This paper considers univariate online electricity demand forecasting for lead times from a half-hour-ahead to a day-ahead. A time series of demand recorded at half-hourly intervals contains more than one seasonal pattern. A within-day seasonal cycle is apparent from the similarity of the demand profile from one day to the next, and a within-week seasonal cycle is evident when one compares the demand on the corresponding day of adjacent weeks. There is strong appeal in using a forecasting method that is able to capture both seasonalities. The multiplicative seasonal ARIMA model has been adapted for this purpose. In this paper, we adapt the Holt–Winters exponential smoothing formulation so that it can accommodate two seasonalities. We correc...
This work is part of a Honours dissertation written by Michael Simpson under the supervision of Erwa...
A new approach to forecasting seasonal data is proposed where seasonal terms can be updated using th...
This paper presents the development of an autoregressive based time varying (ARTV) model to forecast...
This paper considers univariate online electricity demand forecasting for lead times from a half-hou...
This paper considers univariate online electricity demand forecasting for lead times from a half-hou...
This paper considers univariate online electricity demand forecasting for lead times from a half-hou...
Online short-term load forecasting is needed for the real-time scheduling of electricity generation....
Online short-term load forecasting is needed for the real-time scheduling of electricity generation....
This paper uses minute-by-minute British electricity demand observations to evaluate methods for pre...
This paper uses intraday electricity demand data from 10 European countries as the basis of an empir...
Abstract-- This paper uses intraday electricity demand data from 10 European countries as the basis ...
This paper uses minute-by-minute British electricity demand observations to evaluate methods for pre...
This empirical paper compares the accuracy of six univariate methods for short-term electricity dema...
This empirical paper compares the accuracy of six univariate methods for short-term electricity dema...
Control and Scheduling of the electricity demand in power supply systems using time series forecast...
This work is part of a Honours dissertation written by Michael Simpson under the supervision of Erwa...
A new approach to forecasting seasonal data is proposed where seasonal terms can be updated using th...
This paper presents the development of an autoregressive based time varying (ARTV) model to forecast...
This paper considers univariate online electricity demand forecasting for lead times from a half-hou...
This paper considers univariate online electricity demand forecasting for lead times from a half-hou...
This paper considers univariate online electricity demand forecasting for lead times from a half-hou...
Online short-term load forecasting is needed for the real-time scheduling of electricity generation....
Online short-term load forecasting is needed for the real-time scheduling of electricity generation....
This paper uses minute-by-minute British electricity demand observations to evaluate methods for pre...
This paper uses intraday electricity demand data from 10 European countries as the basis of an empir...
Abstract-- This paper uses intraday electricity demand data from 10 European countries as the basis ...
This paper uses minute-by-minute British electricity demand observations to evaluate methods for pre...
This empirical paper compares the accuracy of six univariate methods for short-term electricity dema...
This empirical paper compares the accuracy of six univariate methods for short-term electricity dema...
Control and Scheduling of the electricity demand in power supply systems using time series forecast...
This work is part of a Honours dissertation written by Michael Simpson under the supervision of Erwa...
A new approach to forecasting seasonal data is proposed where seasonal terms can be updated using th...
This paper presents the development of an autoregressive based time varying (ARTV) model to forecast...