Smart Control Of An Electric Vehicle For Ancillary Service In Dc Microgrid

IEEE ACCESS(2020)

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摘要
This article presents a two-stage framework for optimal Electric Vehicle (EV) charging/discharging strategy for DC Microgrid (MG) with Distributed Generators (DGs). A multi-objective optimisation task aimed at minimising system losses and EV battery degradation with Vehicle-to-Grid (V2G) peak shaving service has been realised. This coordinated EV integration into the DCMG was formulated as a directed weighted single source shortest path problem that was solved using a modified Dijkstra's algorithm. The weights of the edges were obtained using primal-dual interior point method. The proposed framework has been experimentally verified using simulations with a test DCMG system with practical IEEE European low voltage test feeder load profiles. Results show realisation of peak demand shaving leveraging on EV discharge with minimal on-board battery degradation as well as reduced system losses. It is also shown that the proposed two-stage framework reduces the battery state of charge (SOC) sample space requirements in the analysis, thus, reducing the computational burden.
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关键词
Batteries, Optimization, State of charge, Vehicle-to-grid, Resistance, Load modeling, Microgrids, EV integration, dc microgrid, control, V2G, battery degradation, multi-objective optimisation, optimal power flow, modified Dijkstra&#8217, s algorithm, power losses
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