Forecasting a multiple seasonal data is differ from a usual seasonal data since it contains more than one cycle in a data. Multiple linear regression (MLR) models have been used widely in load forecasting because of its usefulness in the forecast a linear relationship with other factors but MLR has a disadvantage of having difficulties in modelling a nonlinear relationship between the variables and influencing factors. Neural network (NN) model, on the other hand, is a good model for modelling a nonlinear data. Therefore, in this study, a combination of MLR and NN models has proposed this combination to overcome the problem. This hybrid model is then compared with MLR and NN models to see the performance of the hybrid model. RMSE is u...
Time series analysis has been applied intensively and sophisticatedly to model and forecast many pro...
Tools such as short-term load forecast (STLF) play an ever-important role in the operation and plann...
Demand load forecasting is the estimation of electrical load that will be required by a certain geog...
Forecasting a multiple seasonal data is differ from a usual seasonal data since it contains more tha...
Starting from conventional models, researchers have begun to develop advanced techniques. One recent...
A hybrid model, which combines the seasonal time series ARIMA (SARIMA) and the multilayer feedforwar...
The purpose of this study was to apply the proposed model selection strategies in order to develop t...
In this paper, two artificial neural networks models, namely the multilayer feedforward neural netwo...
Electricity load forecasting often has many properties such as the nonlinearity, double seasonal cyc...
Short-term electricity load demand forecast is a vital requirements for power systems. This research...
Electric load forecasting in summer season is an important task do to avoid any irregularity in the ...
Neural network (NN) models have been widely used in the literature for short-term load forecasting. ...
In this paper short term load forecasting (STLF) is done with using multiple linear regression (MLR)...
Time series analysis has been applied intensively and sophisticatedly to model and forecast many pro...
This article provides a way of predicting one week ahead load forecasting using the data of Madhya P...
Time series analysis has been applied intensively and sophisticatedly to model and forecast many pro...
Tools such as short-term load forecast (STLF) play an ever-important role in the operation and plann...
Demand load forecasting is the estimation of electrical load that will be required by a certain geog...
Forecasting a multiple seasonal data is differ from a usual seasonal data since it contains more tha...
Starting from conventional models, researchers have begun to develop advanced techniques. One recent...
A hybrid model, which combines the seasonal time series ARIMA (SARIMA) and the multilayer feedforwar...
The purpose of this study was to apply the proposed model selection strategies in order to develop t...
In this paper, two artificial neural networks models, namely the multilayer feedforward neural netwo...
Electricity load forecasting often has many properties such as the nonlinearity, double seasonal cyc...
Short-term electricity load demand forecast is a vital requirements for power systems. This research...
Electric load forecasting in summer season is an important task do to avoid any irregularity in the ...
Neural network (NN) models have been widely used in the literature for short-term load forecasting. ...
In this paper short term load forecasting (STLF) is done with using multiple linear regression (MLR)...
Time series analysis has been applied intensively and sophisticatedly to model and forecast many pro...
This article provides a way of predicting one week ahead load forecasting using the data of Madhya P...
Time series analysis has been applied intensively and sophisticatedly to model and forecast many pro...
Tools such as short-term load forecast (STLF) play an ever-important role in the operation and plann...
Demand load forecasting is the estimation of electrical load that will be required by a certain geog...