Long-term forecasting of tropical cyclones over Bay of Bengal using linear and non-linear statistical models

Forecasting tropical cyclones with climate and physical variability and observed cyclonic disturbances has been developed over the years for all the ocean basins successfully and is still one of the priorities for disaster risk reduction policymaking. This study attempts to forecast seasonal cycloni...

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Veröffentlicht in:GeoJournal 2023-12, Vol.88 (Suppl 1), p.85-107
Hauptverfasser: Sen, Sweta, Nayak, Narayan Chandra, Mohanty, William Kumar
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Mohanty, William Kumar
description Forecasting tropical cyclones with climate and physical variability and observed cyclonic disturbances has been developed over the years for all the ocean basins successfully and is still one of the priorities for disaster risk reduction policymaking. This study attempts to forecast seasonal cyclonic disturbances and severe cyclonic storms over the Bay of Bengal, where about 80% of the tropical cyclones of the North Indian Ocean are formed. We have used three time-series models, namely, the seasonal autoregressive integrated moving average with exogenous variables (SARIMAX) model, artificial neural network-nonlinear autoregressive with exogenous variables (ANN-NARX) model, and the hybrid model. The basic purpose of considering three different models is to improve the forecasting accuracy of tropical cyclones. We have shown that the intensification rate of the severe cyclonic storms over the Bay of Bengal has been significant and increasing over the years. Results show that the ANN-NARX model with sea surface temperature and near-surface wind speed as predictors is the best performance model for long-term forecasting of cyclonic disturbances. Hence, the distribution of cyclonic disturbances is non-linear. The correlations between observed and predicted occurrences are 0.80 and 0.85 for cyclonic disturbances and severe cyclonic storms, respectively, corroborating, by and large, the forecasting accuracies of some previous studies. The forecasting of cyclonic disturbances indicates that they will vary from 5 to 13 annually and there will be, on average, one severe cyclonic storm per year. The likelihood of occurrence of severe cyclonic storms is most significant in the post-monsoon season. This forecast till 2050 would help the scientific community and policymakers significantly for applications and good disaster risk governance.
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subjects Accuracy
Artificial neural networks
Averages
Cyclones
Disaster management
Disaster risk
Disasters
Disturbances
Emergency preparedness
Environmental Management
Forecasting
Geography
Governance
Human Geography
Hurricanes
Long term
Mathematical models
Neural networks
Ocean basins
Oceans
Policy making
Risk management
Risk reduction
Scientific community
Sea surface
Sea surface temperature
Seasons
Severity
Social Sciences
Statistical analysis
Statistical models
Storms
Surface temperature
Surface wind
Tropical cyclones
Wind speed
title Long-term forecasting of tropical cyclones over Bay of Bengal using linear and non-linear statistical models
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