Evaluating the Predictability of Future Energy Consumption - Application of Statistical Classification Models to Data from EV Charging Points
暂无分享,去创建一个
The overall purpose of our study has been to evaluate the predictability of future energy consumption analysing the electric mobility in the Netherlands. The climate and energy framework, the European energy production and main developments, as well as the European targets and policy objectives to reduce the current CO2 emissions were first assessed. Then, a deeper look was taken at electric mobility and at Electric Vehicles (EVs). The adoption and development of EVs in the European Union and charging infrastructure were taken into account. The Dutch energy production and emissions, as well as, the mobility in the country and its infrastructure were investigated. Previous studies about electric vehicles and charging points have addressed the predictability of future energy consumption in larger areas to only very limited extent, so our research work has concentrated on this gap. A large real-world dataset was used as a basis to create statistical models, in order to study the users’ behaviour within the charging points infrastructure and to evaluate the predictability of future energy consumption of the charging points in selected regions of the Netherlands. Results vary across different regions with the number of charging points, but suggest that statistical models could be useful in the management of energy production to optimize the dispatch of energy sources.
[1] Nicholas Jenkins,et al. A data-driven approach for characterising the charging demand of electric vehicles: A UK case study , 2016 .
[2] D. Bertsimas,et al. Best Subset Selection via a Modern Optimization Lens , 2015, 1507.03133.
[3] Kai Yang,et al. A data-driven approach to identify households with plug-in electrical vehicles (PEVs) , 2015 .
[4] Manuel A. Matos,et al. Global against divided optimization for the participation of an EV aggregator in the day-ahead electricity market. Part I: Theory , 2013 .