Weather generators are increasingly becoming viable alternate models to assess the effects of future climate change scenarios on water resources systems. In this study, a new multisite, multivariate maximum entropy bootstrap weather generator (MEBWG) is proposed for generating daily weather variables, which has the ability to mimic both, spatial and temporal dependence structure in addition to other historical statistics. The maximum entropy bootstrap (MEB) involves two main steps: (1) random sampling from the empirical cumulative distribution function with endpoints selected to allow limited extrapolation and (2) reordering of the random series to respect the rank ordering of the original time series (temporal dependence structure). To cap...
Many climate impact assessments require high-resolution precipitation time series that have a spatio...
AbstractThis paper describes a versatile stochastic daily weather generator (WeaGETS) for producing ...
ABSTRACT Weather generators are increasingly used in water resources studies, and more so with curr...
Abstract: This paper describes the development and application of a weather generator capable of gen...
Capturing the spatial and temporal correlation of multiple variables in a weather generator is chall...
A generic weather generator, based on the K-nearest neighbour algorithm, is presented for producing ...
Copyright © 2013 Nándor Fodor et al. This is an open access article distributed under the Creative ...
A major limitation of K- nearest neighbor based weather generators is that they do not produce new v...
Although General Circulation Models (GCMs) are used to provide insight into scenario planning, ecolo...
WeaGETS is a MATLAB-based versatile random day-to-day weather generator. It can produce everyday r...
We use the principle of maximum entropy to propose a parsimonious model for the generation of simula...
A stochastic weather generator is constructed to simulate long series of precipitation and temperatu...
Weather generators are tools used to downscale monthly to seasonal climate forecasts, from numerical...
Climate is one of the single most important factors affecting watershed ecosystems and water resourc...
[EN] Temperature is one of the most influential weather variables necessary for numerous studies, su...
Many climate impact assessments require high-resolution precipitation time series that have a spatio...
AbstractThis paper describes a versatile stochastic daily weather generator (WeaGETS) for producing ...
ABSTRACT Weather generators are increasingly used in water resources studies, and more so with curr...
Abstract: This paper describes the development and application of a weather generator capable of gen...
Capturing the spatial and temporal correlation of multiple variables in a weather generator is chall...
A generic weather generator, based on the K-nearest neighbour algorithm, is presented for producing ...
Copyright © 2013 Nándor Fodor et al. This is an open access article distributed under the Creative ...
A major limitation of K- nearest neighbor based weather generators is that they do not produce new v...
Although General Circulation Models (GCMs) are used to provide insight into scenario planning, ecolo...
WeaGETS is a MATLAB-based versatile random day-to-day weather generator. It can produce everyday r...
We use the principle of maximum entropy to propose a parsimonious model for the generation of simula...
A stochastic weather generator is constructed to simulate long series of precipitation and temperatu...
Weather generators are tools used to downscale monthly to seasonal climate forecasts, from numerical...
Climate is one of the single most important factors affecting watershed ecosystems and water resourc...
[EN] Temperature is one of the most influential weather variables necessary for numerous studies, su...
Many climate impact assessments require high-resolution precipitation time series that have a spatio...
AbstractThis paper describes a versatile stochastic daily weather generator (WeaGETS) for producing ...
ABSTRACT Weather generators are increasingly used in water resources studies, and more so with curr...