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EARLY FIRE DETECTION AND PREVENTION SYSTEMS BASED ON MODERN TECHNOLOGIES AND THEIR IMPORTANCE IN EMERGENCY MANAGEMENT

Komil Eshkuvatov, Dildora Ibrohimova, Muzaffarova Sevarabonu , Tashkent State Medical University, Tashkent, Uzbekistan Department of Children, Adolescents and Nutrition Hygiene, Student of the Faculty of General Medicine,⁠ Student of the Faculty of Medical Prevention and Public Health, Ecology and Environmental Protection, and Chemistry

Abstract

This article analyzes early fire detection and prevention systems based on modern technologies. In particular, the possibilities of rapid fire detection using satellite monitoring, unmanned aerial vehicles (drones), smart sensors, video surveillance systems, and artificial intelligence-based software are examined. The study also highlights the importance of these technologies in emergency management processes, their role in reducing fire consequences, and protecting human life and the environment. The research results demonstrate that modern technologies are an essential tool for reducing fire risks and enabling rapid response measures

Keywords

fire safety, modern technologies, early detection systems, drones, satellite monitoring, smart sensors, artificial intelligence, emergency management, monitoring, prevention.

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EARLY FIRE DETECTION AND PREVENTION SYSTEMS BASED ON MODERN TECHNOLOGIES AND THEIR IMPORTANCE IN EMERGENCY MANAGEMENT. (2026). International Journal of Artificial Intelligence, 6(03), 1225-1231. https://www.academicpublishers.org/journals/index.php/ijai/article/view/11956