The present invention relates to a technology of online condition monitoring of power transmission and transformation equipment, specificly relates to a fault diagnosis and location system for transformer core looseness. It is an intelligent substation technology.
The main reasons cause the transformer tank vibration are vibration from the transformer body and cooling system installations. The fundamental vibration frequency caused by the cooling device is low, and is significantly different to the transformer body vibration; body vibration includes core and winding vibration. When operating, the current in windings produces electromagnetic field in both core and winding; core silicon steel materials in the magnetic field have magnetostriction, namely the size of the atom has a small deformation, causing the core vibration. The solid line in
Where Φ and B are main flux and magnetic flux density, respectively; A is cross-sectional area of the core; U is load voltage; f is the frequency of load voltage; N is the number of turns of primary winding.
From
vcore∝U2;
As the duplation frequency of voltage is 100 Hz, the fundamental frequency of magnetostriction is 100 Hz.
Core is made from silicon steel, each piece of silicon steel surface is insulating coated, so there is a gap between segments, resulting in magnetic flux leakage, cause core and tank vibration. But the vibration can be ignored because it is much smaller than the vibration caused by magnetostriction. So the core vibration depends on the magnetostriction of silicon steel, the core vibration fundamental frequency is 100 Hz. Because of the nonlinear magnetostrictive and different magnetic circuit length of core inside and outside the box, the core vibration, in addition to the fundamental frequency, also contains the harmonic components, which are integer multiple of the fundamental frequency component.
The vibration of the winding is caused by electric power. Under the influence of the leakage inductance, current in winding interacts to generate electric force, which is proportional to the square of the current. Winding current is zero on no-load condition, so winding vibration now has no influence on core vibration. The vibration of the no-load transformer depends on the core.
According to above analysis, no-load tank vibration is related to core magnetostriction, namely related to voltage. Transformer vibration transmits to tank via transformer oil and solid structures. Be influenced by various factors, vibration signal changes in amplitude and phase. When it reaches the tank surface, it becomes complex.
After the loosening of the core, the magnetic flux leakage between the silicon steel joints and laminations become larger, resulting in larger electromagnetic attractive force, larger core vibration.
The transformer vibration signal is non-stationary signals. Signal processing methods include Fourier transform, wavelet transform, Hilbert Huang Transform. The Fourier transform is the most classic signal processing methods. It is suitable for stationary signals, to transform time domain of the signals to frequency domain, is widely used in engineering. Wavelet de-noising principle is shown in
One embodiment of the present invention is a fault diagnosis and preliminary location system and method for transformer core looseness, said system have at least three vibration sensors, a conversion interface, a data collection module and a data analysis module, wherein said vibration sensors collect transformer vibration signal with a set sampling frequency and time, then the vibration signal delivers to said data collection module via conversion interface. The three sensors are fixed on three positions of power transformer tank top surface corresponding with the three-phase winding. Said data collection is used to sample and record vibration signal from sensors, then deliver it to data analysis module. Said data analysis module stores and analyzes data and diagnose fault, finally outputs the result.
The present invention provides a data analysis module including wavelet de-noising unit, Fourier transform unit, data storage unit, calculating unit and output unit.
Wherein said wavelet de-noising unit de-noises the vibration signal from data collection.
Then the said Fourier transform unit do Fourier transform to de-noised signal, to get spectrum.
Said data storage unit stores TH1, TH2, CR1 and CR2, wherein TH1 is the threshold at 300 Hz of the spectrum of the vibration signal, TH2 is the threshold of 50 Hz plus 150 Hz of the spectrum of the vibration signal.
Said calculating unit compares the amplitude of 300 Hz of the spectrum with TH1. Signal samples are collected at least 3 times at one same condition. When the samplings on the amplitude of 300 Hz are larger than TH1 at least 2 times, then calculate 50 Hz plus 150 Hz at the spectrum, compare it with TH2; When the samplings on the amplitude of 50 Hz plus 150 Hz is larger than TH2 at least 2 times, get the conclusion, there is core looseness near the position. Output the result to output unit.
The present also provides test method for said fault diagnosis and preliminary location system and method for transformer core looseness:
Steps are shown as following, when the transformer is on a no-load stable operating condition, to diagnose the fault:
Compared with present technology, the present invention has these advantages:
Experiments verify that the selected features in the present invention can accurately reflect the fault characteristics of core looseness, effectively detect core looseness of power transformer. Compare signal characteristic of three different positions, orientate the fault location preliminary.
a) is the original vibration signal from the data collection of the embodiment of the invention;
b) is the de-noised signal of the embodiment of the invention;
a) is the vibration signal spectrum of fault point at normal condition of the embodiment of the invention;
b) is the vibration signal spectrum of fault point at fault condition of the embodiment of the invention;
a) is the vibration signal spectrum of non-fault point 1 at normal condition of the embodiment of the invention;
b) is the vibration signal spectrum of non-fault point 1 at fault condition of the embodiment of the invention;
a) is the vibration signal spectrum of non-fault point 2 at normal condition of the embodiment of the invention;
b) is the vibration signal spectrum of non-fault point 2 at fault condition of the embodiment of the invention.
The following is further details of the embodiments of the present invention:
As
Collect vibration signals on an operating transformer of normal condition, calculate TH1,TH2, take them as threshold.
Use sensors to sample the transformer vibration signal, deal with the signal as said in step (3), get the amplitude of 50 Hz, 150 Hz, 300 Hz.
Set core looseness fault on a test power transformer, verify the correctness of the present invention, and follow the steps above to do an experiment. The transformer is made by the Jiangsu Hongyuan Electrical Co., Ltd., its parameters are shown in Tab.1.
(A) System Connection
As
(B) The Installation of Sensors
Use CA-YD-103 sensor, its parameters are shown in Tab.2.
In order to fully measure the vibration of the transformer core, the experiment is done as much as possible on no-load condition; three vibration sensors are installed at three positions on the top. Specific installation location is shown in
(C) The Setting of Core Looseness
Sling the core with a crane. Use the wrench to loose core fastening screw for about 1 cm. Beat the loosen side with a mallet, and then put a bamboo gently to the gap of the core silicon steel to further loosen the core.
(D) Test Example
Nicolet data collection has charge amplifier inside. Nicolet is used to sample and record vibration signal collected by sensors, and the computer is used to store and process the signal, diagnose the fault and output the results.
In this example, test as the steps described above, obtain vibration signal and de-noise it with wavelet method.
a) and
When the core is loosened from the tank surface vibrations will produce more 50 Hz harmonic components, 300 Hz energy rise.
After calculation, the change of frequency components amplitude is shown in Tab. 3.
Use Fourier transform, take 300 Hz (CR1) as the main characteristic. When the value of CR1 reaches a certain point, it suggests transformer core looseness near this position. When the value of 50 Hz plus 150 Hz (CR2) reaches a certain point, further determine there is core looseness near the position.
a) and
a) and
On the basis of theoretical analysis, with a large number of experiments, it is proved that the above characteristics are with good reproducibility and regularity, and verify that this feature can be used in the transformer core looseness fault diagnosis.
Finally, it should be noted, that the above embodiments are only used to describe the technical solution of the present invention rather than to limit this technique, the present invention can be extended its application to other modifications, changes, applications and embodiments, and therefore all of such modify, change, application, embodiments are included in the spirit and teachings of the present invention.
The invention uses the electricity grid frequency of 50 Hz for example, for 60 Hz power system, above 50 Hz, 150 Hz, 300 Hz characteristic frequencies are 60 Hz, 180 Hz and 360 Hz.
Number | Date | Country | Kind |
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201210193931.9 | Jun 2012 | CN | national |
Filing Document | Filing Date | Country | Kind | 371c Date |
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PCT/CN2012/078885 | 7/19/2012 | WO | 00 | 12/21/2013 |