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SUV FONDI YERLARI VA ULARNI MONITORING QILISHNING XORIJIY TAJRIBALARI

Authors

  • Temirova Shaxnoza Bektursun qizi

    “O‘zdavyerloyiha” davlat ilmiy-loyihalash institutining mustaqil izlanuvchisi, PhD
    Author

Keywords:

water fund lands, monitoring, GIS, remote sensing, artificial intelligence, IoT, digital technologies, water resources

Abstract

This article analyzes advanced international practices in monitoring water fund lands in the United States, the European Union, Israel, and China. The study highlights the role of Geographic Information Systems (GIS), remote sensing technologies, IoT sensors, artificial intelligence, and digital monitoring systems in water resource management. Particular attention is given to the applicability of these technologies to the monitoring system of water fund lands in Uzbekistan. The research findings contribute to the development of scientific and practical recommendations aimed at improving monitoring efficiency, ensuring sustainable water resource management, and accelerating digital transformation in the sector. 

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Published

2026-06-06