Transport systems are expected to widely shift towards electric propulsion in the next decade. The diffusion of Electrical Vehicles (EVs) however creates great challenges; among the others, EV charging patterns are non-controllable, thus it is mandatory to have at disposal high quality EV load forecasts in order to reach the operational excellence of networks with a wide EV penetration. Relevant literature on EV load forecasting is quite scarce, compared to other load forecasting applications; this paper aims at filling this gap by providing a comparative study between the performances of time series and machine learning approaches. The comparative analysis is performed on actual EV load data, extracted from a dataset collected at 1700 charging stations in the Netherlands. The results of numerical experiments are given in terms of aggregate energy consumption for lead times up to 28 days ahead, in order to fully suit the time horizons typical of distribution systems management.

Electric vehicle load forecasting: A comparison between time series and machine learning approaches / Buzna, Lubos; De Falco, Pasquale; Khormali, Shahab; Proto, Daniela; Straka, Milan. - (2019), pp. 1-5. (Intervento presentato al convegno 2019 1st International Conference on Energy Transition in the Mediterranean Area (SyNERGY MED) tenutosi a Cagliari (Italy)) [10.1109/SyNERGY-MED.2019.8764110].

Electric vehicle load forecasting: A comparison between time series and machine learning approaches

Proto, Daniela;
2019

Abstract

Transport systems are expected to widely shift towards electric propulsion in the next decade. The diffusion of Electrical Vehicles (EVs) however creates great challenges; among the others, EV charging patterns are non-controllable, thus it is mandatory to have at disposal high quality EV load forecasts in order to reach the operational excellence of networks with a wide EV penetration. Relevant literature on EV load forecasting is quite scarce, compared to other load forecasting applications; this paper aims at filling this gap by providing a comparative study between the performances of time series and machine learning approaches. The comparative analysis is performed on actual EV load data, extracted from a dataset collected at 1700 charging stations in the Netherlands. The results of numerical experiments are given in terms of aggregate energy consumption for lead times up to 28 days ahead, in order to fully suit the time horizons typical of distribution systems management.
2019
978-1-7281-3087-3
Electric vehicle load forecasting: A comparison between time series and machine learning approaches / Buzna, Lubos; De Falco, Pasquale; Khormali, Shahab; Proto, Daniela; Straka, Milan. - (2019), pp. 1-5. (Intervento presentato al convegno 2019 1st International Conference on Energy Transition in the Mediterranean Area (SyNERGY MED) tenutosi a Cagliari (Italy)) [10.1109/SyNERGY-MED.2019.8764110].
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Utilizza questo identificativo per citare o creare un link a questo documento: https://hdl.handle.net/11588/757241
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