Traditional forecasting models have been widely used for decision-making in production, finance and energy. Such is the case of the ARIMA models, developed in the 1970s by George Box and Gwilym Jenkins [1], which incorporate characteristics of the past models of the same series, according to their autocorrelation. This work compares advanced statistical methods for determining the demand for electricity in Colombia, including the SARIMA, econometric and Bayesian methods
This thesis presents six forecasting models for annual electricity consumption based on various time...
This study, which is the first of its kind in Zimbabwe, uses annual time series data on electricity ...
This study aims to predict electricity prices in the Colombian electricity market. To achieve this g...
Traditional forecasting models have been widely used for decision-making in production, finance and ...
Traditional forecasting models have been widely used for decision-making in production, finance and ...
This paper shows a comparison of three methods to do forecasts, applied to electric energy daily dem...
The electricity price in Colombia responds to demographic, economic, climatic changes, among others,...
The electricity price in Colombia responds to demographic, economic, climatic changes, among others,...
Over the time, the electricity industry has become the most important factor impacting the developme...
La predicción de la demanda es un problema de gran importancia para el sector eléctrico, ya que a pa...
Customer demand for electrical energy continues to increase, so electrical energy infrastructure mus...
In this paper, seasonal autoregressive integrated moving average (SARIMA) and regression with SARIMA...
This article provides a comparison of the performance of an ARIMA model, a multilayer perceptron, an...
This research focuses its efforts on the prediction of medium-term electricity consumption for scena...
The high volatility of electricity prices has motivated researchers and academics to design models t...
This thesis presents six forecasting models for annual electricity consumption based on various time...
This study, which is the first of its kind in Zimbabwe, uses annual time series data on electricity ...
This study aims to predict electricity prices in the Colombian electricity market. To achieve this g...
Traditional forecasting models have been widely used for decision-making in production, finance and ...
Traditional forecasting models have been widely used for decision-making in production, finance and ...
This paper shows a comparison of three methods to do forecasts, applied to electric energy daily dem...
The electricity price in Colombia responds to demographic, economic, climatic changes, among others,...
The electricity price in Colombia responds to demographic, economic, climatic changes, among others,...
Over the time, the electricity industry has become the most important factor impacting the developme...
La predicción de la demanda es un problema de gran importancia para el sector eléctrico, ya que a pa...
Customer demand for electrical energy continues to increase, so electrical energy infrastructure mus...
In this paper, seasonal autoregressive integrated moving average (SARIMA) and regression with SARIMA...
This article provides a comparison of the performance of an ARIMA model, a multilayer perceptron, an...
This research focuses its efforts on the prediction of medium-term electricity consumption for scena...
The high volatility of electricity prices has motivated researchers and academics to design models t...
This thesis presents six forecasting models for annual electricity consumption based on various time...
This study, which is the first of its kind in Zimbabwe, uses annual time series data on electricity ...
This study aims to predict electricity prices in the Colombian electricity market. To achieve this g...