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Applications of artificial intelligence for disaster management

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Abstract

Natural hazards have the potential to cause catastrophic damage and significant socioeconomic loss. The actual damage and loss observed in the recent decades has shown an increasing trend. As a result, disaster managers need to take a growing responsibility to proactively protect their communities by developing efficient management strategies. A number of research studies apply artificial intelligence (AI) techniques to process disaster-related data for supporting informed disaster management. This study provides an overview of current applications of AI in disaster management during its four phases: mitigation, preparedness, response, and recovery. It presents example applications of different AI techniques and their benefits for supporting disaster management at different phases, as well as some practical AI-based decision support tools. We find that the majority of AI applications focus on the disaster response phase. This study also identifies challenges to inspire the professional community to advance AI techniques for addressing them in future research.

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Acknowledgements

This work is part of the Probabilistic Resilience Assessment of Interdependent Systems (PRAISys) project (www.praisys.org). Support from the National Science Foundation through grant CMMI-1541177 is gratefully acknowledged.

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Correspondence to Wenjuan Sun.

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Sun, W., Bocchini, P. & Davison, B.D. Applications of artificial intelligence for disaster management. Nat Hazards 103, 2631–2689 (2020). https://doi.org/10.1007/s11069-020-04124-3

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