Predicting Natural Disasters With AI and Machine Learning

Author:

Venkadesh P1ORCID,S. V. Divya1,Marymariyal P1,Keerthana S.1

Affiliation:

1. V.S.B. College of Engineering Technical Campus, Coimbatore, India

Abstract

The unpredictability and devastating impacts of the natural disasters necessitate the advanced methods for early detection and mitigation. The paper delves into the transformative potential of AI and ML in analyzing extensive datasets comprising historical records, meteorological information, geological data, and satellite imagery. By leveraging neural networks, deep learning algorithms, and data analytics enables the creation of sophisticated predictive models for a range of natural disasters, including earthquakes, hurricanes, floods, wildfires, and tsunamis. Incorporating real-time data from IoT devices and remote sensing technologies further bolsters the accuracy of predictions. This abstract highlights the role of AI and ML not only in forecasting disasters but also in optimizing resource allocation during response efforts, identifying vulnerable regions, and enhancing early warning systems. Here, practical examples and case studies of successful AI and ML applications in disaster prediction, underlining their potential to redefine disaster preparedness and response is focused.

Publisher

IGI Global

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