The prediction of the intensity, location and time of the landfall of a tropical cyclone well advance in time and with high accuracy can reduce human and material loss immensely. In this article, we develop a Long Short-Term memory based Recurrent Neural network model to predict intensity (in terms of maximum sustained surface wind speed), location (latitude and longitude), and time (in hours after the observation period) of the landfall of a tropical cyclone which originates in the North Indian ocean. The model takes as input the best track data of cyclone consisting of its location, pressure, sea surface temperature, and intensity for certain hours (from 12 to 36 hours) anytime during the course of the cyclone as a time series and then pr...
The chaotic nature of cyclones makes track and wind-intensity prediction a challenging task. The com...
International audienceThe forecast of tropical cyclone trajectories is crucial for the protection of...
Accurate prediction of track and intensity of land-falling tropical cyclones is of the great importa...
x, 104 p. : ill. ; 30 cm.PolyU Library Call No.: [THS] LG51 .H577M COMP 2007 FengA tropical cyclone ...
This paper investigates the forecast potential of tropical cyclone (TC) landfall probabilities over ...
Introduction: Tropical Cyclones (TCs) inflict considerable damage to life and property every year. A...
The performance of the Advanced Research version of the Weather Research and Forecasting (ARW) model...
Previous studies have shown that the skill of seasonal forecasts of tropical cyclone (TC) activity o...
Weather prediction over the years has been a challenge for the meteorological centers in the South P...
Hurricanes are cyclones circulating about a defined center whose closed wind speeds exceed 75 mph or...
Extensive damage and loss of life can be caused by landfalling tropical cyclones (TCs). Seasonal for...
A logistic regression model (LRRI) and a neural network model (NNRI) for RI forecasting of TCs are d...
This paper developed a deep learning (DL) model for forecasting tropical cyclone (TC) intensity in t...
The chaotic nature of cyclones makes track and wind-intensity prediction a challenging task. The com...
International audienceThe forecast of tropical cyclone trajectories is crucial for the protection of...
Accurate prediction of track and intensity of land-falling tropical cyclones is of the great importa...
x, 104 p. : ill. ; 30 cm.PolyU Library Call No.: [THS] LG51 .H577M COMP 2007 FengA tropical cyclone ...
This paper investigates the forecast potential of tropical cyclone (TC) landfall probabilities over ...
Introduction: Tropical Cyclones (TCs) inflict considerable damage to life and property every year. A...
The performance of the Advanced Research version of the Weather Research and Forecasting (ARW) model...
Previous studies have shown that the skill of seasonal forecasts of tropical cyclone (TC) activity o...
Weather prediction over the years has been a challenge for the meteorological centers in the South P...
Hurricanes are cyclones circulating about a defined center whose closed wind speeds exceed 75 mph or...
Extensive damage and loss of life can be caused by landfalling tropical cyclones (TCs). Seasonal for...
A logistic regression model (LRRI) and a neural network model (NNRI) for RI forecasting of TCs are d...
This paper developed a deep learning (DL) model for forecasting tropical cyclone (TC) intensity in t...
The chaotic nature of cyclones makes track and wind-intensity prediction a challenging task. The com...
International audienceThe forecast of tropical cyclone trajectories is crucial for the protection of...
Accurate prediction of track and intensity of land-falling tropical cyclones is of the great importa...