DocumentCode :
3508494
Title :
Short-term load forecasting using diagonal recurrent neural network
Author :
Lee, K.Y. ; Choi, T.I. ; Ku, C.C. ; Park, J.H.
Author_Institution :
Dept. of Electr. & Comput. Eng., Pennsylvania State Univ., University Park, PA, USA
fYear :
1993
fDate :
1993
Firstpage :
227
Lastpage :
232
Abstract :
This paper presents a new approach for short term load forecasting using a diagonal recurrent neural network with an adaptive learning rate. The fully connected recurrent neural network (FRNN), where all neurons are coupled to one another, is difficult to train and to converge in a short time. The DRNN is a modified model of FRNN. It requires fewer weights than FRNN and rapid convergence has been demonstrated. A dynamic backpropagation algorithm coupled with an adaptive learning rate guarantees even faster convergence. To consider the effect of seasonal load variation on the accuracy of the proposed forecasting model, forecasting accuracy is evaluated throughout a whole year. Simulation results show that the forecast accuracy is improved.
Keywords :
backpropagation; load forecasting; neural nets; power systems; accuracy; adaptive learning rate; convergence; diagonal recurrent neural network; dynamic backpropagation algorithm; fully connected recurrent neural network; power systems; seasonal load variation; short term load forecasting; weights; Artificial neural networks; Backpropagation algorithms; Load forecasting; Load management; Load modeling; Neurons; Power system modeling; Predictive models; Recurrent neural networks; Weather forecasting;
fLanguage :
English
Publisher :
ieee
Conference_Titel :
Neural Networks to Power Systems, 1993. ANNPS '93., Proceedings of the Second International Forum on Applications of
Conference_Location :
Yokohama, Japan
Print_ISBN :
0-7803-1217-1
Type :
conf
DOI :
10.1109/ANN.1993.264286
Filename :
264286
Link To Document :
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