DocumentCode
2475712
Title
Spatial and temporal electric vehicle demand forecasting in Central London
Author
Acha, Salvador ; van Dam, Koen H. ; Shah, Neil
Author_Institution
Imperial Coll. London, London, UK
fYear
213
fDate
10-13 June 213
Firstpage
1
Lastpage
4
Abstract
If electricity infrastructures are to make the most of electric vehicle (EV) technology it is paramount to understand how mobility can enhance the management of assets and the delivery of energy. This research builds on a proof of concept model that focuses on simulating EV movements in urban environments which serve to forecast EV loads in the networks. Having performed this analysis for a test urban environment, this paper details a case study for London using an activity-based model to make predictions of EV movements which can be validated against measured transport data. Results illustrate how optimal EV charging can impact the load profiles of two areas in central London - St. John´s Wood & Marylebone/Mayfair. Transport data highlights the load flexibility a fleet of EVs can have on a daily basis in one of the most stressed networks in the world, while an optimal power flow manages the best times of the day to charge the EVs. This study presents valuable information that can help in begin addressing pressing infrastructure issues such as charging point planning and network control reinforcement.
Keywords
asset management; battery powered vehicles; demand forecasting; load flow; load forecasting; power system management; power system measurement; power system planning; Central London; EV load forecasting; Marylebone-Mayfair; St. John´s Wood; asset management; charging point planning; demand forecasting; energy delivery; network control reinforcement; optimal EV charging; optimal power flow management; spatial electric vehicle; temporal electric vehicle; transport data measurement;
fLanguage
English
Publisher
iet
Conference_Titel
Electricity Distribution (CIRED 2013), 22nd International Conference and Exhibition on
Conference_Location
Stockholm
Electronic_ISBN
978-1-84919-732-8
Type
conf
DOI
10.1049/cp.2013.1002
Filename
6683605
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