Acoustic Emission Signal Based Investigations Involving Laboratory and Field Studies Related To Partial Discharges & Hot-Spots in Power Transformers
Date
2017
Authors
Shanker, Tangella Bhavani
Journal Title
Journal ISSN
Volume Title
Publisher
National Institute of Technology Karnataka, Surathkal
Abstract
Power transformers are important and vital components of ac power systems. It is
essential to monitor the condition of these transformers periodically in order to ascertain the
performance for continuous operation for its expected average life of 25-30 years. The
defects in power transformers lead to the deterioration of insulation and eventual premature
failure. The deterioration of insulation of power transformers can be assessed by carrying out
the condition monitoring tests periodically. The condition monitoring test techniques can be
off-line or on-line. The off-line test techniques are being followed as given in IEEE Std.
62(1995). These tests require outage of the transformer, thereby causing interruption of
power supply. Whereas, on-line test techniques do not require any outage. Hence, on-line
diagnostic techniques have gained importance. Literature review shows application of
Acoustic Emission (AE) detection technique as a promising on-line tool for condition
monitoring/diagnosis of the power transformers. The general guidelines for the application of
AE technique for this purpose are outlined in IEEE Std. C57.127 (2007).
Few typical case studies of AE signal measurements are discussed involving (i) two
identical transformers, (ii) same transformer on different occasions (years) in power stations
in India are reported. Some case studies with AE signals, involving On-Load Tap Changer
(OLTC) and cooling system pump are also reported. These case studies also help in
comprehending the efficacy of integrating the Dissolved Gas Analysis (DGA) data with the
AE test results.
Laboratory experimental work is carried out by simulating the most probable defects
like Partial Discharge (PD) and hot-spots (leading to heat-waves) in order to capture AE
signals in the range of 0-500 kHz. The classification and characterization of the defects based
on the energy distribution of AE signals over the different frequency ranges is carried out
using Discrete Wavelet Transform (DWT) utilizing the MATLAB toolbox. The eight-level
decomposition revealed that the dominant frequency ranges for the energy distribution of the
AE signals due to PD and heat-wave are 125 kHz-250 kHz and 62.5 kHz–125 kHz,
respectively. The AE signal data from the transformers (field test) involving PD and hotspots are also analyzed using DWT. The laboratory based characterization of PD and heatwave got validated through the analysis of field data. The proposed method of identifying
defects by AE signal analysis using DWT would complement the DGA of the transformeroil. Thus this would be a better substitute for DGA based analysis as AE based technique can
be adopted in real time.
The Acoustic Emission Partial Discharge (AEPD) signal parameters such as
discharge magnitude and peak frequencies are studied using Fast Fourier Transform (FFT) to
understand the behavior of AE signals at temperatures ranging from 30°C to 75°C. The
results reported are intended to give an understanding of behavior of AEPD signals over the
entire working temperature range of a transformer. At temperatures above 65°C a reduction
in AEPD magnitude and peak frequencies are observed. Such behavior is noticed and
probably being reported for the first time. An attempt is also made to explain the same.
Description
Keywords
Department of Electrical and Electronics Engineering, Acoustic emission (AE), Acoustic emission partial discharge (AEPD), Discharge magnitude, Discrete wavelet transform (DWT), Dissolve gas analysis (DGA), Fast Fourier transform(FFT), Generator transformer(GT), Hot-spots (heat-waves), On-load tap changer (OLTC), Partial discharge (PD)