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penetration without requiring strengthening of the distribution network infras-
tructure. Furthermore, by taking into account TOU pricing a significant reduc-
tion in the cost of EV charging can be achieved for the customer. Thus, the
proposed AIMD based charging strategy has the potential to provide significant
benefits to both EV owners and to utility companies.
Acknowledgments. The authors would like to thank the Irish Social Science
Data Archive (ISSDA) for providing access to the CER Smart Metering Project
data. The authors also gratefully acknowledge funding for this research provided
by NUI Maynooth (Doctoral Teaching Scholarships Programme) and Science
Foundation Ireland (grant number 09/SRC/E1780).
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