DocumentCode :
616711
Title :
Hierarchical sparse learning for load forecasting in cyber-physical energy systems
Author :
Xinyao Sun ; Xue Wang ; Jiangwei Wu ; Youda Liu
Author_Institution :
Dept. of Precision Instrum., Tsinghua Univ., Beijing, China
fYear :
2013
fDate :
6-9 May 2013
Firstpage :
533
Lastpage :
538
Abstract :
Cyber-physical energy systems, which emerges as the approach for integrating physical layers and control networks, have drawn extensively attention in recent years. Electric load forecasting is believed to be an important issue in CPES for its applications in prices determination and automatic generation control. Conventional deterministic load forecast method have drawbacks to providing information about the probability distribution of the prediction results, which are important for stochastic decision in power systems. This paper explores a hierarchical probabilistic approach for short-term load forecast, which combines sparse Bayesian learning with empirical mode decomposition, in order to obtain a componential forecasting results, as well as the forecasting uncertainty. Mahalanobis distance based similar day weighting is introduced to prune the training data. The numerical testing results illustrate that the proposed approach exhibits better performance in comparison with original SBL model and weighted SBL without componential analysis.
Keywords :
learning (artificial intelligence); load forecasting; numerical analysis; power engineering computing; pricing; probability; Bayesian learning; Mahalanobis distance; SBL model; automatic generation control; control networks; cyber-physical energy systems; day weighting; electric load forecasting; empirical mode decomposition; forecasting uncertainty; hierarchical sparse learning; physical layers; prices determination; short-term load forecast; training data; weighted SBL; Bayes methods; Forecasting; Indexes; Kernel; Load modeling; Predictive models; Vectors; cyber-physical energy systems; empirical mode decomposition; short-term load forecasting; similar day weighting; sparse Bayesian learning;
fLanguage :
English
Publisher :
ieee
Conference_Titel :
Instrumentation and Measurement Technology Conference (I2MTC), 2013 IEEE International
Conference_Location :
Minneapolis, MN
ISSN :
1091-5281
Print_ISBN :
978-1-4673-4621-4
Type :
conf
DOI :
10.1109/I2MTC.2013.6555474
Filename :
6555474
Link To Document :
بازگشت