In this paper we focus on the one year ahead prediction of the electricity peak-demand daily trajectory during the winter season in Central England and Wales. We define a Bayesian hierarchical model for predicting the winter trajectories and present results based on the past observed weather. Thanks to the flexibility of the Bayesian approach, we are able to produce the marginal posterior distributions of all the predictands of interest. This is a fundamental progress with respect to the classical methods. The results are encouraging in both skill and representation of uncertainty. Further extensions are straightforward at least in principle. The main two of those consist in conditioning the weather generator model with respect to additiona...
In this paper we extend autoregressive models to fit time series that have three layers of seasonali...
In this paper, we are interested in the estimation and prediction of a parametric model on a short d...
Selection of appropriate climatic variables for prediction of electricity demand is critical as it a...
In this paper we focus on the one year ahead prediction of the electricity peak-demand daily traject...
With the advent of wholesale electricity markets there has been renewed focus on intra-day electrici...
An analytical Bayesian approach to seasonal analysis is proposed, using robust priors to control for...
This article focuses on developing both statistical and machine learning approaches for forecasting ...
Prepared under the support of The National Science Foundation Grant No. CEE-8107204Bayesian decision...
Electricity demand (or “load”) forecasting has been subject to several time series based studies, mo...
In this thesis, a Bayesian hierarchical model for daily average temperature is presented. A multivar...
Providing generic and cost effective modelling approaches to reconstruct and forecast freshwater tem...
The effect of weather on health has been widely researched, and the ability to forecast meteorologic...
Decisions regarding the supply of electricity across a power grid must take into consideration the i...
Providing generic and cost effective modelling approaches to reconstruct and forecast freshwater tem...
This paper uses minute-by-minute British electricity demand observations to evaluate methods for pre...
In this paper we extend autoregressive models to fit time series that have three layers of seasonali...
In this paper, we are interested in the estimation and prediction of a parametric model on a short d...
Selection of appropriate climatic variables for prediction of electricity demand is critical as it a...
In this paper we focus on the one year ahead prediction of the electricity peak-demand daily traject...
With the advent of wholesale electricity markets there has been renewed focus on intra-day electrici...
An analytical Bayesian approach to seasonal analysis is proposed, using robust priors to control for...
This article focuses on developing both statistical and machine learning approaches for forecasting ...
Prepared under the support of The National Science Foundation Grant No. CEE-8107204Bayesian decision...
Electricity demand (or “load”) forecasting has been subject to several time series based studies, mo...
In this thesis, a Bayesian hierarchical model for daily average temperature is presented. A multivar...
Providing generic and cost effective modelling approaches to reconstruct and forecast freshwater tem...
The effect of weather on health has been widely researched, and the ability to forecast meteorologic...
Decisions regarding the supply of electricity across a power grid must take into consideration the i...
Providing generic and cost effective modelling approaches to reconstruct and forecast freshwater tem...
This paper uses minute-by-minute British electricity demand observations to evaluate methods for pre...
In this paper we extend autoregressive models to fit time series that have three layers of seasonali...
In this paper, we are interested in the estimation and prediction of a parametric model on a short d...
Selection of appropriate climatic variables for prediction of electricity demand is critical as it a...