LEVERAGING DEEP LEARNING FOR IMPROVED CYCLONE FORCASTING
Anurag Modi, Dr. Archana Bhaskar
Reva University, Bengaluru, Karnataka
Abstract
Tropical cyclones (TCs) are frequently rarest but one of the foremost dangerous weather phenomena to arise over tropical oceans, usually creating huge issues with nearly ninety storms globally annually. Early detection and monitoring of TCs are necessary for the early warning of areas in danger. Since these storms originate over the open ocean and frequently out at sea many miles of continental regions, they are detected using remote sensing. In this paper, we propose an automatic method to identify the formation of TCs through satellite images combining a deep learning architecture. The methodology is based on a two-stage deep learning framework: Mask CNN as detector stage—second wind speed filter and lastly Convolutional Neural Network (CNN) for classification. The best possible performance is obtained by hyperparameter optimization using Bayesian Optimization across the pipeline. Results show that the proposed method achieves a precision, specificity, and accuracy of 97.10%, 97.59%, and 86.55% in test images respectively
Keywords: Convolutional Neural Networks (CNN), Deep Learning, Cyclone Detection and Tracking, Tropical cyclone Intensity.
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EPRA International Journal of Research & Development (IJRD)
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Published on : 2024-09-02
Vol | : | 9 |
Issue | : | 8 |
Month | : | August |
Year | : | 2024 |