YFC2806601)

Abstract: The prediction and evaluation of deep-sea polymetallic nodules have entered into the data science paradigm, and the deep mining and fusion of big data for ore prospecting and ore indication are seriously needed. Through analyzing the research progress of  deep-sea polymetallic nodules evaluation, and discussing the application of big data approaches in mineral resources evaluation, the big data mining and fusion techniques towards resources evaluation of  polymetallic nodules are explored, in which, the major research contents and methods like the knowledge pedigree analysis for polymetallic nodules resources, the metallogenic characteristics mining methods based on data science, the fusion and integration methods based on spatial decision-making model with big data, the comparison and verification of quantitative prediction and evaluation on polymetallic nodules resource, are proposed. It creatively analyzes  conventional/unconventional resources evaluating data and its correlation with ore deposits, and establishes the spatial decision-making model with geological constraint and big data. On this basis,  feature extraction and fusion of the information from multi-source heterogeneous data are achieved to supply the technology solution based on big data for deep-sea mineral resources evaluation. The research on big data mining and fusion techniques could improve the accuracy and efficiency of polymetallic nodules resources evaluating, and has important theoretical value and practical significance to the efficient use of deep-sea resource-environmental data, the exploration and evaluation of new polymetallic nodules mining area, and the prediction and evaluation of other deep-sea minerals.

Key words: polymetallic nodules, resources evaluation, deep-sea minerals, big data, data mining, data fusion

CLC Number: 

  • P744.3
[1] Dong Jinkun, Yang Mei, Wu Zhiyuan, Qin Shan, Wang Yuwei. Systematic Mineralogy Data Characteristics and Database Construction [J]. Journal of Jilin University(Earth Science Edition), 2019, 49(3): 727-736.
[2] Yin Zhengxin, Wang Haifeng, Han Jinsheng, Lü Xiuya, Shen Zezhong, Chen Jing, He Huizhong, Xie Anyuan, Guan Yao, Dong Chao. Comparison Between the Marginal-Sea Polymetallic Nodules in South China Sea and Ocean Polymetallic Nodules [J]. Journal of Jilin University(Earth Science Edition), 2019, 49(1): 261-277.
[3] Yu Ping, Zhang Qi, Huang Danian, Xiao Li. Key Development Technology of Geoscience Software in Deep Earth Exploration Plan [J]. Journal of Jilin University(Earth Science Edition), 2018, 48(2): 501-506.
[4] XU Chang-fu, LI Xiong-yan, TAN Feng-qi, YU Hong-yan, LI Hong-qi. Task-Driven Data Mining and Its Application of Identifying the Low Resistivity Oil Reservoir[ [J]. J4, 2012, 42(1): 39-46.
[5] CHI Bao-ming,DING Yuan-fang,CUI Xin-ying,LU Yan-hong,SHI Feng-zhi,WU Fa-wei. Research on Evaluation and Rational Exploitation and Utilization of the Salt Well Water Resources in Coastal Areas--A Case Study of Xingcheng Modern Fishery Garden [J]. J4, 2007, 37(5): 955-0960.
[6] YIN Pan, HU Guang-dao. Spatial Data Fusion in Geological Data Warehouse [J]. J4, 2006, 36(03): 486-490.
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