Re-enacting rare multi-modal real-world grid events to generate ML training data sets

PROCEEDINGS OF 2021 IEEE 30TH INTERNATIONAL SYMPOSIUM ON INDUSTRIAL ELECTRONICS (ISIE)(2021)

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摘要
Today's energy grids are facing huge challenges caused by the growing diversity of energy consumers and producers as well as an ongoing increase of renewable energy sources and e-mobility. Hence, it is essential that the grids continuously evolve by introducing new monitoring, protection and optimization concepts including machine learning (ML) approaches. To overcome the lack of existing monitoring data for rare real-world grid events, this paper presents a concept for generating training data sets for ML approaches based on a multi-modal grid simulation tool. The simulation tool as well as the proposed semi-automated data generation approach are introduced and the concept is verified based on a real-world battery storage maintenance event.
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关键词
Smart grids, Simulation, Deep learning
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