Data-driven Protection of Transformers, Phase Angle Regulators, and
Transmission Lines in Interconnected Power Systems
- URL: http://arxiv.org/abs/2302.03826v1
- Date: Wed, 8 Feb 2023 01:44:00 GMT
- Title: Data-driven Protection of Transformers, Phase Angle Regulators, and
Transmission Lines in Interconnected Power Systems
- Authors: Pallav Kumar Bera
- Abstract summary: This dissertation highlights the growing interest in and adoption of machine learning (ML) approaches for fault detection in modern power grids.
ML-based solutions and tools to carry out effective data processing and analysis are becoming preeminent.
- Score: 0.0
- License: http://creativecommons.org/licenses/by/4.0/
- Abstract: This dissertation highlights the growing interest in and adoption of machine
learning (ML) approaches for fault detection in modern power grids. Once a
fault has occurred, it must be identified quickly and preventative steps must
be taken to remove or insulate it. As a result, detecting, locating, and
classifying faults early and accurately can improve safety and dependability
while reducing downtime and hardware damage. ML-based solutions and tools to
carry out effective data processing and analysis to aid power system operations
and decision-making are becoming preeminent with better system condition
awareness and data availability. Power transformers, Phase Shift Transformers
or Phase Angle Regulators, and transmission lines are critical components in
power systems, and ensuring their safety is a primary issue. Differential
relays are commonly employed to protect transformers, whereas distance relays
are utilized to protect transmission lines. Magnetizing inrush, overexcitation,
and current transformer saturation make transformer protection a challenge.
Furthermore, non-standard phase shift, series core saturation, low
turn-to-turn, and turn-to-ground fault currents are non-traditional problems
associated with Phase Angle Regulators. Faults during symmetrical power swings
and unstable power swings may cause mal-operation of distance relays and
unintentional and uncontrolled islanding. The distance relays also mal-operate
for transmission lines connected to type-3 wind farms. The conventional
protection techniques would no longer be adequate to address the above
challenges due to limitations in handling and analyzing massive amounts of
data, limited generalizability, incapability to model non-linear systems, etc.
These limitations of differential and distance protection methods bring forward
the motivation of using ML in addressing various protection challenges.
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