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Data-Driven Online Optimization for Enhancing Power System Oscillation Damping

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arxiv 1901.03167 v2 pith:FB4DA66T submitted 2019-01-10 math.OC

Data-Driven Online Optimization for Enhancing Power System Oscillation Damping

classification math.OC
keywords systemmethodonlineoptimizationdampingdata-drivenoscillationpower
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This paper reports an initial work on power system oscillation damping improvement using a data-driven online optimization method. An online oscillation damping optimization mod-el is proposed and formulated in a form solvable by the data-driven method. Key issues in the online optimization procedures, including the damping sensitivity identification method, its compatibility with the dispatch plans, as well as other practical issues in real large-scale system are discussed. Simulation results based on the 2-area 4-machine system, and the NETS-NYPS 68-bus system verify the feasibility and efficiency of the proposed method. The results also show the capability of the proposed method to bridge the gap between online data analysis and complex optimization for power system dynamics.

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