ABSTRACT: Many existing approaches for multisite weather generation try to capture several statistics of the observed data (e.g. pairwise correlations) in order to generate spatially and temporarily consistent series. In this work we analyse the application of Bayesian networks to this problem, focusing on precipitation occurrence and considering a simple case study to illustrate the potential of this new approach. We use Bayesian networks to approximate the multi-variate (-site) probability distribution of observed gauge data, which is factorized according to the relevant (marginal and conditional) dependencies. This factorization allows the simulation of synthetic samples from the multivariate distribution, thus providing a sound and prom...
[EN] Temperature is one of the most influential weather variables necessary for numerous studies, su...
A nonlinear, probabilistic synoptic downscaling algorithm for daily precipitation series at multiple...
This paper presents a stochastic model to generate daily rainfall occurrences at multiple gauging st...
This article also appears in: Big Data and Machine Learning in Water Sciences: Recent Progress and T...
Ponencia presentada en: 15th European Conference on Artificial Intelligence celebrada los días 21-26...
With extreme weather events becoming more common, the risk posed by surface water flooding is ever i...
Stochastic weather generators can generate very long time series of weather patterns, which are indi...
We estimate a Hierarchical Bayesian models for daily rainfall that incorporates two novelties for es...
Stochastic weather generators (SWGs) are designed to create simulations of synthetic weather data an...
In this paper we deal with the problem of forecasting local rainfall at multiple meteorological stat...
Estimating precipitation volume over space and time is essential for many reasons such as evaluating...
Capturing the spatial and temporal correlation of multiple variables in a weather generator is chall...
A daily stochastic spatiotemporal precipitation generator that yields precipitation realizations tha...
Stochastic daily weather time-series models ("weather generators") are parameterized consi...
Abstract: This article reviews the historical development of statistical weather models, from simple...
[EN] Temperature is one of the most influential weather variables necessary for numerous studies, su...
A nonlinear, probabilistic synoptic downscaling algorithm for daily precipitation series at multiple...
This paper presents a stochastic model to generate daily rainfall occurrences at multiple gauging st...
This article also appears in: Big Data and Machine Learning in Water Sciences: Recent Progress and T...
Ponencia presentada en: 15th European Conference on Artificial Intelligence celebrada los días 21-26...
With extreme weather events becoming more common, the risk posed by surface water flooding is ever i...
Stochastic weather generators can generate very long time series of weather patterns, which are indi...
We estimate a Hierarchical Bayesian models for daily rainfall that incorporates two novelties for es...
Stochastic weather generators (SWGs) are designed to create simulations of synthetic weather data an...
In this paper we deal with the problem of forecasting local rainfall at multiple meteorological stat...
Estimating precipitation volume over space and time is essential for many reasons such as evaluating...
Capturing the spatial and temporal correlation of multiple variables in a weather generator is chall...
A daily stochastic spatiotemporal precipitation generator that yields precipitation realizations tha...
Stochastic daily weather time-series models ("weather generators") are parameterized consi...
Abstract: This article reviews the historical development of statistical weather models, from simple...
[EN] Temperature is one of the most influential weather variables necessary for numerous studies, su...
A nonlinear, probabilistic synoptic downscaling algorithm for daily precipitation series at multiple...
This paper presents a stochastic model to generate daily rainfall occurrences at multiple gauging st...