Electric vehicle charging and discharging coordination on distribution network using multi-objective particle swarm optimization and fuzzy decision making

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Abstract

This paper proposed a optimal strategy for coordinated operation of electric vehicles (EVs) charging and discharging with wind-thermal system. By aggregating a large number of EVs, the huge total battery capacity is sufficient to stabilize the disturbance of the transmission grid. Hence, a dynamic environmental dispatch model which coordinates a cluster of charging and discharging controllable EV units with wind farms and thermal plants is proposed. A multi-objective particle swarm optimization (MOPSO) algorithm and a fuzzy decision maker are put forward for the simultaneous optimization of grid operating cost, CO2 emissions, wind curtailment, and EV users' cost. Simulations are done in a 30 node system containing three traditional thermal plants, two carbon capture and storage (CCS) thermal plants, two wind farms, and six EV aggregations. Contrast of strategies under different EV charging/discharging price is also discussed. The results are presented to prove the effectiveness of the proposed strategy.

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APA

Liu, D., Wang, Y., & Shen, Y. (2016). Electric vehicle charging and discharging coordination on distribution network using multi-objective particle swarm optimization and fuzzy decision making. Energies, 9(3). https://doi.org/10.3390/en9030186

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