Analysis of Energy Consumption at Slow Charging Infrastructure for Electric Vehicles

被引:13
作者
Straka, Milan [1 ,2 ]
Carvalho, Rui [3 ,4 ,5 ]
Van der Poel, Gijs [6 ]
Buzna, L'ubos [1 ,7 ]
机构
[1] Univ Zilina, Dept Math Methods & Operat Res, Zilina 01026, Slovakia
[2] Univ Zilina, Div Informat & Commun Technol, Univ Sci Pk, Zilina 01026, Slovakia
[3] Univ Durham, Dept Engn, Durham DH1 3LE, England
[4] Univ Durham, Durham Energy Inst, Durham DH1 3LE, England
[5] Univ Durham, Inst Data Sci, Durham DH1 3LE, England
[6] ElaadNL, NL-6812 AR Arnhem, GL, Netherlands
[7] Univ Zilina, Dept Int Res Projects ERAdiate, Zilina 01026, Slovakia
关键词
Energy consumption; Predictive models; Electric vehicle charging; Charging stations; Automobiles; Load modeling; Roads; Electric vehicles; charging infrastructure; energy consumption; variable selection; STATIONS; GIS;
D O I
10.1109/ACCESS.2021.3071180
中图分类号
TP [自动化技术、计算机技术];
学科分类号
0812 ;
摘要
Here, we develop a data-centric approach to analyse which activities, functions, and characteristics of the environment surrounding the slow charging infrastructure impact the distribution of the electricity consumed at slow charging infrastructure. We analysed the probability distribution of energy consumption and its relation to indicators characterising charging events to gain basic insights. The energy consumption can be satisfactorily modelled by a transformed beta distribution and the number of charging transactions is the driving factor among the characteristics constituting the energy consumption. We collected geospatial datasets and prepared a large number of candidate features modelling the spatial context in which the charging infrastructure operates. Using statistical methods, we identified and interpreted a relatively small subset of the most influential features correlated with energy consumption. The majority of these features are related to the economic prosperity of residents. Residents and businesses with high (low) income, situated nearby charging infrastructure, are linked to a positive (negative) impact on energy consumption. Similarly, charging infrastructure located close to expensive newly built housing shows higher energy consumption. The largest adverse impact has the high concentration of residents receiving social assistance. By applying the methodology to a specific charging infrastructure class, e.g. determined by the used rollout strategy, we differentiated the selected features. Business types, working sector of residents and public venues in the proximity are linked to higher consumption of energy at charging infrastructure deployed strategically. Characteristics linked with the age structure of the population are linked to the energy consumption at charging infrastructure placed based on the demand. Data collection and data processing are among the most time-consuming activities. The paper provides valuable insights into which data to collect and use as features when developing prediction models to inform charging infrastructure deployment and planning of power grids.
引用
收藏
页码:53885 / 53901
页数:17
相关论文
共 54 条
[21]   Identifying key variables and interactions in statistical models of building energy consumption using regularization [J].
Hsu, David .
ENERGY, 2015, 83 :144-155
[22]  
James G, 2013, SPRINGER TEXTS STAT, V103, P1, DOI 10.1007/978-1-4614-7138-7_1
[23]  
Khaki B, 2018, IEEE POW ENER SOC GE
[24]  
Kuhn M., 2013, Applied Predictive Modeling, V26
[25]   Time-Series Modeling of Aggregated Electric Vehicle Charging Station Load [J].
Louie, Henry M. .
ELECTRIC POWER COMPONENTS AND SYSTEMS, 2017, 45 (14) :1498-1511
[26]   EV Idle Time Estimation on Charging Infrastructure, Comparing Supervised Machine Learning Regressions [J].
Lucas, Alexandre ;
Barranco, Ricardo ;
Refa, Nazir .
ENERGIES, 2019, 12 (02)
[27]   Indicator-Based Methodology for Assessing EV Charging Infrastructure Using Exploratory Data Analysis [J].
Lucas, Alexandre ;
Prettico, Giuseppe ;
Flammini, Marco Giacomo ;
Kotsakis, Evangelos ;
Fulli, Gianluca ;
Masera, Marcelo .
ENERGIES, 2018, 11 (07)
[28]  
M. V. B. Z. E. Koninkrijksrelaties, LIVEABILITY METER
[29]   Estimation of the building energy use intensity in the urban scale by integrating GIS and big data technology [J].
Ma, Jun ;
Cheng, Jack C. P. .
APPLIED ENERGY, 2016, 183 :182-192
[30]   Forecasting the EV charging load based on customer profile or station measurement? [J].
Majidpour, Mostafa ;
Qiu, Charlie ;
Chu, Peter ;
Pota, Hemanshu R. ;
Gadh, Rajit .
APPLIED ENERGY, 2016, 163 :134-141