An objectively trained model for tropical cyclone intensity estimation from routine satellite infrared images over the Northwestern Pacific Ocean is presented in this paper. The intensity is correlated to some critical signals extracted from the satellite infrared images, by training the 325 tropical cyclone cases from 1996 to 2007 typhoon seasons. To begin with, deviation angles and radial profiles of infrared images are calculated to extract as much potential predicators for intensity as possible. These predicators are examined strictly and included into (or excluded from) the initial predicator pool for regression manually. Then, the “thinned” potential predicators are regressed to the intensity by performing a stepwise regression proced...
A logistic regression model (LRRI) and a neural network model (NNRI) for RI forecasting of TCs are d...
Microwave remote sensing can be used to measure ocean surface winds, which can be used to detect tro...
Automated prediction of hurricane intensity from satellite infrared imagery is a challenging problem...
An objectively trained model for tropical cyclone intensity estimation from routine satellite infrar...
Thirty-year (1980–2009) tropical cyclone (TC) images from geostationary satellite (GOES, Meteosat, G...
This document proposes an objective technique to estimate the intensity and predict the formation of...
The standard method for estimating the intensity of tropical cyclones is based on satellite observat...
A novel tropical cyclone (TC) size estimation model (TC-SEM) in the western North Pacific was develo...
A multiple regression scheme with tropical cyclone intensity change as the dependent variable has be...
The authors describe the development and verification of a statistical model relating tropical cyclo...
Infrared (IR) imagery from geostationary satel-lites is a crucial tool in diagnosing and forecasting...
This paper assesses the characteristics of linear statistical models developed for tropical cyclone ...
The article of record as published may be found at https://doi.org/10.1175/WAF-D-18-0136.1Accurately...
This paper developed a deep learning (DL) model for forecasting tropical cyclone (TC) intensity in t...
Many sub continents in the world have the region that are affected by the cyclone in every year. To ...
A logistic regression model (LRRI) and a neural network model (NNRI) for RI forecasting of TCs are d...
Microwave remote sensing can be used to measure ocean surface winds, which can be used to detect tro...
Automated prediction of hurricane intensity from satellite infrared imagery is a challenging problem...
An objectively trained model for tropical cyclone intensity estimation from routine satellite infrar...
Thirty-year (1980–2009) tropical cyclone (TC) images from geostationary satellite (GOES, Meteosat, G...
This document proposes an objective technique to estimate the intensity and predict the formation of...
The standard method for estimating the intensity of tropical cyclones is based on satellite observat...
A novel tropical cyclone (TC) size estimation model (TC-SEM) in the western North Pacific was develo...
A multiple regression scheme with tropical cyclone intensity change as the dependent variable has be...
The authors describe the development and verification of a statistical model relating tropical cyclo...
Infrared (IR) imagery from geostationary satel-lites is a crucial tool in diagnosing and forecasting...
This paper assesses the characteristics of linear statistical models developed for tropical cyclone ...
The article of record as published may be found at https://doi.org/10.1175/WAF-D-18-0136.1Accurately...
This paper developed a deep learning (DL) model for forecasting tropical cyclone (TC) intensity in t...
Many sub continents in the world have the region that are affected by the cyclone in every year. To ...
A logistic regression model (LRRI) and a neural network model (NNRI) for RI forecasting of TCs are d...
Microwave remote sensing can be used to measure ocean surface winds, which can be used to detect tro...
Automated prediction of hurricane intensity from satellite infrared imagery is a challenging problem...