AO-PHLGJul 7, 2021

Tropical cyclone intensity estimations over the Indian ocean using Machine Learning

arXiv:2107.05573v1
Originality Synthesis-oriented
AI Analysis

This work addresses cyclone intensity estimation for disaster management in the Indian Ocean region, but it is incremental as it applies existing machine learning methods to a specific dataset.

The study tackled the problem of estimating tropical cyclone intensity, specifically grade and maximum sustained surface wind speed (MSWS), over the North Indian Ocean using machine learning, achieving an accuracy of 88% for grade and an RMSE of 2.3 for MSWS, with improved accuracy up to 98.84% for higher grades.

Tropical cyclones are one of the most powerful and destructive natural phenomena on earth. Tropical storms and heavy rains can cause floods, which lead to human lives and economic loss. Devastating winds accompanying cyclones heavily affect not only the coastal regions, even distant areas. Our study focuses on the intensity estimation, particularly cyclone grade and maximum sustained surface wind speed (MSWS) of a tropical cyclone over the North Indian Ocean. We use various machine learning algorithms to estimate cyclone grade and MSWS. We have used the basin of origin, date, time, latitude, longitude, estimated central pressure, and pressure drop as attributes of our models. We use multi-class classification models for the categorical outcome variable, cyclone grade, and regression models for MSWS as it is a continuous variable. Using the best track data of 28 years over the North Indian Ocean, we estimate grade with an accuracy of 88% and MSWS with a root mean square error (RMSE) of 2.3. For higher grade categories (5-7), accuracy improves to an average of 98.84%. We tested our model with two recent tropical cyclones in the North Indian Ocean, Vayu and Fani. For grade, we obtained an accuracy of 93.22% and 95.23% respectively, while for MSWS, we obtained RMSE of 2.2 and 3.4 and $R^2$ of 0.99 and 0.99, respectively.

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