Modeling and Experimental Verification of Adaptive 100% Stator Ground Fault Protection Schemes for Synchronous Generators
Amir Negahdari

TL;DR
This paper develops and experimentally verifies an adaptive protection scheme for detecting ground faults in synchronous generator stator windings, demonstrating improved reliability over existing methods through comprehensive lab testing.
Contribution
It introduces a novel adaptive protection scheme for stator ground faults, validated with real-world experimental setup and compared to existing non-adaptive schemes.
Findings
Adaptive scheme detects faults effectively in experiments
Higher reliability compared to traditional protection methods
Modeling combines FEA and magnetic circuit analysis
Abstract
Salient pole synchronous generators as the main component of an electricity generation station should be carefully maintained and their operation has to be monitored such that any damage on them is avoided. Otherwise, the generating station might experience frequent shut downs which results in electricity generation interruptions and high costs associated with repairing and compensation of lack of energy. In this sense, many protective schemes focusing on a variety of synchronous generator faults have already been proposed and are still modified and developed to further enhance the quality of protection. In this thesis, synchronous generator stator windings to ground fault is studied as one of the most common and crucial faults in these machines. Numerous methods of stator winding to ground fault protection schemes are also reported in the literature. Third harmonic differential voltage…
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Taxonomy
TopicsPower Systems Fault Detection · Machine Fault Diagnosis Techniques · Power System Optimization and Stability
