Title :
Hybrid learning algorithm based neural networks for short-term load forecasting
Author :
Shyi-shiun Kuo ; Cheng-ming Lee ; Chia-nan Ko
Author_Institution :
Dept. of Multimedia Animation & Applic., Nan Kai Univ. of Technol., Nantou, Taiwan
Abstract :
This paper proposes a hybrid algorithm to improve the accuracy of short-term load forecasting (STLF). In the hybrid algorithm, first, support vector regression (SVR) is used to determine the initial structure of RBFNNs (SVR-RBFNNs); then, an annealing robust concept with time-varying learning algorithm (ARTVLA) is then applied to train the SVR-RBFNNs (ARTVLA-SVR-RBFNNs). In ARTVLA, we adopt a particle swarm optimization (PSO) method to find a set of promising rates to overcome the problem for the trade-off between stability and speed of convergence in training procedure of RBFNNs. Finally, the optimal RBFNNs are applied to predict short-term load demands. The performance of the proposed approach is evaluated on the hourly empirical load data of the Taiwan power Company (TPC) in the case for 24-hour-ahead prediction. Simulation results show that the proposed ARTVLA-SVRRBFNNs yield more accurate load forecasting than the SVRRBFNNs based on annealing robust learning algorithm (ARLA-SVR-RBFNNs) with fixed learning rates.
Keywords :
learning (artificial intelligence); load forecasting; neural nets; particle swarm optimisation; power engineering computing; regression analysis; support vector machines; ARTVLA; PSO method; STLF; SVR-RBFNN; TPC; Taiwan Power Company; annealing robust concept; annealing robust learning algorithm; fixed learning rates; hybrid learning algorithm based neural network; particle swarm optimization method; short-term load forecasting; support vector regression; time 24 hour; time-varying learning algorithm; Annealing; Kernel; Load forecasting; Load modeling; Robustness; Support vector machines; Training; annealing robust time-varying learning algorithm; radial basis function neural network; short-term load forecasting; support vector regression;
Conference_Titel :
Fuzzy Theory and Its Applications (iFUZZY), 2014 International Conference on
Print_ISBN :
978-1-4799-4590-0
DOI :
10.1109/iFUZZY.2014.7091241