DocumentCode :
2445630
Title :
Neural network architectures for short-term load forecasting
Author :
Lee, Kwang Y. ; Choi, Tae-Il ; Ku, Chao-Chee ; Park, June Ho
Author_Institution :
Dept. of Electr. Eng., Pennsylvania State Univ., University Park, PA, USA
Volume :
7
fYear :
1994
fDate :
27 Jun-2 Jul 1994
Firstpage :
4724
Abstract :
Different neural network architectures are presented for short-term load forecasting. 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 diagonal recurrent neural network (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 adaptive learning rate guarantees even faster convergence. Many experiments are conducted to provide the one-day ahead load forecast, and the results are compared. The effect of temperatures and functional-link net mapping are also studied by including them as the network´s inputs. The forecasting accuracy for weekend load can be improved by using a separate weekend load model
Keywords :
adaptive systems; backpropagation; convergence; learning (artificial intelligence); load forecasting; power engineering computing; recurrent neural nets; adaptive learning; diagonal recurrent neural network; dynamic backpropagation; functional-link net mapping; rapid convergence; short-term load forecasting; temperature effects; weekend load model; Artificial neural networks; Casting; Heuristic algorithms; Load forecasting; Load modeling; Neural networks; Neurons; Power system modeling; Predictive models; Weather forecasting;
fLanguage :
English
Publisher :
ieee
Conference_Titel :
Neural Networks, 1994. IEEE World Congress on Computational Intelligence., 1994 IEEE International Conference on
Conference_Location :
Orlando, FL
Print_ISBN :
0-7803-1901-X
Type :
conf
DOI :
10.1109/ICNN.1994.375039
Filename :
375039
Link To Document :
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