TY - JOUR
T1 - A Control Strategy of Levelling Load Power Fluctuation Based on Fuzzy-Neural Network by Tuning Coefficients of Learning Rate with Genetic Algorithm
AU - Fujii, Toshinori
AU - Funabiki, Shigeyuki
PY - 1997
Y1 - 1997
N2 - The effective usage of the power facilities can be realized by leveling the fluctuating active power and compensating the reactive power. The fuzzy and fuzzy neural network control strategy of superconducting magnet energy storages (SMES) was proposed for this purpose. The control results depend on the values of coefficients of learning rate in fuzzy neural network. Therefore, it is desired to obtain better control results that the coefficients of learning rate are tuned to the optimum value. In this paper, the control strategy based on an auto-tuning of scaling factors with neural network and tuning of coefficients of teaming rate of neural network with genetic algorithm is proposed for leveling load fluctuation. Encoding and decoding of coefficients of learning rate and selection, crossover and mutation of genetic operation are shown and crossover rate, mutation rate is discussed. Then, we can achieve the better leveling of load power fluctuation by using fuzzy neural network with genetic algorithm.
AB - The effective usage of the power facilities can be realized by leveling the fluctuating active power and compensating the reactive power. The fuzzy and fuzzy neural network control strategy of superconducting magnet energy storages (SMES) was proposed for this purpose. The control results depend on the values of coefficients of learning rate in fuzzy neural network. Therefore, it is desired to obtain better control results that the coefficients of learning rate are tuned to the optimum value. In this paper, the control strategy based on an auto-tuning of scaling factors with neural network and tuning of coefficients of teaming rate of neural network with genetic algorithm is proposed for leveling load fluctuation. Encoding and decoding of coefficients of learning rate and selection, crossover and mutation of genetic operation are shown and crossover rate, mutation rate is discussed. Then, we can achieve the better leveling of load power fluctuation by using fuzzy neural network with genetic algorithm.
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U2 - 10.1541/ieejias.117.552
DO - 10.1541/ieejias.117.552
M3 - Article
AN - SCOPUS:78951479351
SN - 0913-6339
VL - 117
SP - 552
EP - 557
JO - ieej transactions on industry applications
JF - ieej transactions on industry applications
IS - 5
ER -