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Evaluating different machine learning techniques as surrogate for low voltage grids
2020
Energy Informatics
The transition of the power grid requires new technologies and methodologies, which can only be developed and tested in simulations. Especially larger simulation setups with many levels of detail can become quite slow. Therefore, the number of possible simulation evaluations decreases. One solution to overcome this issue is to use surrogate models, i. e., data-driven approximations of (sub)systems. In a recent work, we built a surrogate model for a low voltage grid using artificial neural
doi:10.1186/s42162-020-00127-3
fatcat:qup76a7yffe2rcffmnhzjeqjbm