作者
Milan Straka, Ľuboš Buzna, Nazir Refa, Santiago Mazuelas
发表日期
2022/12/1
期刊
International Journal of Electrical Power & Energy Systems
卷号
143
页码范围
108486
出版商
Elsevier
简介
Climate change prompts humanity to look for decarbonisation opportunities, and a viable option is to supply electric vehicles with renewable energy. The stochastic nature of charging demand and renewable generation requires intelligent charging driven by predictions of charging behaviour. The conventional prediction models of charging behaviour usually minimise the quadratic loss function. Moreover, the adequacy of predictions is almost solely evaluated by accuracy measures, disregarding the consequences of prediction losses in an application context. Here, we study the role of asymmetric prediction losses which enable balancing the over- and under-predictions and adjust predictions to smart charging algorithms. Using the main classes of machine learning methods, we trained prediction models of the connection duration and compared their performance for various asymmetries of the loss function. In …
引用总数
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M Straka, Ľ Buzna, N Refa, S Mazuelas - International Journal of Electrical Power & Energy …, 2022