Title :
Computational analysis of sag and swell in electrical power distribution network
Author :
Paracha, Zahir J. ; Mehdi, Ahmed M. ; Kalam, Akhtar
Author_Institution :
Sch. of Eng. & Sci., Victoria Univ. Melbourne, Melbourne, VIC, Australia
Abstract :
This research presents new intelligent approaches for the estimation and comprehensive analysis of the two main power quality parameters (sags and swells) using Neural Networks. Typical power quality (PQ) disturbances include sag, swell, harmonics, transients and temporary, momentary and sustained interruptions in a power distribution network. Among all these disturbances, sags and swells get prime importance, as they can cause sufficient damage to industrial consumer´s equipment and can ultimately lead to shut down of their system. In this research Principal Component Analysis technique (PCAT) is used to pre-process the raw PQ data and reduce the number of attributes of real PQ data. Refined data attributes are then processed through Feed Forward Back Propagation (FFBP) & Recurrent Neural Networks (RNN) for the estimation/prediction of sag and swell. Application of RNN on PQ data demonstrates its good estimation abilities (accuracy for sag & swell estimation=96%) as compared to FFBP neural network (accuracy for sag estimation [93.5%] & swell estimation [91.5%]). The results obtained in this paper are compared with the field data of a power company in Melbourne, Australia. This research will facilitate power utilities and industrial consumers on common understandings to set a base line for PQ parameters and also to evolve a comprehensive strategy for better management of PQ problems.
Keywords :
backpropagation; distribution networks; feedforward neural nets; power supply quality; power system harmonics; principal component analysis; recurrent neural nets; Australia; Melbourne; PQ data; electrical power distribution network; feed forward back propagation; industrial consumers; power quality disturbances; power quality parameters; power utilities; principal component analysis; recurrent neural networks; sags; swells; Computational intelligence; Computer networks; Distributed computing; Intelligent networks; Neural networks; Power quality; Power system harmonics; Power systems; Principal component analysis; Recurrent neural networks; Neural Network (NN); power quality (PQ); principal component analysis technique (PCAT); sag; swell;
Conference_Titel :
Power Engineering Conference, 2009. AUPEC 2009. Australasian Universities
Conference_Location :
Adelaide, SA
Print_ISBN :
978-1-4244-5153-1
Electronic_ISBN :
978-0-86396-718-4