DESL-EPFL / Level-3-EV-charging-datasetLinks
The data refer to a level 3 electric vehicle (EV) charging station located in south western Switzerland. The data has been measured from April 12th 2022 to July 4th 2023.
☆14Updated 5 months ago
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