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A Data-Driven Method for Prediction of Post-Fault Voltage Stability in Hybrid AC/DC Microgrids

Younes Seyedi, Houshang Karimi, Jean Mahseredjian

2022IEEE Transactions on Power Systems35 citationsDOI

Abstract

Faults are extreme events that canadversely affect the voltages in islanded microgrids. This paper provides a new data-driven methodology for timely prediction of the post-fault voltage stability in hybrid AC/DC microgrids. The proposed method performs a binary classification with delay constraints by processing sequences of the short-time mean squared deviations using a deep learning system. The deep learning system consists of a bidirectional long short-term memory network whose output is a probabilistic voltage instability indicator. When the value of the indicator is non-zero, persistent voltage disturbances are most likely to occur even after the fault clearance. The proposed method enables the microgrid to carry out remedial or preventive actions, such as event-triggered protection and control of distributed energy resources (DERs), which are advantageous to the resilient operation of the microgrids. Extensive and detailed electromagnetic transient (EMT) simulations of a low-voltage hybrid AC/DC microgrid benchmark are analyzed, and the results confirm the effectiveness of the proposed method for online prediction and fast voltage regulation.

Topics & Concepts

MicrogridBenchmark (surveying)Control theory (sociology)Fault (geology)Transient (computer programming)VoltageComputer scienceProbabilistic logicDistributed generationEngineeringControl (management)Artificial intelligenceRenewable energyElectrical engineeringGeologyGeographySeismologyGeodesyOperating systemMicrogrid Control and OptimizationIslanding Detection in Power SystemsOptimal Power Flow Distribution
A Data-Driven Method for Prediction of Post-Fault Voltage Stability in Hybrid AC/DC Microgrids | Litcius