DocumentCode :
3762928
Title :
Locally recurrent Functional Link Fuzzy neural network and unscented H-infinity filter for shortterm prediction of load time series in energy markets
Author :
D.K. Bebarta;Ranjeeta Bisoi;P.K. Dash
Author_Institution :
GMR Institute of Technology, Rajam, AP, India
fYear :
2015
Firstpage :
663
Lastpage :
670
Abstract :
The paper presents a locally recurrent Fuzzy neural architecture to forecast electrical loads in an energy market on a short-term basis. In recent years combination of recurrent filter neurons with Fuzzy neural networks has gained significance to provide the identification of the temporal nature of the time series data. Further to increase the dimension of the input space the consequent part of the fuzzy rules are augmented with functional link networks and this provides a better approximation of the input-output mapping. Besides to provide faster learning in comparison to the gradient descent or evolutionary techniques a robust H-infinity unscented Kalman filter is used. Some of the energy market load time series data are used for numerical experimentation to highlight the significant improvement in the prediction performance of the hybrid Functional Link Fuzzy neural network (FLFNN).
Keywords :
"H infinity control","Load forecasting","Fuzzy neural networks","Computer architecture","Time series analysis","Kalman filters","Neural networks"
Publisher :
ieee
Conference_Titel :
Power, Communication and Information Technology Conference (PCITC), 2015 IEEE
Type :
conf
DOI :
10.1109/PCITC.2015.7438080
Filename :
7438080
Link To Document :
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