Title :
Feature extraction of time-varying power signals
Author :
Gaouda, A.M. ; Salama, M.M.A.
Abstract :
This paper presents a wavelet based technique for monitoring and measuring nonstationary power system disturbances. A significant improvement in monitoring efficiency is achieved by processing signals through Kaiser´s window. The maximum expansion coefficient extracted at each resolution level, the indices and sign of these coefficients at a super-resolution are used to monitor and measure the nonstationary behavior of signals. The proposed tool depends on the expansion coefficients and no reconstruction of these coefficients is required. The proposed monitoring technique is evaluated using large data sets of randomly variable magnitudes and frequencies.
Keywords :
feature extraction; power system measurement; signal processing; wavelet transforms; Kaiser window; feature extraction; maximum expansion coefficient extraction; nonstationary power system disturbance monitoring; power system disturbance measurement; signal processing; time-varying power signals; wavelet based technique; Discrete wavelet transforms; Feature extraction; Frequency; Power measurement; Power system harmonics; Power system measurements; Remote monitoring; Signal processing; Signal resolution; Voltage; Kaiser´s Window; Multi-resolution analysis and Wavelet transform; Nonstationary disturbances;
Conference_Titel :
Electric Power and Energy Conversion Systems, 2009. EPECS '09. International Conference on
Conference_Location :
Sharjah
Print_ISBN :
978-1-4244-5477-8