Title
Performance Analysis of Data Mining Techniques for Improving the Accuracy of Wind Power Forecast Combination.
Abstract
Efficient integration of renewable energy sources into the electricity grid has become one of the challenging problems in recent years. This issue is more critical especially for unstable energy sources such as wind. The focus of this work is the performance analysis of several alternative wind forecast combination models in comparison to the current forecast combination module of the wind power monitoring and forecast system of Turkey, developed within the course of the RITM project. These accuracy improvement studies are within the scope of data mining approaches, Association Rule Mining (ARM), Distance-based approach, Decision Trees and k-Nearest Neighbor (k-NN) classification algorithms and comparative results of the algorithms are presented.
Year
DOI
Venue
2015
10.1007/978-3-319-27430-0_4
DARE
Field
DocType
Citations 
Decision tree,Data mining,Renewable energy,Data analysis,Computer science,Wind power forecasting,Association rule learning,Artificial intelligence,Energy source,Statistical classification,Machine learning,Wind power
Conference
0
PageRank 
References 
Authors
0.34
0
9
Name
Order
Citations
PageRank
Ceyda Er Koksoy100.68
Mehmet Kemal Özkan242.99
Dilek Küçük310910.24
Abdullah Bestil400.68
Sena Sonmez500.34
Serkan Buhan652.23
Turan Demirci702.37
Pinar Karagoz815428.34
Aysenur Birturk993.99