Title :
Neural network-based detection and recognition method for power quality disturbances signal
Author :
Liao, Wei ; Wang, Hua ; Han, Pu
Author_Institution :
Hebei Univ. of Eng., Handan, China
Abstract :
With widespread use of various kinds of electric devices, the demand for clean power supply has been increasing in the past decades, which has great effect on the energy market. In order to improve supply quality of power system, the sources and causes of power quality disturbances must be known before appropriate mitigating operation. This paper used wavelet network-based neural classifier to automatically detect, localize, and classify the transient disturbance pattern, which can acquire the qualitative and quantitative results. The wavelet transform can offer a better compromise in terms of time-frequency domain, which decomposes the transient signal into a series of wavelet coefficients, corresponding to a specific octave frequency band containing more detailed information. To acquire the original information of transient signal, the wavelet-based denoising technology is discussed in a low signal noise ratio environment. The improved training algorithm is utilized to complete the neural network parameters initialization and classification performance. In order to satisfy power system observation, the power quality monitor configuration method is proposed. The testing results and analysis indicate that the proposed method is feasible and practical for analyzing power quality disturbances.
Keywords :
learning (artificial intelligence); neural nets; power engineering computing; power markets; power supply quality; signal denoising; wavelet transforms; clean power supply; electric devices; energy market; neural network based detection method; neural network based recognition method; octave frequency band; power quality disturbances signal; power quality monitor configuration method; power system observation; time frequency domain; training algorithm; transient signal; wavelet based denoising technology; wavelet network based neural classifier; wavelet transform; Neural networks; Noise reduction; Power quality; Power supplies; Power system transients; Time frequency analysis; Wavelet coefficients; Wavelet domain; Wavelet transforms; Working environment noise; Energy market; neural classifier; power quality disturbance; power system observation; signal noise ratio; wavelet transformation;
Conference_Titel :
Control and Decision Conference (CCDC), 2010 Chinese
Conference_Location :
Xuzhou
Print_ISBN :
978-1-4244-5181-4
Electronic_ISBN :
978-1-4244-5182-1
DOI :
10.1109/CCDC.2010.5498069