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Hybrid Data-Driven Modeling for an AC/DC Power System Considering Renewable Energy Uncertainty

Jingsen Zhou, Yongtao Chen, Li Ran, Hui Fang, Youqiang Zhang, Xiaojun Zhu, Asem Jaidaa

2022Frontiers in Energy Research11 citationsDOIOpen Access PDF

Abstract

The development of grid-connected renewable energy sources and the widespread use of power electronic devices have exacerbated the uncertain, time-varying, and non-linear characteristics of power systems, making accurate and real-time model design challenging. Modeling for unmodeled dynamics and random characteristics has inherent disadvantages in power system simulation. Conventional converter valve modeling ignores the high-frequency switching condition. This study aims to provide an effective modeling strategy that can accurately characterize the unmodeled dynamics and uncertainty of AC/DC hybrid interconnection systems with significant grid-connected renewable energy capacity. The model-data hybrid-driven modeling concept based on digital twin (DT) enhances the technique’s effectiveness. It models the proportional-integral control link of a voltage source converter (VSC). The time convolution neural network (TCN) algorithm can describe accurately the high-frequency switching state of the switching device and the operation state of renewable energy units that changes dynamically with weather conditions and other variables. The simulation experiments on a real-world power grid demonstrate the proposed modeling method’s efficiency and the hybrid-driven model’s performance.

Topics & Concepts

Renewable energyComputer sciencePower (physics)GridInterconnectionElectric power systemControl theory (sociology)Electronic engineeringElectrical engineeringEngineeringControl (management)TelecommunicationsArtificial intelligencePhysicsGeometryMathematicsQuantum mechanicsElectric Vehicles and InfrastructureMultilevel Inverters and ConvertersElectric and Hybrid Vehicle Technologies