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Application of Complex Daubechies Wavelet in UHF Partial Discharge Measurements 被引量:3

Application of Complex Daubechies Wavelet in UHF Partial Discharge Measurements
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摘要 On-line partial discharge(PD)detection still remains a very challenging task because of the strong electromagnetic interferences.In this paper,a new method of de-noising,using complex Daubechies wavelet(CDW)transform,has been proposed.It is a relatively recent enhancement to the real-valued wavelet transform because of tow important properties,which are nearly shift-invariant and availability of phase information.Those properties give CDW transform superiority over other real-valued wavelet transform,and then the construction algorithm of CDW is introduced in detail.Secondly,based on the real threshold algorithm of real-valued wavelet transform,complex threshold algorithm is devised.This algorithm take the different characteristics of real part and imaginary part of complex wavelet coefficients into account,it modifies the real and imaginary parts of complex wavelet coefficients respectively.Thirdly,to obtain a real de-noised signal,new combined information series is devised.By applying different combination of real part and imaginary part of de-noised complex signal,a real de-noised signal can be restored with higher peak signal-to-noise ratio(PSNR)and less distortion of original signals.Finally,On-site applications of extracting PD signals from noisy background by the optimal de-noising scheme based on CDW are illustrated.The on-site experimental results show that the optimal de-noising scheme is an effective way to suppress white noise in PD measurement. On-line partial discharge(PD)detection still remains a very challenging task because of the strong electromagnetic interferences.In this paper,a new method of de-noising,using complex Daubechies wavelet(CDW)transform,has been proposed.It is a relatively recent enhancement to the real-valued wavelet transform because of tow important properties,which are nearly shift-invariant and availability of phase information.Those properties give CDW transform superiority over other real-valued wavelet transform,and then the construction algorithm of CDW is introduced in detail.Secondly,based on the real threshold algorithm of real-valued wavelet transform,complex threshold algorithm is devised.This algorithm take the different characteristics of real part and imaginary part of complex wavelet coefficients into account,it modifies the real and imaginary parts of complex wavelet coefficients respectively.Thirdly,to obtain a real de-noised signal,new combined information series is devised.By applying different combination of real part and imaginary part of de-noised complex signal,a real de-noised signal can be restored with higher peak signal-to-noise ratio(PSNR)and less distortion of original signals.Finally,On-site applications of extracting PD signals from noisy background by the optimal de-noising scheme based on CDW are illustrated.The on-site experimental results show that the optimal de-noising scheme is an effective way to suppress white noise in PD measurement.
出处 《高电压技术》 EI CAS CSCD 北大核心 2008年第12期2701-2707,共7页 High Voltage Engineering
基金 Project Supported by National Natural Science Foundation China(50577069), National Grid Company (2004-SGKJ).
关键词 Db复小波 超高频 局部放电 测量 CDW partial discharge (PD) complex Daubechies wavelet (CDW) combined informationl complex threshold peak signal-to-noise ratio (PSNR) distortion
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同被引文献43

  • 1董明,严璋,杨莉,M.D.Judd.基于证据推理的电力变压器故障诊断策略(英文)[J].中国电机工程学报,2006,26(1):106-114. 被引量:37
  • 2李剑,孙才新,杨霁,杨洋,唐炬.局部放电在线监测中小波阈值去噪法的最优阈值自适应选择[J].电网技术,2006,30(8):25-30. 被引量:23
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