Title :
Novel Hybrid Market Price Forecasting Method With Data Clustering Techniques for EV Charging Station Application
Author :
Sarikprueck, Piampoom ; Wei-Jen Lee ; Kulvanitchaiyanunt, Asama ; Chen, Victoria C. P. ; Rosenberger, Jay
Author_Institution :
Energy Syst. Res. Center, Univ. of Texas at Arlington, Arlington, TX, USA
Abstract :
In addition to providing charging service, an electric vehicle charging station equipped with a distributed energy storage system can also participate in the deregulated market to optimize the cost of operation. To support this function, it is necessary to achieve sufficient accuracy on the forecasting of energy resources and market prices. The deregulated market price prediction presents challenges since the occurrence and magnitude of the price spikes are difficult to estimate. This paper proposes a hybrid method for very short term market price forecasting to improve prediction accuracy on both nonspike and spike wholesale market prices. First, support vector classification is carried out to predict spike price occurrence, and support vector regression is used to forecast the magnitude for both nonspike and spike market prices. Additionally, three clustering techniques including classification and regression trees, K-means, and stratification methods are introduced to mitigate high error spike magnitude estimation. The performance of the proposed hybrid method is validated with the Electric Reliability Commission of Texas wholesale market price. The results from the proposed method show a significant improvement over typical approaches.
Keywords :
electric vehicles; energy storage; power markets; regression analysis; support vector machines; EV charging station application; K-means; data clustering techniques; deregulated market; distributed energy storage system; electric vehicle charging station; high error spike magnitude estimation; hybrid market price forecasting method; regression trees; stratification methods; support vector classification; very short term market price forecasting; Accuracy; Charging stations; Correlation; Data models; Forecasting; Predictive models; Support vector machines; Data clustering; EV Charging infrastructure,; data clustering; deregulated market; electric vehicle (EV) charging infrastructure; market price forecasting; support vector machine; support vector machine (SVM);
Journal_Title :
Industry Applications, IEEE Transactions on
DOI :
10.1109/TIA.2014.2379936