Load forecasting is a critical aspect of energy management and grid operations. Machine learning techniques as support vector regression (SVR), have been widely used for load forecasting. However, the effectiveness of SVR is highly dependent on its hyperparameters, including the error sensitivity parameter, penalty factor, and kernel function. Furthermore, as the load data follows a time series pattern, the accuracy of the SVR model is influenced by the data's characteristics. In this regard, the present study aims to investigate the impact of combining the sliding window procedure and differencing the input data on the prediction accuracy of the SVR model. The study utilizes daily maximum load data from the Queensland and Victoria states i...
Load forecasting is usually made by constructing models on relative information, such as climate and...
In this work, a strategy for automatic lag selection in time series analysis is proposed. The method...
In order to reduce the effect of numerical weather prediction (NWP) error on short term load forecas...
Load forecasting is a critical aspect of energy management and grid operations. Machine learning tec...
Machine learning plays a vital role in several modern economic and industrial fields, and selecting ...
Electric load forecasting is an important issue for a power utility, associated with the management ...
Load forecasting had been a focal point of research throughout many countries. It played a vital rol...
In recent years, support vector regression (SVR) models have been widely applied in short-term elect...
In energy demand forecasting, the objective function is often symmetric, implying that over-predicti...
Short term load forecasting (STLF) has gained huge interest among researchers because of its applica...
Load forecasting plays an important role in the energy management system. An accurately predictive t...
Load forecasting is at the core of nearly all decisions made in energy markets. The electricity load...
Abstract — Load forecasting has become a significant part in national power system strategy manageme...
Short-term load forecasting (STLF) plays an important role in business strategy building, ensuring r...
which permits unrestricted use, distribution, and reproduction in any medium, provided the original ...
Load forecasting is usually made by constructing models on relative information, such as climate and...
In this work, a strategy for automatic lag selection in time series analysis is proposed. The method...
In order to reduce the effect of numerical weather prediction (NWP) error on short term load forecas...
Load forecasting is a critical aspect of energy management and grid operations. Machine learning tec...
Machine learning plays a vital role in several modern economic and industrial fields, and selecting ...
Electric load forecasting is an important issue for a power utility, associated with the management ...
Load forecasting had been a focal point of research throughout many countries. It played a vital rol...
In recent years, support vector regression (SVR) models have been widely applied in short-term elect...
In energy demand forecasting, the objective function is often symmetric, implying that over-predicti...
Short term load forecasting (STLF) has gained huge interest among researchers because of its applica...
Load forecasting plays an important role in the energy management system. An accurately predictive t...
Load forecasting is at the core of nearly all decisions made in energy markets. The electricity load...
Abstract — Load forecasting has become a significant part in national power system strategy manageme...
Short-term load forecasting (STLF) plays an important role in business strategy building, ensuring r...
which permits unrestricted use, distribution, and reproduction in any medium, provided the original ...
Load forecasting is usually made by constructing models on relative information, such as climate and...
In this work, a strategy for automatic lag selection in time series analysis is proposed. The method...
In order to reduce the effect of numerical weather prediction (NWP) error on short term load forecas...