A comparative study on effective signal processing tools for optimum feature selection in automatic power quality events clustering

Date

2005

Authors

Gargoom, A.
Ertugrul, N.
Soong, W.

Editors

Kee Hyun Shin,

Advisors

Journal Title

Journal ISSN

Volume Title

Type:

Conference paper

Citation

Conference Record of the 2005 IEEE Industry Applications Conference (IAS Annual Meeting), Hong Kong / vol. 1, pp. 52-58

Statement of Responsibility

Gargoom, A.M. ; Ertugrul, N. ; Soong, W.L.

Conference Name

IEEE Industry Applications Conference. Annual Meeting (40th : 2005 : Hong Kong)

Abstract

The paper presents a comparative study to investigate the optimum feature selection using three signal processing techniques for automatic clustering of power quality events. The techniques include the wavelet transform, the S transform, and the newly introduced forward Clarke transform. The last method has the advantage for monitoring all three phases of a three-phase signal simultaneously. The paper provides unique features for each transformation, and then offers a comparative study that is based on the abilities of selected pairs of features to distinguish power quality events. In the paper, the performance of each signal processing technique is studied and an optimum combination of the most useful features is identified.

School/Discipline

Dissertation Note

Provenance

Description

© Copyright 2005 IEEE

Access Status

Rights

License

Grant ID

Call number

Persistent link to this record