Xu hướng sử dụng trí tuệ nhân tạo trong lĩnh vực khai thác khoáng sản trên thế giới và Việt Nam

https://mij.hoimovietnam.vn/en/archives?article=20041
  • Affiliations:

    Hanoi University of Mining and Geology

  • *Corresponding:
    nguyenthanh.xơThis email address is being protected from spambots. You need JavaScript enabled to view it.
  • Received: 10th-Aug-2020
  • Revised: 25th-July-2020
  • Accepted: 10th-Aug-2020
  • Online: 30th-Aug-2020
Pages: 1 - 6
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Abstract:

Currently, with strong economic and' social development needs, the mining industries must operate with a very large intensity. This raises the need for continuous research and investment to expand production and exploitation of minerals. The development of mineral mining industries, in addition to improving the efficiency of using equipment and mineral resources to be exploited to ensure economic factors, must also ensure stability and safety for the project, mining area, disposal site in mining, construction works and related works. This paper presents an overview of the application of artificial intelligence in the mining sector as well as the trend of applying them in the mining sector in the world and in Vietnam to be able to respond the urgent requirements mentioned above.

How to Cite
Thanh, N.Chi 2020. Xu hướng sử dụng trí tuệ nhân tạo trong lĩnh vực khai thác khoáng sản trên thế giới và Việt Nam (in Vietnamese). Mining Industry Journal. XXIX, 4 (Aug, 2020), 1-6. .
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