In this paper, seasonal autoregressive integrated moving average (SARIMA) and regression with SARIMA errors (regression-SARIMA) models are developed to predict daily peak electricity demand in South Africa using data for the period 1996 to 2009. The performance of the developed models is evaluated by comparing them with Winter’s triple exponential smoothing model. Empirical results from the study show that the SARIMA model produces more accurate short-term forecasts. The regression-SARIMA modelling framework captures important drivers of electricity demand. These results are important to decision makers, load forecasters and systems operators in load flow analysis and scheduling of electricity
Abstract: In this paper, load forecasting as applied to a medium voltage distribution power network ...
Load demand is a time series data and it is one of the major input factors in economic development e...
Time series modeling is an effective approach for studying and analyzing the future performance of t...
In this paper, seasonal autoregressive integrated moving average (SARIMA) and regression with SARIMA...
The paper presents a multivariate adaptive regression splines (MARS) modelling approach for daily pe...
Accurate prediction of daily peak load demand is very important for decision makers in the energy se...
Dissertation submitted for Masters of Science degree in Mathematical Statistics in the Faculty of ...
Master of Science in Statistics. University of KwaZulu-Natal, Pietermaritzburg 2016.Different sector...
A Thesis submitted to the Dept. of Mathematics for MScToday, most of the countries use forecasting t...
The paper discusses an application of generalised additive models (GAMs) in predicting medium-term h...
This work is part of a Honours dissertation written by Michael Simpson under the supervision of Erwa...
The paper discusses the modelling of the influence of temperature on average daily electricity deman...
In this study, we used ARIMA, seasonal ARIMA (SARIMA) and alternatively the regression model with se...
The electrical load, sampled every hour, at Salagatan 18 in Uppsala was used to form models and for ...
The electrical load, sampled every hour, at Salagatan 18 in Uppsala was used to form models and for ...
Abstract: In this paper, load forecasting as applied to a medium voltage distribution power network ...
Load demand is a time series data and it is one of the major input factors in economic development e...
Time series modeling is an effective approach for studying and analyzing the future performance of t...
In this paper, seasonal autoregressive integrated moving average (SARIMA) and regression with SARIMA...
The paper presents a multivariate adaptive regression splines (MARS) modelling approach for daily pe...
Accurate prediction of daily peak load demand is very important for decision makers in the energy se...
Dissertation submitted for Masters of Science degree in Mathematical Statistics in the Faculty of ...
Master of Science in Statistics. University of KwaZulu-Natal, Pietermaritzburg 2016.Different sector...
A Thesis submitted to the Dept. of Mathematics for MScToday, most of the countries use forecasting t...
The paper discusses an application of generalised additive models (GAMs) in predicting medium-term h...
This work is part of a Honours dissertation written by Michael Simpson under the supervision of Erwa...
The paper discusses the modelling of the influence of temperature on average daily electricity deman...
In this study, we used ARIMA, seasonal ARIMA (SARIMA) and alternatively the regression model with se...
The electrical load, sampled every hour, at Salagatan 18 in Uppsala was used to form models and for ...
The electrical load, sampled every hour, at Salagatan 18 in Uppsala was used to form models and for ...
Abstract: In this paper, load forecasting as applied to a medium voltage distribution power network ...
Load demand is a time series data and it is one of the major input factors in economic development e...
Time series modeling is an effective approach for studying and analyzing the future performance of t...