Electric Vehicle User Behavior Prediction using Learning-based Approaches

被引:12
作者
Khan, Sara [1 ]
Brandherm, Boris [2 ]
Swamy, Anilkumar [1 ]
机构
[1] Saarland Univ, Saarland Informat Campus, Saarbrucken, Germany
[2] German Res Ctr Artificial Intelligence, Saarbrucken, Germany
来源
2020 IEEE ELECTRIC POWER AND ENERGY CONFERENCE (EPEC) | 2020年
关键词
electric vehicles; deep learning; global warming; NEURAL-NETWORKS; LOAD; ALGORITHM; MODEL;
D O I
10.1109/EPEC48502.2020.9320065
中图分类号
TE [石油、天然气工业]; TK [能源与动力工程];
学科分类号
0807 ; 0820 ;
摘要
One of the main barrier for electric vehicles to be successful in real world is the need for expensive charging infrastructures. The key aspect of EV is time required to charge the battery to full capacity is far less than the time duration for which the car remains available for charging. Smart charging system can leverage this aspect to efficiently manage the load demand, which in turn alleviates the need for more than necessary number of expensive charging infrastructures. EV user behaviour prediction is vital for building EV Adaptive Charging System. In the past there have been several statistical and ML methods that tries to predict EV user behavior. But with the influx of huge amount of EV user data and deep learning's (DL) ability to perform well on such large data enables us to build DL based methods to predict EV user behavior. In this paper, we predict EV user behavior using ML and DL methods and compare the results and infer the insights for difference in performance. By comparing at various settings between machine learning (ML) and DL methods, we found that K-Nearest Neighbours outperforms Neural Networks with a very minute difference of 0.031 in Mean Absolute Error metric.
引用
收藏
页数:5
相关论文
共 39 条
[1]   State-of-the-art in artificial neural network applications: A survey [J].
Abiodun, Oludare Isaac ;
Jantan, Aman ;
Omolara, Abiodun Esther ;
Dada, Kemi Victoria ;
Mohamed, Nachaat AbdElatif ;
Arshad, Humaira .
HELIYON, 2018, 4 (11)
[2]  
ACN, 2019, ACN DAT PUBL EV CHAR
[3]   ARIMA-based decoupled time series forecasting of electric vehicle charging demand for stochastic power system operation [J].
Amini, M. Hadi ;
Kargarian, Amin ;
Karabasoglu, Orkun .
ELECTRIC POWER SYSTEMS RESEARCH, 2016, 140 :378-390
[4]  
[Anonymous], 2019, HOLIDAY SCHEDULE
[5]  
[Anonymous], 2019, National oceanic and atmospheric administration
[6]   Grid serving Deployment of Smart Meter Data in the Context of Distribution Grid Automation [J].
Azad, Schaugar ;
Schnittmann, Evgeny ;
Ludwig, Marcel ;
Zdrallek, Markus ;
Zimpel, Julian ;
Schalk, Alexander ;
Brandherm, Boris ;
Deru, Matthieu ;
Ndiaye, Alassane ;
Neusel-Lange, Nils .
PROCEEDINGS OF 2019 IEEE PES INNOVATIVE SMART GRID TECHNOLOGIES EUROPE (ISGT-EUROPE), 2019,
[7]  
Bhandarkar S., 2013, VEHICULAR POLLUTION, P33
[8]  
Bianchi FM, 2017, RECURRENT NEURAL NET, DOI DOI 10.1007/978-3-319-70338-1
[9]   KERNEL DENSITY ESTIMATION VIA DIFFUSION [J].
Botev, Z. I. ;
Grotowski, J. F. ;
Kroese, D. P. .
ANNALS OF STATISTICS, 2010, 38 (05) :2916-2957
[10]   Optimal Deep Learning LSTM Model for Electric Load Forecasting using Feature Selection and Genetic Algorithm: Comparison with Machine Learning Approaches [J].
Bouktif, Salah ;
Fiaz, Ali ;
Ouni, Ali ;
Serhani, Mohamed Adel .
ENERGIES, 2018, 11 (07)