Aggregated Representation of Electric Vehicles Population on Charging Points for Demand Response Scheduling

被引:10
作者
Kovacevic, Marko [1 ]
Vasak, Mario [1 ]
机构
[1] Univ Zagreb, Fac Elect Engn & Comp, Lab Renewable Energy Syst, Zagreb, Croatia
关键词
Electric vehicles charging; demand response; EV aggregator; EV prediction; quadratic programming; model predictive control; smart grids; microgrids; BEHAVIOR; BATTERY; ENERGY; MODEL;
D O I
10.1109/TITS.2023.3286012
中图分类号
TU [建筑科学];
学科分类号
0813 ;
摘要
Charging electric vehicles (EVs), whose number is increasing, is a great challenge for the power grid due to the charging load variability. Coordinated charging and schedule optimization with seized demand response opportunities are well-known conceptual solutions to that. Still, the main challenge is to adequately predict availability and parameters of electric vehicles which is crucial for determining the charging schedule and the demand response potential. We propose a method to represent a population of electric vehicles that on the one hand enables prediction via machine learning and on the other it enables an accurate optimization of the charging schedule and demand response ability. The method essence is to use five discrete-time signals spanned over a prediction horizon period which are related to envelopes of feasible charging power and charging states for the EV population on that horizon. We also introduce a robust conversion of any sequence of these signals into individual EVs data. It enables to pose and solve the optimization problem of charging scheduling with included demand response for a predicted population in the introduced representation. The proposed method is validated by schedule optimization using first the original data and then using reconstructed population data. The validation results show that the proposed EV population representation method preserves the valuable information needed for the charging schedule optimization and demand response.
引用
收藏
页码:10869 / 10880
页数:12
相关论文
共 40 条
[1]   Online EV Charging Scheduling With On-Arrival Commitment [J].
Alinia, Bahram ;
Hajiesmaili, Mohammad H. ;
Crespi, Noel .
IEEE TRANSACTIONS ON INTELLIGENT TRANSPORTATION SYSTEMS, 2019, 20 (12) :4524-4537
[2]   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
[3]  
[Anonymous], 2022, SCIPY 1 8
[4]   The investigation of the major factors influencing plug-in electric vehicle driving patterns and charging behaviour [J].
Azadfar, Elham ;
Sreeram, Victor ;
Harries, David .
RENEWABLE & SUSTAINABLE ENERGY REVIEWS, 2015, 42 :1065-1076
[5]   Centralised coordination of EVs charging and PV active power curtailment over multiple aggregators in low voltage networks [J].
Borray, Andres Felipe Cortes ;
Merino, Julia ;
Torres, Esther ;
Garces, Alejandro ;
Mazon, Javier .
SUSTAINABLE ENERGY GRIDS & NETWORKS, 2021, 27
[6]   An ensemble methodology for hierarchical probabilistic electric vehicle load forecasting at regular charging stations [J].
Buzna, Lubos ;
De Falco, Pasquale ;
Ferruzzi, Gabriella ;
Khormali, Shahab ;
Proto, Daniela ;
Refa, Nazir ;
Straka, Milan ;
van der Poel, Gijs .
APPLIED ENERGY, 2021, 283
[7]  
Maurici MC, 2021, IEEE PES INNOV SMART, P736, DOI [10.1109/ISGTEurope52324.2021.9639931, 10.1109/ISGTEUROPE52324.2021.9639931]
[8]   Ensemble machine learning-based algorithm for electric vehicle user behavior prediction [J].
Chung, Yu-Wei ;
Khaki, Behnam ;
Li, Tianyi ;
Chu, Chicheng ;
Gadh, Rajit .
APPLIED ENERGY, 2019, 254
[9]   A review of the population-based and individual-based approaches for electric vehicles in network energy studies [J].
Cortes Borray, Andres Felipe ;
Merino, Julia ;
Torres, Esther ;
Mazon, Javier .
ELECTRIC POWER SYSTEMS RESEARCH, 2020, 189
[10]  
Croatian Energy Regulatory Agency, 2020, DISTRIBUTION SYSTEM