Title :
Neuro-Prony and Taguchi´s Methodology-Based Adaptive Autoreclosure Scheme for Electric Transmission Systems
Author :
Zahlay, Fitiwi Desta ; Rao, K. S Rama
Author_Institution :
Univ. Pontificia Comillas, Madrid, Spain
fDate :
4/1/2012 12:00:00 AM
Abstract :
This paper presents a novel intelligent autoreclosure technique to discriminate temporary faults from permanent faults, and to accurately determine fault extinction time. A variety of fault simulations is carried out on a specified transmission line on the standard IEEE 9-bus electric power system by using MATLAB/SimPowerSytems. Prony analysis is employed to extract data features from each simulated fault. The fault identification prior to reclosing is accomplished by an artificial neural network trained by Levenberg Marquardt and resilient backpropagation algorithms, which are developed by using MATLAB. Some important parameters which strongly affect the entire training process are fine-tuned to their corresponding best values with the help of Taguchi´s method. Test results show the robustness and efficacy of the proposed autoreclosure scheme.
Keywords :
Taguchi methods; backpropagation; fault simulation; feature extraction; neural nets; power engineering computing; power transmission faults; power transmission lines; MATLAB-SimPowerSytems; Taguchi methodology-based adaptive autoreclosure scheme; artificial neural network training process; data feature extraction; electric transmission system; fault extinction time; fault identification; fault simulation; intelligent autoreclosure technique; neuro-prony methodology-based adaptive autoreclosure scheme; permanent fault discrimination; prony analysis; resilient backpropagation algorithm; standard IEEE 9-bus electric power system; temporary fault discrimination; transmission line; Artificial neural networks; Circuit faults; Feature extraction; Indexes; Power transmission lines; Training; Transient analysis; Adaptive autoreclosure (AR); Levenberg Marquardt (LM); Prony analysis (PA); Taguchi´s method; artificial neural networks (ANNs); resilient backpropagation (RPROP);
Journal_Title :
Power Delivery, IEEE Transactions on
DOI :
10.1109/TPWRD.2011.2182065