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A neural network-based power system stabilizer using power flow characteristics
53
Citations
14
References
1996
Year
Power EngineeringEngineeringStabilization TechniqueStabilityPower Flow DynamicsSystems EngineeringPower System ControlGrid StabilityPower SystemsPower System AnalysisElectrical EngineeringComputer EngineeringPower Flow CharacteristicsPower System DynamicMulti-machine Power SystemSmart GridConventional PssMechanical SystemsVibration Control
A neural network-based power system stabilizer (neuro-PSS) is designed for a generator connected to a multi-machine power system utilizing the nonlinear power flow dynamics. The use of power flow dynamics provides a PSS for a wide range of operation with reduced size neural networks. The neuro-PSS consists of two neural networks: neuro-identifier and neuro-controller. The low-frequency oscillation is modeled by the neuro-identifier using the power flow dynamics, then a generalized backpropagation-through-time (GBTT) algorithm is developed to train the neuro-controller. The simulation results show that the neuro-PSS designed in this paper performs well with good damping in a wide operation range compared with the conventional PSS.
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