Title :
Novel GA-based approach and neural fuzzy networks application in short-term load forecasting
Author :
Liao, Gwo-Ching ; Tsao, Ta-Peng
Author_Institution :
Dept. of Electr. Eng., Nat. SunYat-Sen Univ., Kaohsiung, Taiwan
Abstract :
An integrated genetic algorithm (GA)/fuzzy system (FS), tabu search (TS) and neural fuzzy network (NFN) method for load forecasting is presented in this paper. A fuzzy hyper-rectangular composite neural networks (FHRCNNs) was used for the initial load forecasting. Then we used CGAFS and TS to find the optimal solution of the parameters of the FHRCNNs, instead of backpropagation (BP)(including parameters such as synaptic weights, biases, membership functions, sensitivity factor in membership functions and adjustable synaptic weights). First the CGAFS generates a set of feasible solution parameters and then puts the solution into the TS. The CGAKS has good global optimal search capabilities, but poor local optimal search capabilities. The TS method on the other hand has good local optimal search capabilities. We combined both methods to try and obtain both advantages, and in doing so eliminate the drawback of the traditional ANN training by BP. Finally, we used the (GAFSTS-NFN) to see if we could improve the quality of the solution, and if we actually could reduce the error of load forecasting. The proposed CGAFS-TS load forecasting scheme was tested using data obtain from a sample study, including one year, one week and 24-hours time periods. The results demonstrated the accuracy of the proposed load forecasting scheme.
Keywords :
backpropagation; fuzzy systems; genetic algorithms; load forecasting; neural net architecture; power engineering computing; search problems; GA-based approach; backpropagation; fuzzy hyperrectangular composite neural networks; fuzzy system; integrated genetic algorithm; local optimal search capabilities; neural fuzzy networks application; short-term load forecasting; tabu search; Artificial neural networks; Fuzzy logic; Fuzzy neural networks; Fuzzy systems; Genetic algorithms; Intelligent networks; Load forecasting; Neural networks; Power system management; Power system security;
Conference_Titel :
Power Engineering Society General Meeting, 2004. IEEE
Print_ISBN :
0-7803-8465-2
DOI :
10.1109/PES.2004.1372875