Design and implementation of a power quality disturbance classifier: An Al approach

This paper presents a new intelligent system incorporating wavelet transform, artificial neural network and fuzzy logic to automate the classification of power quality disturbance. This novel and efficient method in hardware, based on FPGA technology showed improved performance over existing approac...

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Main Authors: Reaz, , M. B. I, Choong, , F, Sulaiman, , M. S, Mohd-, Yasin, F.
Format: Article
Published: 2006
Subjects:
Online Access:http://shdl.mmu.edu.my/2077/
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author Reaz, , M. B. I
Choong, , F
Sulaiman, , M. S
Mohd-, Yasin, F.
author_facet Reaz, , M. B. I
Choong, , F
Sulaiman, , M. S
Mohd-, Yasin, F.
author_sort Reaz, , M. B. I
building MMU Institutional Repository
collection Online Access
description This paper presents a new intelligent system incorporating wavelet transform, artificial neural network and fuzzy logic to automate the classification of power quality disturbance. This novel and efficient method in hardware, based on FPGA technology showed improved performance over existing approaches for power quality disturbance detection and classification on six types of disturbances including sag, swell, transient, fluctuation, interruption and normal waveform. The approach obtained an average classification accuracy of 98.19%. The design was successfully implemented, tested and validated on Altera APEX EP20K200EBC652-1X FPGA utilizing 1209 logic cells and achieved a maximum frequency of 263.71 MHz.
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publishDate 2006
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spelling mmu-20772011-08-10T07:38:57Z http://shdl.mmu.edu.my/2077/ Design and implementation of a power quality disturbance classifier: An Al approach Reaz, , M. B. I Choong, , F Sulaiman, , M. S Mohd-, Yasin, F. QA75.5-76.95 Electronic computers. Computer science This paper presents a new intelligent system incorporating wavelet transform, artificial neural network and fuzzy logic to automate the classification of power quality disturbance. This novel and efficient method in hardware, based on FPGA technology showed improved performance over existing approaches for power quality disturbance detection and classification on six types of disturbances including sag, swell, transient, fluctuation, interruption and normal waveform. The approach obtained an average classification accuracy of 98.19%. The design was successfully implemented, tested and validated on Altera APEX EP20K200EBC652-1X FPGA utilizing 1209 logic cells and achieved a maximum frequency of 263.71 MHz. 2006 Article NonPeerReviewed Reaz, , M. B. I and Choong, , F and Sulaiman, , M. S and Mohd-, Yasin, F. (2006) Design and implementation of a power quality disturbance classifier: An Al approach. Source: JOURNAL OF INTELLIGENT & FUZZY SYSTEMS , 17 (6). pp. 623-631. ISSN 1064-1246
spellingShingle QA75.5-76.95 Electronic computers. Computer science
Reaz, , M. B. I
Choong, , F
Sulaiman, , M. S
Mohd-, Yasin, F.
Design and implementation of a power quality disturbance classifier: An Al approach
title Design and implementation of a power quality disturbance classifier: An Al approach
title_full Design and implementation of a power quality disturbance classifier: An Al approach
title_fullStr Design and implementation of a power quality disturbance classifier: An Al approach
title_full_unstemmed Design and implementation of a power quality disturbance classifier: An Al approach
title_short Design and implementation of a power quality disturbance classifier: An Al approach
title_sort design and implementation of a power quality disturbance classifier: an al approach
topic QA75.5-76.95 Electronic computers. Computer science
url http://shdl.mmu.edu.my/2077/