AI BASED NATURAL DISASTER PREDICTION AND EARLY WARNING SYSTEM
DOI:
https://doi.org/10.62643/Keywords:
Natural disasters, Early warning system Disaster preparedness Risk, assessment, Real-time alerts, Mitigation strategies, Hazard detection Emergency response, Climate change.Abstract
Natural disasters such as earthquakes, floods, cyclones, and wildfires pose serious threats to human life, infrastructure, and economic stability. Effective disaster management, along with efficient early warning systems, is essential for reducing the impact of such events. This paper examines an integrated approach to disaster management, focusing on key phases including preparedness, response, recovery, and mitigation. Special emphasis is placed on the importance of early warning systems, which utilize real-time monitoring, data analysis, communication technologies, and community involvement to deliver timely alerts. These systems play a crucial role in enabling vulnerable populations to take preventive measures, thereby minimizing loss of life and property damage. The study also identifies several challenges, including technological limitations, lack of public awareness, and coordination issues among different stakeholders. Addressing these challenges requires strengthening early warning infrastructures, enhancing collaboration, and promoting community education. By investing in resilient infrastructure and improving awareness and preparedness strategies, societies can better manage natural disasters, reduce their adverse effects, and ensure safer and more sustainable development.
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