Traveling wave-based fault location in power grids using neural networks
Abstract
downtime and improving public safety. One practical FL approach involves utilizing traveling
waves (TWs) to locate the fault along a transmission line. TW-based FL methods are
highly regarded for their speed and resilience to variations in fault parameters. However,
many existing TW-based FL methods rely on constant propagation velocity assumptions,
which can be challenging to apply in real-world applications. In response to these limitations,
this thesis introduces two approaches integrating machine learning to locate faults
in power grids and on hybrid lines accurately.
First, a novel wide-area TW-based FL method is presented to handle complex grid
networks, including multiple line type configurations and bus impedance variations. TW
arrival times are collected via TravelingWave Recorders (TWRs) strategically placed across
the network, capturing the FL information. A multi-task multi-layer perceptron (MLP)
is then trained using TW arrival times throughout the network to simultaneously classify
the faulted line and determine the exact FL within that line. Training the MLP avoids the
need for explicit propagation velocity assumptions. This approach remains accurate with
mixed transmission line types with varying line parameters and remains robust, even if the
TW arrival times provided by the TWRs are slightly inaccurate. Furthermore, this method
accounts for bus impedance effects, which affect the attenuation of the TWs, creating a
more realistic scenario.
Following the proposed wide-area method, the thesis addresses the unique challenges of
hybrid lines (a series of non-homogeneous transmission lines). Conventional time-domain
TW-based methods often face complications when the TW encounters varying propagation
speeds, reflections at junctions, and distinct attenuation characteristics across nonhomogeneous
line sections. To overcome these obstacles, the proposed FL technique uses
the frequency-domain properties of TWs. Given that TWs are inherently tied to both
distance and frequency, the proposed method captures the initial TW wavefronts at both
line terminals, applies Clarke’s Transform and the Fast Fourier Transform (FFT) to extract
critical frequency content (FC) from the recorded signals. The FC is then processed
by neural networks (NNs), which identify the faulty section of the line and determine the
precise FL. Utilizing the frequency domain removes time synchronization requirements and
the estimation of propagation velocity.
PSCAD/EMTDC simulations are conducted to validate both proposed methods. The
IEEE 39-bus system is used to validate the robustness of the wide-area FL method by
including different line configurations and added bus impedances to mimic measurement equipment. The method’s ability to handle inaccurate arrival time data and various propagation
velocities will be examined. Simulations will also confirm the accuracy and reliability
of the proposed frequency-domain approach using a hybrid line from Mainland
British Columbia to Vancouver Island. Various fault conditions, such as fault resistances
and inception angles, will be tested. The impact of noise and sampling frequency will also
be examined.