Interleaving Physics- And Data-Driven Models For Power System Transient Dynamics

ELECTRIC POWER SYSTEMS RESEARCH(2020)

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摘要
The paper explores interleaved and coordinated refinement of physicsand data-driven models in describing transient phenomena in large-scale power systems. We develop and study an integrated analytical and computational data-driven gray box environment needed to achieve this aim. Main ingredients include computational differential geometry-based model reduction, optimization-based compressed sensing, and a finite approximation of the Koopman operator. The proposed two-step procedure (the model reduction by differential geometric (information geometry) tools, and data refinement by the compressed sensing and Koopman theory based dynamics prediction) is illustrated on the multi-machine benchmark example of IEEE 14-bus system with renewable sources, where the results are shown for doubly-fed induction generator (DFIG) with local measurements in the connection point. The algorithm is directly applicable to identification of other dynamic components (for example, dynamic loads).
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关键词
Power system dynamics, Modeling, Physics-based models, Data-driven models, Compressed sensing, Koopman modes
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