Publication | Closed Access
Steady-state inertia estimation using a neural network approach with modal information
36
Citations
7
References
2017
Year
Unknown Venue
Steady-state Inertia EstimationEngineeringMechanical EngineeringAccelerometerModal InformationSystem InertiasMotor ControlStabilityModal AnalysisNonlinear System IdentificationReliability EngineeringKinesiologyNeural Network ApproachSystems EngineeringPower System ControlKinematicsGrid StabilityHealth SciencesIndividual BusesMechatronicsPower System DynamicSystem IdentificationMotion ControlSmart GridMechanical SystemsVibration Control
The inertia of a power grid plays a significant role in maintaining the stability of a system. If the inertia is large enough, stable operating conditions can be maintained during small scale events. As the percentage of power supplied by renewable energy sources increases, the value of inertia in a system will decrease. Therefore, it has become necessary to accurately estimate the inertia in the system. Traditional methods of estimating the inertia make use of fault conditions to allow for the dynamics in the system to be accurately observable. However, this is not optimal as fault conditions are infrequent and undesirable. The method detailed makes use of modal information which can be obtained via synchrophasor measurements to estimate the inertia during steady-state conditions. The results show that while the estimation is not accurate for individual buses, the values calculated for regional and system inertias are more accurate.
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