CN103995950A - Wavelet coefficient partial discharge signal noise elimination method based on related space domain correction threshold values - Google Patents

Wavelet coefficient partial discharge signal noise elimination method based on related space domain correction threshold values Download PDF

Info

Publication number
CN103995950A
CN103995950A CN201410013070.0A CN201410013070A CN103995950A CN 103995950 A CN103995950 A CN 103995950A CN 201410013070 A CN201410013070 A CN 201410013070A CN 103995950 A CN103995950 A CN 103995950A
Authority
CN
China
Prior art keywords
wavelet
signal
coefficient
noise
local discharge
Prior art date
Legal status (The legal status is an assumption and is not a legal conclusion. Google has not performed a legal analysis and makes no representation as to the accuracy of the status listed.)
Pending
Application number
CN201410013070.0A
Other languages
Chinese (zh)
Inventor
李金�
王妍玮
王磊
梁洪
于虹
马仪
丛望
栾宽
王颖
才忠喜
Current Assignee (The listed assignees may be inaccurate. Google has not performed a legal analysis and makes no representation or warranty as to the accuracy of the list.)
Harbin Engineering University
Yunnan Power Grid Corp Technology Branch
Yunnan Electric Power Experimental Research Institute Group Co Ltd of Electric Power Research Institute
Original Assignee
Harbin Engineering University
Yunnan Power Grid Corp Technology Branch
Yunnan Electric Power Experimental Research Institute Group Co Ltd of Electric Power Research Institute
Priority date (The priority date is an assumption and is not a legal conclusion. Google has not performed a legal analysis and makes no representation as to the accuracy of the date listed.)
Filing date
Publication date
Application filed by Harbin Engineering University, Yunnan Power Grid Corp Technology Branch, Yunnan Electric Power Experimental Research Institute Group Co Ltd of Electric Power Research Institute filed Critical Harbin Engineering University
Priority to CN201410013070.0A priority Critical patent/CN103995950A/en
Publication of CN103995950A publication Critical patent/CN103995950A/en
Pending legal-status Critical Current

Links

Landscapes

  • Testing Relating To Insulation (AREA)

Abstract

The invention belongs to the field of industrial signal processing, and particularly relates to a wavelet coefficient partial discharge signal noise elimination method based on related space domain correction threshold values. The method includes the steps that wavelet transformation is carried out on partial discharge signals containing white noise; an initial value and an estimated value of a wavelet coefficient are extracted; size correlation coefficients are solved; correlation values are obtained after normalization; discrete wavelet transform is recorded and signals after noise elimination are obtained. A wavelet threshold value selection method is improved, a space domain related optimizing partial reestablishment weight matrix is introduced, and therefore, influences of noise points on sample data are reduced, the algorithm convergence rate is improved, and the noise elimination speed and precision of the partial discharge signals are improved.

Description

Change wavelet coefficient local discharge signal noise-eliminating method based on the relevant correction threshold in spatial domain
Technical field
The invention belongs to industrial signal process field, be specifically related to a kind of change wavelet coefficient local discharge signal noise-eliminating method based on the relevant correction threshold in spatial domain.
Background technology
Along with the widespread use of various organic insulations in power equipment, effective extraction problem of local discharge signal in power equipment (Partial Discharge, PD made in brief note) becomes more and more outstanding.Utilize local discharge signal can carry out the determining of diagnosis, degree of discharge and type of insulation fault, apparatus insulated deteriorated judgement etc., these all play vital effect to the safety and steady operation of power equipment.Yet, in the actual motion environment of power equipment, exist electromagnetic interference (EMI), cause local discharge signal to be submerged in noise, and then impact utilize the accuracy of local discharge signal to Electric Power Equipment Insulation fault diagnosis.Therefore, by effective filtering technique, remove the interference of noise information, and the essential information feature that retains local discharge signal is one of PD key issue of detecting research.
Local discharge signal belongs to transient signal, and the white noise in interference belongs to non-stationary signal, and the time-frequency domain characteristic of the two there are differences.In order to realize effective detection of two kinds of signals simultaneously, wavelet transformation (Wavelet Transform in recent years, WT made in brief note) method owing to taking full advantage of the local characteristics of signal, by regulating the different wavelet coefficients of local discharge signal and white noise, can realize the detection of two kinds of signal with different type.
For local discharge signal and white noise signal, after wavelet transformation, the wavelet coefficient amplitude that local discharge signal produces is larger, but number is less, and wavelet coefficient number corresponding to white noise is more, amplitude is less.The two is carried out after wavelet decomposition simultaneously, and the amplitude of the wavelet coefficient of local discharge signal is greater than the coefficient amplitude of white noise.Therefore, by select suitable threshold value on different scale, will be less than the wavelet coefficient zero setting of this threshold value, and retain, be greater than the wavelet coefficient of threshold value, thereby the white noise in local signal is suppressed.
Wavelet thresholding method is a kind of nonlinear noise signal elimination method, its essence is that signal is described to essence by thick according to resolution height, recycling different decomposition scale factor is done the bandpass filter of filtering to signal, by being set, reasonable threshold value selects wavelet basis, the detection of realization to singularity characteristics information in signal, thus realize the de-noising of signal.Threshold value back-and-forth method (Threshold Elimination Method, TEM made in brief note) be a kind of in wavelet thresholding method, it is that Donoho DL is at a kind of nonlinear noise-eliminating method of 1995 propositions, its basic thought for local discharge signal de-noising is that after utilization is decomposed, the amplitude size of each layer of wavelet coefficient is according to the threshold value of estimating the filter factor of local discharge signal, makes filtered data keep the essential characteristic of original signal.
At present, to threshold value, system of selection is studied many scholars both domestic and external, and general method is the global threshold system of selection that the people such as Shim propose, and utilizes signal length and noise variance to estimate global threshold, in this method, the threshold value of each decomposition layer is identical, and treatment effect is undesirable.Conventional threshold value system of selection also has Stein without inclined to one side evaluation of risk method and minimax principle method etc., and its Research on threshold selection need to be estimated noise, belongs to semi-automatic semiempirical threshold value system of selection, and de-noising effect is not very good in actual applications.In wavelet noise threshold value selection algorithm, most crucial problem is the differentiation of signal and noise, is about to compared with amplitude coefficient of dissociation, to be defined as signal on each yardstick, utilizes coefficient of dissociation amplitude size directly as the standard of distinguishing, and carries out threshold process.Yet, this algorithm is that the local data for signal operates, and in being mixed with the local discharge signal of white noise, the signal amplitude of white noise is far longer than the amplitude of local discharge signal, this makes this algorithm very sensitive to the threshold amplitude in sample, in the situation that interference is stronger, the de-noising effect of threshold method is also unstable.
Spatial domain related algorithm (Spatial Correlation Filtering Method, SCFM made in brief note) be to utilize the correlativity of coefficient of wavelet decomposition corresponding point on different scale to carry out the choice of wavelet basis coefficient, edge that can also sharpening signal when effectively suppressing noise, algorithm performance is comparatively stable.But up to the present, also nobody selects this algorithm application the optimization aspect of de-noising in threshold value.
For the problems referred to above, the present invention utilizes threshold value selection algorithm coefficient wavelet transformation between data, searching makes to convert rear wavelet coefficient and the immediate threshold value of local discharge signal, has reached and has effectively utilized the resolution characteristic of signal and white noise on different scale effectively to distinguish the two.Meanwhile, the essence of spatial domain related algorithm has determined the threshold value that not exclusively depends on wavelet conversion coefficient of determining of weight, thereby can reduce the impact of noise spot on sample data, and improves algorithm travelling speed.
Summary of the invention
The object of the present invention is to provide a kind of reduction noise effect, improve the change wavelet coefficient local discharge signal noise-eliminating method based on the relevant correction threshold in spatial domain of de-noising speed and precision.
The object of the present invention is achieved like this:
(1) local discharge signal that contains white noise is carried out to wavelet transformation, the decomposition number of plies in wavelet transformation process is M, obtains the wavelet coefficient initial value W of the signals and associated noises f of position n place in yardstick j f(j, n);
(2) extract wavelet coefficient initial value W fthe detail section coefficient D of (j, n) each layer 1-D mapproximation coefficient A with last one deck mthe maximal value d of absolute value 1max-d mmaxand a mmaxas initial threshold; By wavelet coefficient initial value W f(j, n) coefficient and threshold value compare, and retain the wavelet coefficient initial value be less than threshold value, the estimated value W' of the wavelet coefficient that obtains containing white noise local discharge signal f(j, n);
(3) ask between signal the yardstick related coefficient C at position n place in yardstick j 2' (j, n),
C′ 2(j,n)=W′ f(j,n)W′ f(j+1,n)
(4) by yardstick related coefficient C 2' obtain correlation C after (j, n) normalization 2, new' (j, n),
C 2 , new ′ ( j , n ) = C 2 ′ ( j , n ) P W ( j ) / P C 2 ( j ) ,
Wherein, n=1,2 ..., N, P C 2 ( j ) = Σ n = 1 N C 2 ′ ( j , n ) 2 , P W ( j ) = Σ n = 1 N W f ′ ( j , n ) 2 ;
If | C 2, new' (j, n) |>=W f' (j, n) n point place wavelet coefficient belong to the local discharge signal that contains white noise, W' f(j, n) is assigned to filtered wavelet transform W g, W ginitial value is zero, simultaneously by W' f(j, n) and C 2' (j, n) zero setting, otherwise W' f(j, n) is judged as noise, retains former filtered wavelet transform W g;
(5) repeated execution of steps (4) is to the energy value P of white noise w(j) be less than the threshold value of noise energy;
(6) record wavelet transform W g, then by W gcarry out discrete wavelet inverse transformation and obtain the signal after denoising.
Beneficial effect of the present invention is: in the present invention, to wavelet threshold, system of selection improves, introduce the relevant partial reconstruction weight matrix of optimizing in spatial domain, thereby reduced the impact of noise spot on sample data, improve method speed of convergence, improved local discharge signal de-noising speed and precision.
Accompanying drawing explanation
Fig. 1. the local discharge signal noise-eliminating method process flow diagram of spatial domain dependent thresholds correction wavelet threshold;
Fig. 2 is local discharge signal noise-canceling system schematic diagram;
Fig. 3 is single bilateral damped oscillation pulse simulate signal schematic diagram;
Fig. 4 is white noise simulate signal;
Fig. 5 is for containing noisy local discharge signal emulation schematic diagram;
Fig. 6 is wavelet noise result;
Fig. 7 is the de-noising effect of 10 pulse local discharge signals.
Embodiment
Below in conjunction with accompanying drawing, the present invention is described further.
1. the system of selection of wavelet threshold
The data acquisition of wavelet threshold selection algorithm has a hypotheses: sampled data during lower than starting potential, is recorded noise signal at impressed voltage; Along with impressed voltage raises gradually, when higher than starting potential, record is containing noisy local discharge signal.
Threshold value selection algorithm (Threshold Elimination Method, TEM made in brief note) in first to select base small echo and decompose the number of plies, the signal of a Noise is carried out to wavelet transformation, select the maximal value of every layer of detail section and the approximate part wavelet coefficient of last one deck and record, this maximal value has represented the feature of maximum noise.When estimating the wavelet coefficient of local discharge signal, any all irrelevant with noise higher than this peaked wavelet coefficient, only may be caused by local discharge signal, therefore the threshold value using this maximal value as this one deck.Secondly, signals and associated noises is carried out to wavelet transformation, base small echo is identical while all decomposing with noise with the decomposition number of plies, and before the wavelet coefficient of every layer is used, selected threshold value is processed, and the wavelet coefficient after threshold process is exactly the estimation coefficient of local discharge signal.Finally, utilize and estimate that wavelet coefficient carrys out reconstruct original signal.The concrete steps of wavelet threshold selection algorithm are as follows:
(1) noise signal is carried out to wavelet decomposition, the decomposition number of plies is M, obtains the coefficient of wavelet decomposition W of noise n(j, n).
(2) for W nthe detail section coefficient D of (j, n) each layer 1-D mapproximation coefficient A with last one deck m, by the maximal value d of coefficient of dissociation absolute value in each layer coefficients 1max-d mmaxand a mmaxrecord, as initial threshold.
(3) will carry out wavelet decomposition containing noisy PD signal, the decomposition number of plies is M, obtains coefficient of wavelet decomposition W pD(j, n).
(4) to W pDeach of (j, n) layer wavelet coefficient respectively with each layer of initial threshold d 1max-d mmaxand a mmaxrelatively, when wavelet coefficient is greater than initial threshold, change record value, thereby obtain the estimated value W' of PD wavelet coefficient pD(j, n).
(5) use the wavelet coefficient estimated value W' of local discharge signal pD(j, n) reconstruction signal, the signal obtaining is the signal after de-noising.
Algorithm has been considered the difference of different scale wavelet decomposition characteristic when calculated threshold, is a kind of gradient threshold system of selection, and, on different decomposition scales, threshold value value is different.
2. the relevant correction algorithm in spatial domain
Spatial domain correlation theory thinks that signal is after wavelet transformation, and its wavelet coefficient has stronger correlativity on each yardstick, and especially, near the edge of signal, its correlativity is more obvious; And wavelet coefficient corresponding to noise do not have this obvious correlativity between yardstick.Therefore, can consider to utilize the correlativity of wavelet coefficient corresponding point position on different scale to determine it is signal coefficient or noise figure, the wavelet coefficient after processing is like this corresponding the edge of signal substantially.
Spatial domain related algorithm points out that the catastrophe point of signal has larger peak value to occur at the same position of different scale, and noise energy but reduces along with the increase of yardstick.Therefore, the wavelet coefficient that can get adjacent yardstick directly multiplies each other and carries out correlation computations, thereby suppresses noise in sharpening signal edge and other key character, and can improve the positioning precision at the main edge of signal.
Defining between two signals the yardstick related coefficient at n place, position in yardstick j is C 2(j, n), as shown in Equation 1.
C 2(j,n)=W f(j,n)W f(j+1,n) (1)
In formula, W fconversion coefficient in (j, n) expression yardstick j after the discrete wavelet of the signals and associated noises f of n place, position.For making yardstick related coefficient and wavelet coefficient have comparability, definition standard yardstick related coefficient is shown in formula 2.
C 2 , new ( j , n ) = C 2 ( j , n ) P w ( j ) / P C 2 ( j ) - - - ( 2 )
In formula, n=1,2 ..., N; Its correlativity can be passed through the marginal probability of yardstick related coefficient marginal probability density with wavelet transformation further describe.In algorithm, pass through relatively | C 2, new(j, n) | and | W f(j, n) | the important edges of big or small distinguishing signal, if | C 2, new(j, n) | >W f(j, n) |, think the edge of this respective signal, storage W fthe position of (j, n) and amplitude size, and by C 2, new(j, n) and W fin (j, n), relevant position sets to 0, otherwise this is put to corresponding noise.Then remaining data is designated as to W ' f(j, n) and C ' 2, new(j, n), differentiates signal time important edges by said method.Repeat said process, work as W fwhen the energy of the point not being extracted in (j, n) is less than the noise energy on this yardstick, stop extracting.
The concrete steps of the relevant correction algorithm in spatial domain are as follows:
(1) to carrying out wavelet transformation containing noisy signal, obtain W f(j, n), asks for each yardstick related coefficient C 2(j, n).
(2) calculate C 2correlation C after (j, n) normalization 2, new(j, n).If | C 2, new(j, n) |>=W f(j, n) |, think that n point place wavelet coefficient belongs to PD signal.By W f(j, n) assignment is to W g(W gbe filtered value, initial value is zero), simultaneously by W f(j, n) and C 2(j, n) zero setting.If | C 2, new(j, n) |≤| W f(j, n) |, think this W f(j, n) belongs to noise, and wavelet coefficient is retained.
(3) repeating step 2, until P w(j) be less than the critical value of noise energy, at this moment obtain W gthe estimation wavelet coefficient of the PD signal of middle reservation, finally utilizes and estimates wavelet coefficient renewal value reconstruct local discharge signal.
3. ripple Coefficient Algorithm diminishes
Local discharge signal shows different resolution characteristics on different scale from white noise signal.In wavelet transformation threshold theory point out local discharge signal be decomposed on each yardstick compared with amplitude.Therefore, coefficient of dissociation amplitude size, directly as the standard of distinguishing, is carried out to threshold process.All wavelet conversion coefficients that are greater than threshold value are all remained, yet this part is compared with in the coefficient of dissociation of amplitude, generally having a small amount of coefficient of dissociation is to decompose gained by noise signal.
In actual test, use separately the method for wavelet threshold can make noise effectively be suppressed, but have unavoidably the residual of a small amount of noise after de-noising, Partial Discharge Detection equipment is conventionally in compared with strong electromagnetic interference environment, and this has also increased the difficulty of de-noising.Therefore, consider to utilize the correlativity of coefficient of wavelet decomposition corresponding point on different scale to carry out the choice of wavelet coefficient with spatial domain related algorithm, edge that can also sharpening signal in effective inhibition noise, algorithm performance is comparatively stable.But spatial domain related algorithm needs repeatedly iteration, and calculated amount is very large, result of use is unsatisfactory separately.
Therefore, during de-noising of the present invention, wavelet threshold selection algorithm (TEM) is combined with spatial domain related algorithm (SCFM), be defined as based on the relevant local discharge signal denoising algorithm (TSCFM) of revising wavelet threshold in spatial domain, to containing noisy local discharge signal de-noising.
Therefore, during denoising of the present invention, wavelet threshold selection algorithm (TEM) is combined with spatial domain related algorithm (SCFM), be defined as based on the relevant local discharge signal denoising algorithm (TSCFM) of revising wavelet threshold in spatial domain containing noisy local discharge signal de-noising, concrete steps are as follows:
First adopt the method for wavelet transformation to obtain wavelet coefficient initial value W the local discharge signal that contains white noise f(j, n);
To the concentrated coefficient of wavelet coefficient respectively with each layer of threshold value d 1max-d mmaxand a mmaxprocess the estimated value W' of the wavelet coefficient that obtains containing white noise local discharge signal f(j, n), using it as obtaining new wavelet coefficient;
To new wavelet coefficient W' fthe sparse W' of new small echo in the set that (j, n) forms f(j, n) asks between signal the yardstick related coefficient C at position n place in yardstick j 2' (j, n);
By yardstick related coefficient C 2' obtain correlation C after (j, n) normalization 2, new' (j, n).If | C 2, new' (j, n) |>=W f' (j, n) think that n point place wavelet coefficient belongs to the local discharge signal that contains white noise, W' f(j, n) is assigned to W gbe filtered value, initial value is zero, simultaneously by W' f(j, n) and C 2' (j, n) zero setting.Otherwise, W' f(j, n) is judged as noise, retains former W g;
Repeating step (4), the energy value P that iteration stopping condition is white noise w(j) be less than the threshold value of noise energy;
The wavelet transform W of signal after recording processing g, then by W gcarry out discrete wavelet inverse transformation and obtain the signal after denoising.
The present invention is directed to the white noise that the local discharge signal in electric system is mixed with and carry out de-noising research, choose 2 kinds of local discharge signals (exponential damping and concussion decay) and carry out emulation, by average, be 1 again, variance is 0 white Gaussian noise and its stack, and it is input in system as the local discharge signal that contains white Gaussian noise.The algorithm flow chart of system as shown in Figure 1.In denoising Processing, first by user, by signaling interface, propose de-noising request (target data), denoising Processing module adopts the mode of wavelet transform that the local discharge signal with gaussian random noise is converted according to request, records wavelet coefficient; Then threshold value selection is carried out in set wavelet coefficient being formed, and obtains new wavelet coefficient collection, by spatial domain related algorithm, obtains Optimum wavelet coefficient value; Finally, according to the Optimal Wavelet Transform coefficient obtaining, carry out inverse transformation, obtain the local discharge signal after de-noising, it is fed back to user as output signal.As shown in Figure 2, specific implementation method is as follows for system architecture diagram:
1. signal simulation and multiresolution wavelet resolution characteristic
(1) partial discharge pulse's emulation
Consider partial discharge pulse's signal duration extremely short (approximately several ns), the wave head rise time is 1ns left and right only, Maetal proposes to use exponential damping pulsed D EP(the damped exponential pulse) and concussion decaying pulse DOP(the damped oscillatory pulse) be mathematical model simulation local discharge signal, in the present invention, adopt bilateral damped oscillation pulse signal to simulate actual local discharge signal, expression formula as shown in Equation 3.
DOP ( t ) = A sin ( 2 π f c t ) ( e - t τ 1 - e - t τ 2 ) - - - ( 3 )
In formula, A represents peak value, τ 1, τ 2be time constant, determined the parameters such as rise time, f cit is the concussion frequency of DOP signal.
The damped oscillation pulse signal of two pulses of take is example, and shelf depreciation simulate signal as shown in Figure 3.
Multiresolution analysis (Multi Resolution Analysis, MRA) is proposed by Mallat, and algorithm has provided the building method of orthogonal wavelet, and has provided on this basis fast algorithm-Mallat algorithm of wavelet transformation.Arthmetic statement is as follows:
d j ( n ) = Σ k g ‾ ( k - 2 n ) c j - 1 ( k ) = [ c j - 1 ( n ) * g ‾ ( - n ) ] ↓ 2 - - - ( 4 )
c j ( n ) = Σ k h ‾ ( k - 2 n ) c j - 1 ( k ) = [ c j - 1 ( n ) * h ‾ ( - n ) ] ↓ 2 - - - ( 5 )
In formula, n is sampled point, d j(n) represent the coefficient sequence of the detail section that original signal resolves into, c j(n) represent the coefficient sequence of approximate part, h (n) is low-pass filter coefficients, and g (n) is Hi-pass filter coefficient, and " * " represents convolution, and " ↓ 2 " represent to extract even number of samples point from filtered sequence.
Function f (x) is at certain 1 x 0the regularity at place can be portrayed by Lipschitz index α, if Lipschitz index α is larger, function shape is just relatively smooth.
Theorem 1: establish 0≤α≤1, f (x) ∈ L 2(R), [a, b] is an interval on R, and and if only if for any x ∈ [a, b], has a constant k, makes | W f(s, x) |≤ks αset up, claim that f (x) is the consistent Lipschitz index α at interval [a, b].
The modulus maximum of signal coefficient of wavelet decomposition on each yardstick and Lipschitz index α have corresponding relation, if Lipschitz index α is >0, with the increase of yardstick j, modulus maximum should increase, if Lipschitz index α=0, modulus maximum on each yardstick without significant change, if Lipschitz index α is <0, the modulus maximum characteristic of wavelet transformation should be just in time contrary with the situation of α >0, when decomposition scale increases, modulus maximum is corresponding to be reduced.
The Lipschitz index α of local discharge signal meets: 0< α <1.Therefore the modulus maximum of PD signal, in decomposition scale j increase process, increases gradually, and number is also substantially equal on each yardstick.
Adopt multi-scale wavelet to decompose the local discharge signal of simulation, in Multiscale Wavelet Decomposition process, the decomposition of every one deck all can produce the approximate component of a low frequency and the details component of a high frequency, in the decomposition of lower one deck, only the approximate component of low frequency is decomposed again, office puts simulate signal and after db4 wavelet transformation, obtains the coefficient of dissociation of each layer, the coefficient of wavelet decomposition that it has comprised each layer of low frequency component, and in the process increasing at decomposition scale, wavelet coefficient amplitude is corresponding increase also.Therefore, along with the increase of decomposition scale, the low-frequency approximation of signal partly has certain energy loss, and this is that the reduction of decomposition scale temporal resolution that increase causes causes, and the energy of this part loss is being embodied in corresponding high fdrequency component.
(2) white noise signal emulation
White noise is a kind of common interference, and its frequency spectrum is very wide, is almost distributed in whole frequency range, and the simulating signal of white noise is generally normal distribution, is the random signal that average is 0, variance is constant, is the simulate signal of white noise shown in Fig. 4.If white noise n (k) is an average, be zero, the wide stationary signal that variance is ξ, W n(j, k) is the wavelet transformation of n on j yardstick (k), and to establish small echo ψ (k) be real-number function, ψ j(k)=2 jψ (2 jk), thus have:
W n(j,k)=∫ Rn(u)ψ j(k-u)du (6)
Can obtain:
E { | W n ( j , k ) | 2 } = &Integral; &Integral; R E { n ( u ) n ( v ) } &psi; j ( k - u ) &psi; j ( k - v ) dudv = &xi; &Integral; &Integral; R ( u - v ) &psi; j ( k - u ) &psi; j ( k - v ) dudv = &xi; | | &psi; | | 2 &times; 2 - j - - - ( 7 )
This shows W nthe average power of (j, k) and yardstick j are inversely proportional to, and that is to say that the modulus maximum of white noise, when decomposition scale j increases, reduces.
Therefore, the Lipschitz index α of white noise is: α=-0.5-ε, ε >0.Modulus maximum, in decomposition scale j increase process, reduces gradually.
The coefficient of wavelet decomposition that comprises low frequency component and high fdrequency component in the wavelet decomposition of white noise, in the process increasing at decomposition scale, coefficient of dissociation all obviously diminishes, and this is contrary with the wavelet conversion characteristics of Partial discharge signal.
(3) the local discharge signal emulation that contains white noise
For the ease of observing de-noising simulation result, signal amplitude is normalized to 1, simulate signal and white noise signal stack are put in damped oscillation simulation office, obtain the shelf depreciation simulate signal that contains white noise, its expression formula is suc as formula shown in (8), and simulation waveform as shown in Figure 5.
y ( t ) = A sin ( 2 &pi; f c t ) ( e - t &tau; 1 - e - t &tau; 2 ) + &Sigma; k = - &infin; t n ( k ) - - - ( 8 )
In formula, A represents peak value, τ 1, τ 2be time constant, determined the parameters such as rise time, f cbe the concussion frequency of DOP signal, n (k) is that an average is zero, the broadband stationary white noise signal that variance is ξ.
Therefore, will carry out wavelet transformation containing noisy local discharge signal, the low-frequency approximation part of signal is in decomposition scale increase process, and amplitude is increasing, and obviously reduces in the process that the amplitude of noise coefficient of dissociation increases at yardstick.
Local discharge signal Lipschitz index α >0 and the Lipschitz index α <0 of white noise, both modulus maximums are when decomposition scale j becomes large, show contrary characteristic, the wavelet coefficient of white noise local discharge signal is along with the increase of yardstick j is distinguished significantly.
2. the selection of base small echo
Wavelet noise process generally comprises following three steps:
1) select a base small echo with handled Signal Matching, selected decomposition number of plies N, calculates the wavelet conversion coefficient of every layer.
2) use certain method criterion, wavelet coefficient is judged, obtain the estimation wavelet coefficient of signal.
3) with the wavelet coefficient reconstruction signal of estimating, the signal obtaining is exactly the signal after de-noising.
First the problem that will consider in de-noising is the selection of base small echo, and Mallat proposes to judge with the cross-correlation coefficient γ of whole sample the matching degree of base small echo and PD signal.The computing formula of γ is shown in formula 7:
&gamma; = ( &Sigma; ( X - X &OverBar; ) ( Y - Y &OverBar; ) ) &Sigma; ( X - X &OverBar; ) 2 ( Y - Y &OverBar; ) 2 - - - ( 9 )
In formula, X is Partial Discharge Data, be the mean value of X, Y is wavelet data, the mean value of Y.When signal is carried out to wavelet transformation, need to select the suitable decomposition number of plies, if decompose the number of plies too conference make distorted signals, the too little noise reduction object that do not reach again.Decompose the number of plies also has certain relation with sample frequency simultaneously, can make correspondingly and adjusting according to the concrete condition of de-noising in actual applications.
Visible, in de-noising process base small echo choose very importantly, selected base small echo will just can extract useful signal with the Waveform Matching of local discharge signal.The conventional wavelet function of shelf depreciation comprises " db ", " bior " and " coif " small echo.Mallat proposes to judge with cross-correlation coefficient γ the whole matching degree of base small echo and local discharge signal, and db4 small echo and local discharge signal related coefficient are 1.72, therefore in invention, adopts db4 small echo as the wavelet basis of de-noising.The wavelet decomposition of local discharge signal when base small echo is db4 small echo, therefore, db4 small echo can be portrayed the details of signal preferably.
3. be correlated with and revise wavelet threshold in spatial domain
Noisy shelf depreciation simulate signal wavelet transformation is obtained to wavelet coefficient W f(j, n), threshold method deal with data obtains W' f(j, n), estimates small echo global threshold according to formula (10).
&lambda; = &sigma; 2 log ( n ) - - - ( 10 )
Wherein, the global threshold that λ is each layer, n is that signal length σ is noise criteria variance.λ is global threshold, and the threshold value of each decomposition layer is identical.And then to W' f(j, n) utilizes following steps to carry out interative computation, and concrete steps are as follows:
(1) to carrying out wavelet transformation containing noisy signal, obtain W f(j, n), asks for each yardstick related coefficient C 2(j, n).
(2) calculate C 2correlation C after (j, n) normalization 2, new(j, n).If | C 2, new(j, n) |>=| W f(j, n) |, think that n point place wavelet coefficient belongs to PD signal.By W f(j, n) assignment is to W g(W gbe filtered value, initial value is zero), simultaneously by W f(j, n) and C 2(j, n) zero setting.If | C 2, new(j, n) |≤| W f(j, n) |, think this W f(j, n) belongs to noise, and wavelet coefficient is retained.
(3) repeating step 2, until P w(j) be less than the critical value of noise energy, at this moment obtain W gthe middle estimation wavelet coefficient that retains PD signal, finally utilizes and estimates wavelet coefficient reconstruct PD signal.
Until P w(j) be less than the threshold value of noise energy, obtain W g, to W gcarry out wavelet inverse transformation and obtain the signal after de-noising.
When having the signal processing of partial discharge of attenuation characteristic, this method can suppress the energy loss producing in damped oscillation process in local discharge signal, realizes effective de-noising of local discharge signal.Adopt this method de-noising effect figure as shown in Figure 6.
4. the performance evaluation of method
The present invention disturbs mainly for the white noise in local discharge signal, adopts the de-noising ability of signal to noise ratio (S/N ratio) and Y-PSNR describing system.Usually, signal to noise ratio (S/N ratio) is described effective local discharge signal and is extracted situation, and Y-PSNR has reflected the reservation situation of characteristic spikes point.Therefore, general noise-canceling system requires these two evaluatings all to obtain reasonable numerical value.
In the present invention, adopt conventional de-noising performance evaluation formula in signal processing to evaluate the de-noising performance of system, establishing s (i) is useful signal, and n (i) is noise signal.Now provide the local discharge signal s (i) of emulation, (i=1,2, ..., N), N is the predefined local discharge signal sampled point of test macro de-noising performance number, (the Signal to Noise Ratio of the signal to noise ratio (S/N ratio) after de-noising, SNR) be the major criterion of weighing de-noising effect, be defined as:
SNR = 20 lg max i = 1 N { s ( i ) } max i = 1 N { n ( i ) } - - - ( 11 )
When signal to noise ratio (S/N ratio) is greater than 0, show that useful signal is stronger than noise; When signal to noise ratio (S/N ratio) is greater than 10, illustrate that de-noising effect is good, local discharge signal can effectively be identified.Therefore, signal to noise ratio (S/N ratio) has guaranteed that useful signal extracts effectively.
After local discharge signal denoising Processing, the distortion degree of signal is little, to meet the needs of subsequent treatment.In invention, adopt Y-PSNR (Peak Signal to Noise Ratio, PSNR) as evaluating, to describe the distortion degree of the waveform after de-noising, be defined as:
PSNR = 20 lg max ( s ( i ) ) 1 N &Sigma; i = 1 N | s ( i ) - n ( i ) | - - - ( 12 )
In formula, max (s (i)) is the maximum amplitude of signal, the reserving degree of the characteristic spikes point of PSNR reflection original signal.
In order further to analyze the whole structure of method in the actual local discharge signal that contains white noise, adopt 10 pulses as the local discharge signal of one group of simulation, adopt the method in the present invention, add up respectively corresponding signal to noise ratio (S/N ratio) and Y-PSNR.
Through statistics, show after de-noising, to only have the SNR of a signal lower than 10, the SNR of all the other 9 signals all can reach more than 10, and variance 2.9380 is visible, and the method obviously improves inhibition ability and the stability of noise.Data from table 1 can find out, in the peak amplitude conversion of the de-noising in this method, to only have the Y-PSNR of a signal more serious, and all the other are all in 15%.

Claims (1)

1. the change wavelet coefficient local discharge signal noise-eliminating method based on the relevant correction threshold in spatial domain, is characterized in that:
(1) local discharge signal that contains white noise is carried out to wavelet transformation, the decomposition number of plies in wavelet transformation process is M, obtains the wavelet coefficient initial value W of the signals and associated noises f of position n place in yardstick j f(j, n);
(2) extract wavelet coefficient initial value W fthe detail section coefficient D of (j, n) each layer 1-D mapproximation coefficient A with last one deck mthe maximal value d of absolute value 1max-d mmaxand a mmaxas initial threshold; By wavelet coefficient initial value W f(j, n) coefficient and threshold value compare, and retain the wavelet coefficient initial value be less than threshold value, the estimated value W' of the wavelet coefficient that obtains containing white noise local discharge signal f(j, n);
(3) ask between signal the yardstick related coefficient C at position n place in yardstick j 2' (j, n),
C′ 2(j,n)=W′ f(j,n)W′ f(j+1,n)
(4) by yardstick related coefficient C 2' obtain correlation C after (j, n) normalization 2, new' (j, n),
C 2 , new &prime; ( j , n ) = C 2 &prime; ( j , n ) P W ( j ) / P C 2 ( j ) ,
Wherein, n=1,2 ..., N, P C 2 ( j ) = &Sigma; n = 1 N C 2 &prime; ( j , n ) 2 , P W ( j ) = &Sigma; n = 1 N W f &prime; ( j , n ) 2 ;
If | C 2, new' (j, n) |>=W f' (j, n) n point place wavelet coefficient belong to the local discharge signal that contains white noise, W' f(j, n) is assigned to filtered wavelet transform W g, W ginitial value is zero, simultaneously by W' f(j, n) and C 2' (j, n) zero setting, otherwise W' f(j, n) is judged as noise, retains former filtered wavelet transform W g;
(5) repeated execution of steps (4) is to the energy value P of white noise w(j) be less than the threshold value of noise energy;
(6) record wavelet transform W g, then by W gcarry out discrete wavelet inverse transformation and obtain the signal after denoising.
CN201410013070.0A 2014-01-13 2014-01-13 Wavelet coefficient partial discharge signal noise elimination method based on related space domain correction threshold values Pending CN103995950A (en)

Priority Applications (1)

Application Number Priority Date Filing Date Title
CN201410013070.0A CN103995950A (en) 2014-01-13 2014-01-13 Wavelet coefficient partial discharge signal noise elimination method based on related space domain correction threshold values

Applications Claiming Priority (1)

Application Number Priority Date Filing Date Title
CN201410013070.0A CN103995950A (en) 2014-01-13 2014-01-13 Wavelet coefficient partial discharge signal noise elimination method based on related space domain correction threshold values

Publications (1)

Publication Number Publication Date
CN103995950A true CN103995950A (en) 2014-08-20

Family

ID=51310113

Family Applications (1)

Application Number Title Priority Date Filing Date
CN201410013070.0A Pending CN103995950A (en) 2014-01-13 2014-01-13 Wavelet coefficient partial discharge signal noise elimination method based on related space domain correction threshold values

Country Status (1)

Country Link
CN (1) CN103995950A (en)

Cited By (12)

* Cited by examiner, † Cited by third party
Publication number Priority date Publication date Assignee Title
CN104730424A (en) * 2015-03-02 2015-06-24 国家电网公司 Cable partial discharging positioning method based on self-correlation-wavelet modulus maximum analysis
CN107015124A (en) * 2017-01-13 2017-08-04 国网山东省电力公司日照供电公司 A kind of Partial discharge signal disturbance restraining method decomposed based on framing adaptive sparse
CN108717155A (en) * 2018-06-29 2018-10-30 国网北京市电力公司 Configure the method and device of noise threshold and bandwidth
CN109117816A (en) * 2018-08-28 2019-01-01 电子科技大学 Detection of Singular Point method based on six rank spline interpolation small echos
CN109580787A (en) * 2018-12-08 2019-04-05 国网四川省电力公司广安供电公司 The ultrasonic echo denoising method of for transformer bushing lead ultrasound detection
CN111553308A (en) * 2020-05-11 2020-08-18 成都亿科康德电气有限公司 Reconstruction method of partial discharge signal of power transformer
CN111951816A (en) * 2020-07-28 2020-11-17 深圳供电局有限公司 Method, computer equipment and medium for reducing noise of voice exchange system
CN112434634A (en) * 2020-12-02 2021-03-02 青岛理工大学 Method and system for rapidly eliminating civil engineering structure health monitoring signal peak
CN114152837A (en) * 2020-09-08 2022-03-08 南京南瑞继保电气有限公司 Wave head identification method and device under multi-scale wavelet transform
CN114779028A (en) * 2022-06-13 2022-07-22 北京京能能源技术研究有限责任公司 Generator partial discharge online monitoring device and monitoring method
CN115389888A (en) * 2022-10-28 2022-11-25 山东科华电力技术有限公司 Partial discharge real-time monitoring system based on high-voltage cable
JP7351894B2 (en) 2021-12-27 2023-09-27 株式会社小野測器 Signal analysis device, signal analysis method, and signal analysis program

Citations (1)

* Cited by examiner, † Cited by third party
Publication number Priority date Publication date Assignee Title
CN101881628A (en) * 2010-06-30 2010-11-10 中南大学 Detecting method of weak periodic signal based on chaotic system and wavelet threshold denoising

Patent Citations (1)

* Cited by examiner, † Cited by third party
Publication number Priority date Publication date Assignee Title
CN101881628A (en) * 2010-06-30 2010-11-10 中南大学 Detecting method of weak periodic signal based on chaotic system and wavelet threshold denoising

Non-Patent Citations (8)

* Cited by examiner, † Cited by third party
Title
于虹: "基于局部放电图谱的GIS缺陷识别方法研究", 《2013年中国电机工程学会年会论文集》 *
唐炬 等: "非平稳振荡局放信号去噪效果评价参数研究", 《高电压技术》 *
张晓星 等: "抑制局部放电白噪声的分块阈值空域相关联合去噪法", 《高电压技术》 *
李楠: "发电厂励磁变压器局部放电在线监测干扰抑制原理与方法研究", 《中国博士学位论文全文数据库 工程科技II辑》 *
杜民 等: "《金免疫层析试条定量测试原理及应用》", 31 July 2007, 科学出版社 *
杨国华 等: "基于小波分析的局部放电信号消噪研究", 《机电工程技术 》 *
栗时平 等: "《现代电能质量检测技术》", 31 March 2008, 中国电力出版社 *
赵国栋 等: "一种改进的小波空域相关去噪方法", 《科技信息(科学教研)》 *

Cited By (15)

* Cited by examiner, † Cited by third party
Publication number Priority date Publication date Assignee Title
CN104730424B (en) * 2015-03-02 2018-07-17 国家电网公司 Cable local discharge localization method based on auto-correlation-Wavelet Modulus Maxima analysis
CN104730424A (en) * 2015-03-02 2015-06-24 国家电网公司 Cable partial discharging positioning method based on self-correlation-wavelet modulus maximum analysis
CN107015124B (en) * 2017-01-13 2019-08-16 国网山东省电力公司日照供电公司 A kind of Partial discharge signal disturbance restraining method decomposed based on framing adaptive sparse
CN107015124A (en) * 2017-01-13 2017-08-04 国网山东省电力公司日照供电公司 A kind of Partial discharge signal disturbance restraining method decomposed based on framing adaptive sparse
CN108717155A (en) * 2018-06-29 2018-10-30 国网北京市电力公司 Configure the method and device of noise threshold and bandwidth
CN109117816A (en) * 2018-08-28 2019-01-01 电子科技大学 Detection of Singular Point method based on six rank spline interpolation small echos
CN109580787A (en) * 2018-12-08 2019-04-05 国网四川省电力公司广安供电公司 The ultrasonic echo denoising method of for transformer bushing lead ultrasound detection
CN111553308A (en) * 2020-05-11 2020-08-18 成都亿科康德电气有限公司 Reconstruction method of partial discharge signal of power transformer
CN111951816A (en) * 2020-07-28 2020-11-17 深圳供电局有限公司 Method, computer equipment and medium for reducing noise of voice exchange system
CN114152837A (en) * 2020-09-08 2022-03-08 南京南瑞继保电气有限公司 Wave head identification method and device under multi-scale wavelet transform
CN112434634A (en) * 2020-12-02 2021-03-02 青岛理工大学 Method and system for rapidly eliminating civil engineering structure health monitoring signal peak
JP7351894B2 (en) 2021-12-27 2023-09-27 株式会社小野測器 Signal analysis device, signal analysis method, and signal analysis program
CN114779028A (en) * 2022-06-13 2022-07-22 北京京能能源技术研究有限责任公司 Generator partial discharge online monitoring device and monitoring method
CN115389888A (en) * 2022-10-28 2022-11-25 山东科华电力技术有限公司 Partial discharge real-time monitoring system based on high-voltage cable
CN115389888B (en) * 2022-10-28 2023-01-31 山东科华电力技术有限公司 Partial discharge real-time monitoring system based on high-voltage cable

Similar Documents

Publication Publication Date Title
CN103995950A (en) Wavelet coefficient partial discharge signal noise elimination method based on related space domain correction threshold values
CN102323518B (en) Method for identifying local discharge signal based on spectral kurtosis
CN113378661A (en) Direct current electric energy signal denoising method based on improved wavelet threshold and related detection
CN110376575B (en) Low-frequency line spectrum detection method based on damping parameter matching stochastic resonance
CN105116442A (en) Lithologic oil-gas reservoir weak-reflection seismic signal reconstruction method
CN109871733A (en) A kind of adaptive sea clutter signal antinoise method
CN107144879A (en) A kind of seismic wave noise-reduction method combined based on adaptive-filtering with wavelet transformation
CN102353952A (en) Line spectrum detection method by coherent accumulation of frequency domains
CN101984360A (en) Normalized leakage LMS self-adaptive mobile target detector based on FRFT
CN101527698A (en) Non-stationary interference suppression method based on Hilbert-Huang transformation and adaptive notch
CN113887398A (en) GPR signal denoising method based on variational modal decomposition and singular spectrum analysis
Dong et al. A deep-learning-based denoising method for multiarea surface seismic data
CN106569034A (en) Partial discharge signal de-noising method based on wavelet and high-order PDE
CN104133248A (en) High-fidelity sound wave interference suppression method
CN113642417A (en) Improved wavelet algorithm-based denoising method for partial discharge signals of insulated overhead conductor
CN103915102A (en) Method for noise abatement of LFM underwater sound multi-path signals
CN108020761B (en) A kind of Denoising of Partial Discharge
ZhaoHeng et al. Selection of the optimal wavelet bases for wavelet de-noising of partial discharge signal
CN110459197A (en) Signal Booster and method for faint blind signal denoising and extraction
CN102509268B (en) Immune-clonal-selection-based nonsubsampled contourlet domain image denoising method
CN114035238A (en) Advanced geological prediction method based on dual-tree complex wavelet transform
Chen et al. Research on sonar image denoising method based on fixed water area noise model
CN112230200A (en) Improved combined noise reduction method based on laser radar echo signals
CN112929053B (en) Frequency hopping signal feature extraction and parameter estimation method
CN104267413A (en) Lifting wavelet double-threshold denoising algorithm based on signal strength self-adaptive tabu search

Legal Events

Date Code Title Description
C06 Publication
PB01 Publication
C10 Entry into substantive examination
SE01 Entry into force of request for substantive examination
RJ01 Rejection of invention patent application after publication

Application publication date: 20140820

RJ01 Rejection of invention patent application after publication