Day-ahead optimal charging/discharging scheduling for electric vehicles in microgrids

Abstract Microgrid as an important part of smart grid comprises distributed generators (DGs), adjustable loads, energy storage systems (ESSs) and control units. It can be operated either connected with the external system or islanded with the support of ESSs. While the daily output of DGs strongly d...

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Main Authors: Hui Cai, Qiyu Chen, Zhijian Guan, Junhui Huang
Format: Article
Language:English
Published: SpringerOpen 2018-04-01
Series:Protection and Control of Modern Power Systems
Subjects:
Online Access:http://link.springer.com/article/10.1186/s41601-018-0083-3
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spelling doaj-1c18764af02e4380a34ea7d48ab333842020-11-24T23:34:59ZengSpringerOpenProtection and Control of Modern Power Systems2367-26172367-09832018-04-013111510.1186/s41601-018-0083-3Day-ahead optimal charging/discharging scheduling for electric vehicles in microgridsHui Cai0Qiyu Chen1Zhijian Guan2Junhui Huang3State Grid(Suzhou)City and Energy Research InstituteChina Electric Power Research InstituteState Grid Jiangsu Economic Research InstituteState Grid Jiangsu Economic Research InstituteAbstract Microgrid as an important part of smart grid comprises distributed generators (DGs), adjustable loads, energy storage systems (ESSs) and control units. It can be operated either connected with the external system or islanded with the support of ESSs. While the daily output of DGs strongly depends on the temporal distribution of natural resources such as wind and solar, unregulated electric vehicle (EV) charging demand will deteriorate the unbalance between the daily load curve and generation curve. In this paper, a statistic model is presented to describe daily EV charging/discharging behaviors considering the randomness of the initial state of charge (SOC) of EV batteries. The optimization problem is proposed to obtain the economic operation for the microgrid based on this model. In day-ahead scheduling, with the estimated power generation and load demand, the optimal charging/discharging scheduling of EVs during 24 h is achieved by serial quadratic programming. With the optimal charging/discharging scheduling of EVs, the daily load curve can better track the generation curve. The network loss in grid-connected operation mode and required ESS capacity in islanded operation mode are both decreased.http://link.springer.com/article/10.1186/s41601-018-0083-3MicrogridDay-ahead scheduleCharging/discharging strategyElectric vehicle (EV)Serial quadratic programming (SQP)
collection DOAJ
language English
format Article
sources DOAJ
author Hui Cai
Qiyu Chen
Zhijian Guan
Junhui Huang
spellingShingle Hui Cai
Qiyu Chen
Zhijian Guan
Junhui Huang
Day-ahead optimal charging/discharging scheduling for electric vehicles in microgrids
Protection and Control of Modern Power Systems
Microgrid
Day-ahead schedule
Charging/discharging strategy
Electric vehicle (EV)
Serial quadratic programming (SQP)
author_facet Hui Cai
Qiyu Chen
Zhijian Guan
Junhui Huang
author_sort Hui Cai
title Day-ahead optimal charging/discharging scheduling for electric vehicles in microgrids
title_short Day-ahead optimal charging/discharging scheduling for electric vehicles in microgrids
title_full Day-ahead optimal charging/discharging scheduling for electric vehicles in microgrids
title_fullStr Day-ahead optimal charging/discharging scheduling for electric vehicles in microgrids
title_full_unstemmed Day-ahead optimal charging/discharging scheduling for electric vehicles in microgrids
title_sort day-ahead optimal charging/discharging scheduling for electric vehicles in microgrids
publisher SpringerOpen
series Protection and Control of Modern Power Systems
issn 2367-2617
2367-0983
publishDate 2018-04-01
description Abstract Microgrid as an important part of smart grid comprises distributed generators (DGs), adjustable loads, energy storage systems (ESSs) and control units. It can be operated either connected with the external system or islanded with the support of ESSs. While the daily output of DGs strongly depends on the temporal distribution of natural resources such as wind and solar, unregulated electric vehicle (EV) charging demand will deteriorate the unbalance between the daily load curve and generation curve. In this paper, a statistic model is presented to describe daily EV charging/discharging behaviors considering the randomness of the initial state of charge (SOC) of EV batteries. The optimization problem is proposed to obtain the economic operation for the microgrid based on this model. In day-ahead scheduling, with the estimated power generation and load demand, the optimal charging/discharging scheduling of EVs during 24 h is achieved by serial quadratic programming. With the optimal charging/discharging scheduling of EVs, the daily load curve can better track the generation curve. The network loss in grid-connected operation mode and required ESS capacity in islanded operation mode are both decreased.
topic Microgrid
Day-ahead schedule
Charging/discharging strategy
Electric vehicle (EV)
Serial quadratic programming (SQP)
url http://link.springer.com/article/10.1186/s41601-018-0083-3
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AT qiyuchen dayaheadoptimalchargingdischargingschedulingforelectricvehiclesinmicrogrids
AT zhijianguan dayaheadoptimalchargingdischargingschedulingforelectricvehiclesinmicrogrids
AT junhuihuang dayaheadoptimalchargingdischargingschedulingforelectricvehiclesinmicrogrids
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