Uncertainty of the electricity prices makes the task of accurate forecasting quite difficult for the electricity market participants. Prediction intervals (PIs) are statistical tools which quantify the uncertainty related to forecasts by estimating the ranges of the future electricity prices. Traditional approaches based on neural networks (NNs) generate PIs at the cost of high computational burden and doubtful assumptions about data distributions. In this work, we propose a novel technique that is not plagued with the above limitations and it generates high-quality PIs in a short time. The proposed method directly generates the lower and upper bounds of the future electricity prices using support vector machines (SVM). Optimal model parame...
Real-time electricity pricing mechanisms are emerging as a key component of the smart grid. However,...
Predicting electricity price has now become an important task in power system operation and planning...
This letter proposes a novel Pareto optimal prediction interval construction approach for electricit...
Uncertainty is known to be a concomitant factor of almost all the real world commodities such as oil...
Electricity price forecasting is a difficult yet essential task for market participants in a deregul...
Predicting electricity price has now become an important task for planning and maintenance of power ...
Accurate electricity price prediction is key to the orderly operation of the electricity market. How...
The complexity and level of uncertainty present in operation of power systems have significantly gro...
Forecasting price is an essential task in electrical power system. In terms of duration, it can be c...
This thesis reports findings from a number of modern machine learning techniques applied to electric...
With the reform of the power system, the prediction of power market pricing has become one of the ke...
In European countries, the last decade has been characterized by a deregulation of power production ...
Electricity markets are considered to be the most volatile amongst commodity markets. The non-storab...
Predicting electricity price has now become an important task for planning and maintenance of power ...
Publisher Copyright: © 2021 by the authors. Licensee MDPI, Basel, Switzerland.Real‐time electricity ...
Real-time electricity pricing mechanisms are emerging as a key component of the smart grid. However,...
Predicting electricity price has now become an important task in power system operation and planning...
This letter proposes a novel Pareto optimal prediction interval construction approach for electricit...
Uncertainty is known to be a concomitant factor of almost all the real world commodities such as oil...
Electricity price forecasting is a difficult yet essential task for market participants in a deregul...
Predicting electricity price has now become an important task for planning and maintenance of power ...
Accurate electricity price prediction is key to the orderly operation of the electricity market. How...
The complexity and level of uncertainty present in operation of power systems have significantly gro...
Forecasting price is an essential task in electrical power system. In terms of duration, it can be c...
This thesis reports findings from a number of modern machine learning techniques applied to electric...
With the reform of the power system, the prediction of power market pricing has become one of the ke...
In European countries, the last decade has been characterized by a deregulation of power production ...
Electricity markets are considered to be the most volatile amongst commodity markets. The non-storab...
Predicting electricity price has now become an important task for planning and maintenance of power ...
Publisher Copyright: © 2021 by the authors. Licensee MDPI, Basel, Switzerland.Real‐time electricity ...
Real-time electricity pricing mechanisms are emerging as a key component of the smart grid. However,...
Predicting electricity price has now become an important task in power system operation and planning...
This letter proposes a novel Pareto optimal prediction interval construction approach for electricit...