JOURNAL ARTICLE

ANN controlled battery energy storage system for enhancing power system stability

Abstract

This paper describes an application of an adaptive artificial neural network (ANN) controller to continuously control the charging and discharging of a battery energy storage system (BESS) to improve the stability of an electric power system. The simulation studies have included a detailed model of the generator including its excitation controller and governor, as well as a comprehensive BESS model, including the DC battery model and the switch operation associated with the power converter. An online training artificial neural network controller is continuously trained to directly control the BESS operation to damp power system oscillations in various power system operating conditions. Simulation results show that this ANN-controller can adaptively learn and update its control strategy to improve the system stability under different system operating conditions.

Keywords:
Battery (electricity) Energy storage Computer science Electric power system Power (physics) Battery storage Energy (signal processing) Automotive engineering Electrical engineering Engineering Physics

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Citation History

Topics

Power Systems and Renewable Energy
Physical Sciences →  Energy →  Energy Engineering and Power Technology
Microgrid Control and Optimization
Physical Sciences →  Engineering →  Control and Systems Engineering
Frequency Control in Power Systems
Physical Sciences →  Engineering →  Electrical and Electronic Engineering
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