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Load Modeling and Identification Based on Ant Colony Algorithms for EV Charging Stations

  • Shaobing Yang
  • , Mingli Wu
  • , Xiu Yao
  • , Jiuchun Jiang

Research output: Contribution to journalArticlepeer-review

66 Scopus citations

Abstract

Charging load modeling for electric vehicles (EVs) is a challenge due to its complexity. However, it serves as a foundation for related studies such as the impact assessment of EV charging behaviors on power system and power demand side management for EVs. The decisive factors affecting charging load profile include the power curve, the duration, and the start time of each charging process. This paper introduces the charging traffic flow (CTF) as a discrete sequence to describe charging start events, where CTF contains both spatial and temporal properties of a charging load. A set of equations are proposed to build a probabilistic load model, followed by simulation iteration steps using a flow chart. The parameter identification method based on ant colony (AC) algorithms is then studied in depth, and the pheromone update and the state transition probability are used to implement route finding and city selection, respectively. Finally, an actual case of battery swapping station is applied to verify the proposed model in both identification and simulation. The results show that the model has satisfactory accuracy and applicability.

Original languageEnglish
Article number6889044
Pages (from-to)1997-2003
Number of pages7
JournalIEEE Transactions on Power Systems
Volume30
Issue number4
DOIs
StatePublished - Jul 1 2015

Keywords

  • Ant colony algorithms
  • charging station
  • electric vehicles
  • load model

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