A probabilistic tracking model is introduced that identifies storm tracks from feature vectors that are extracted from meteorological analysis data. The model assumes that the genesis and lysis times of each track are unknown and estimates their values along with the track’s position and storm intensity over time. A hidden-state dynamics model (Kalman filter) characterizes the temporal evolution of the storms.The model uses a Bayesian methodology for estimating the unknown lifetimes (genesis–lysis pairs) and tracks of the storms. Prior distributions are placed over the unknown parameters and their posterior distributions are estimated using a Markov Chain Monte Carlo (MCMC) sampling algorithm. The posterior distributions are used to identif...
Abstract: In the past, stochastic modelling approaches generally assumed no variation in the paramet...
Typescript (photocopy).A dynamic and statistical algorithm is constructed for a probabilistic foreca...
A Bayesian analysis of rare-event time series is presented. The model space for the description of ...
A probabilistic tracking model is introduced that identifies storm tracks from feature vectors that ...
Storm surge, the onshore rush of sea water caused by the high winds and low pressure associated with...
This thesis examines the use of statistical post-processing techniques involving Bayesian estimation...
A hierarchical Bayesian strategy for modeling annual U.S. hurricane counts from the period 1851–2000...
Seasonal point processes refer to stochastic models for random events which are only observed in a g...
The chaotic nature of cyclones makes track and wind-intensity prediction a challenging task. The com...
A new 'storm-tracking approach' to analysing the prediction of storms by different forecast systems ...
The steady-state assumption commonly used in object-based tracking algorithms may be insufficient to...
We present a statistical approach to object tracking which allows for paths to merge together or spl...
Prediction of coastal vulnerability is of increasing concern to policy makers, coastal managers and ...
BAYEX offers spatiotemporal Bayesian hierarchical modeling of storm surge extremes using max-stable ...
The effective prediction of storm track (ST) is greatly beneficial for analyzing the development and...
Abstract: In the past, stochastic modelling approaches generally assumed no variation in the paramet...
Typescript (photocopy).A dynamic and statistical algorithm is constructed for a probabilistic foreca...
A Bayesian analysis of rare-event time series is presented. The model space for the description of ...
A probabilistic tracking model is introduced that identifies storm tracks from feature vectors that ...
Storm surge, the onshore rush of sea water caused by the high winds and low pressure associated with...
This thesis examines the use of statistical post-processing techniques involving Bayesian estimation...
A hierarchical Bayesian strategy for modeling annual U.S. hurricane counts from the period 1851–2000...
Seasonal point processes refer to stochastic models for random events which are only observed in a g...
The chaotic nature of cyclones makes track and wind-intensity prediction a challenging task. The com...
A new 'storm-tracking approach' to analysing the prediction of storms by different forecast systems ...
The steady-state assumption commonly used in object-based tracking algorithms may be insufficient to...
We present a statistical approach to object tracking which allows for paths to merge together or spl...
Prediction of coastal vulnerability is of increasing concern to policy makers, coastal managers and ...
BAYEX offers spatiotemporal Bayesian hierarchical modeling of storm surge extremes using max-stable ...
The effective prediction of storm track (ST) is greatly beneficial for analyzing the development and...
Abstract: In the past, stochastic modelling approaches generally assumed no variation in the paramet...
Typescript (photocopy).A dynamic and statistical algorithm is constructed for a probabilistic foreca...
A Bayesian analysis of rare-event time series is presented. The model space for the description of ...