We suggest a new approach for forecasting energy demand at an intraday resolution. Demand in each intraday period is modeled using semiparametric regression smoothing to account for calendar and weather components. Residual serial dependence is captured by one of two multivariate stationary time series models, with dimension equal to the number of intraday periods. These are a periodic autoregression and a dynamic factor model. We show the benefits of our approach in the forecasting of district heating demand in a steam network in Germany and aggregate electricity demand in the state of Victoria, Australia. In both studies, accounting for weather can provide substantial improvements in the quality of forecasts, as does the use of the t...
The aim of this study is to develop novel forecasting methodologies. The applications of our propose...
This paper considers univariate online electricity demand forecasting for lead times from a half-hou...
Selection of appropriate climatic variables for prediction of electricity demand is critical as it a...
Mestekemper T, Kauermann G, Smith MS. A comparison of periodic autoregressive and dynamic factor mod...
This paper presents a selective order autoregressive model to forecast electricity demand. In the fi...
This paper presents the development of an autoregressive based time varying (ARTV) model to forecast...
This paper describes the application of time-series modelling techniques to electricity consumption ...
This paper uses intraday electricity demand data from 10 European countries as the basis of an empir...
Abstract Weather forecasting is crucial to both the demand and supply sides of electricity systems. ...
Abstract-- This paper uses intraday electricity demand data from 10 European countries as the basis ...
A dynamic multivariate periodic regression model for hourly data is considered. The dependent hourly...
Electricity demand (or “load”) forecasting has been subject to several time series based studies, mo...
none3noThis paper discusses the application of Hilbertian Auto Regressive models to medium term fore...
The quality of short-term electricity load forecasting is crucial to the operation and trading activ...
With the increasing demand of energy, the energy production is not that much sufficient and that’s w...
The aim of this study is to develop novel forecasting methodologies. The applications of our propose...
This paper considers univariate online electricity demand forecasting for lead times from a half-hou...
Selection of appropriate climatic variables for prediction of electricity demand is critical as it a...
Mestekemper T, Kauermann G, Smith MS. A comparison of periodic autoregressive and dynamic factor mod...
This paper presents a selective order autoregressive model to forecast electricity demand. In the fi...
This paper presents the development of an autoregressive based time varying (ARTV) model to forecast...
This paper describes the application of time-series modelling techniques to electricity consumption ...
This paper uses intraday electricity demand data from 10 European countries as the basis of an empir...
Abstract Weather forecasting is crucial to both the demand and supply sides of electricity systems. ...
Abstract-- This paper uses intraday electricity demand data from 10 European countries as the basis ...
A dynamic multivariate periodic regression model for hourly data is considered. The dependent hourly...
Electricity demand (or “load”) forecasting has been subject to several time series based studies, mo...
none3noThis paper discusses the application of Hilbertian Auto Regressive models to medium term fore...
The quality of short-term electricity load forecasting is crucial to the operation and trading activ...
With the increasing demand of energy, the energy production is not that much sufficient and that’s w...
The aim of this study is to develop novel forecasting methodologies. The applications of our propose...
This paper considers univariate online electricity demand forecasting for lead times from a half-hou...
Selection of appropriate climatic variables for prediction of electricity demand is critical as it a...