Agentic AI Framework for Cloudburst Prediction and Coordinated Response
- URL: http://arxiv.org/abs/2511.22767v1
- Date: Thu, 27 Nov 2025 21:33:03 GMT
- Title: Agentic AI Framework for Cloudburst Prediction and Coordinated Response
- Authors: Toqeer Ali Syed, Sohail Khan, Salman Jan, Gohar Ali, Muhammad Nauman, Ali Akarma, Ahmad Ali,
- Abstract summary: The paper outlines an agentic artificial intelligence system to study atmospheric water-cycle intelligence.<n>The framework uses autonomous but cooperative agents that reason, sense, and act throughout the entire event lifecycle.<n>It provides a platform of scalable adaptive and learning-based climate resilience.
- Score: 0.8697317909540486
- License: http://creativecommons.org/licenses/by/4.0/
- Abstract: The challenge is growing towards extreme and short-duration rainfall events like a cloudburst that are peculiar to the traditional forecasting systems, in which the predictions and the response are taken as two distinct processes. The paper outlines an agentic artificial intelligence system to study atmospheric water-cycle intelligence, which combines sensing, forecasting, downscaling, hydrological modeling and coordinated response into a single, interconnected, priceless, closed-loop system. The framework uses autonomous but cooperative agents that reason, sense, and act throughout the entire event lifecycle, and use the intelligence of weather prediction to become real-time decision intelligence. Comparison of multi-year radar, satellite, and ground-based evaluation of the northern part of Pakistan demonstrates that the multi-agent configuration enhances forecast reliability, critical success index and warning lead time compared to the baseline models. Population reach was maximised, and errors during evacuation were minimised through communication and routing agents, and adaptive recalibration and transparent auditability were provided by the embedded layer of learning. Collectively, this leads to the conclusion that collaborative AI agents are capable of transforming atmospheric data streams into practicable foresight and provide a platform of scalable adaptive and learning-based climate resilience.
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