Seite - 201 - in Emerging Technologies for Electric and Hybrid Vehicles
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energies
Article
RobustPeak-ShavingforaNeighborhoodwith
ElectricVehicles
MarcoE.T.Gerards*andJohannL.Hurink
FacultyofElectricalEngineering,MathematicsandComputerScience,7500AEEnschede,TheNetherlands;
j.l.hurink@utwente.nl
* Correspondence:m.e.t.gerards@utwente.nl;Tel.: +31-53-489-4896
AcademicEditor:ChunhuaLiu
Received: 4May2016;Accepted: 21 July2016;Published: 28 July2016
Abstract: DemandSideManagement (DSM) is apopular approach for grid-awarepeak-shaving.
Themost commonly usedDSMmethods either have no look ahead feature and risk deploying
flexibility too early, or theyplan aheadusingpredictions,which are in general not very reliable.
To counter this, aDSMapproach is presented that does not rely ondetailed power predictions,
butonlyusesa feweasytopredict characteristics. Byusingthesecharacteristicsalone,nearoptimal
results can be achieved for electric vehicle (EV) charging, and a boundon themaximal relative
deviation isgiven. This result is extended toanalgorithmthat controls agroupofEVssuch that
a transformerpeak isavoided,whilesimultaneouslykeepingthe individualhouseprofilesasflatas
possibletoavoidcableoverloadingandforimprovedpowerquality. Thisapproachisevaluatedusing
differentdatasets tocompare theresultswith thestate-of-the-art research. Theevaluationshowsthat
thepresentedapproachiscapableofpeak-shavingatthetransformerlevel,whilekeepingthevoltages
wellwithin legalbounds,keepingthecable loadlowandobtaining lowlosses. Furtheradvantages
of themethodologyarea lowcommunicationoverhead, lowcomputational requirementsandease
of implementation.
Keywords: adaptivescheduling;demandsidemanagement;electricvehicles;optimalscheduling;
smartgrids
1. Introduction
In the future, we expect an increasing penetration of electric vehicles, photovoltaic panels,
heatpumpsandwindturbines.Asespeciallyheatpumpsandelectricvehiclescreaterelatively large
andsynchronizedpeaks,oftenat timeswhenthere is little renewableenergyavailable, thebalance
betweenproductionandconsumptionofelectricitybecomesmoreandmoreanurgent issue.
To counter the problems that arise due to this trend (for a survey, see [1]), Demand Side
Management (DSM) techniques can be deployed to prevent peaks. Here, DSM is the collective
termforasetof techniquesthatcontrol theproductionorconsumptionwithinthecustomers’premises.
Acentralentity (e.g., thenetworkoperator) requestscustomers,viaasteeringsignal, toadapt their
production or consumption in order to shape the load profile of a certain subgroup of the grid
(e.g., agroupofhouses). Thesecustomerscaneitheradapt theirbehaviormanually,or install adevice
that is referredtoasaHomeEnergyManagementSystem(HEMS),whichmakessuchdecisionson
theirbehalf. In the latter situation, theHEMSshouldstartappliances (referredtoassmartappliances)
whentheconsumptionshouldbe increased,orshouldadvanceordelay theuseofsuchanappliance
whentheconsumptionshouldbedecreased. Inaddition,energystorage (e.g., batteries) canbeusedto
mitigateasurplusof renewableenergybycharging,andapeakintheconsumptionbydischarging.
In thisarticle,wefocusonelectricvehiclesas they introducebothasignificant load,andprovidea lot
offlexibility.
Energies 2016,9, 594;doi:10.3390/en9080594 www.mdpi.com/journal/energies201
Emerging Technologies for Electric and Hybrid Vehicles
- Titel
- Emerging Technologies for Electric and Hybrid Vehicles
- Herausgeber
- MDPI
- Ort
- Basel
- Datum
- 2017
- Sprache
- englisch
- Lizenz
- CC BY-NC-ND 4.0
- ISBN
- 978-3-03897-191-7
- Abmessungen
- 17.0 x 24.4 cm
- Seiten
- 376
- Schlagwörter
- electric vehicle, plug-in hybrid electric vehicle (PHEV), energy sources, energy management strategy, energy-storage system, charging technologies, control algorithms, battery, operating scenario, wireless power transfer (WPT)
- Kategorie
- Technik