Title :
Demand side management verification system for electric vehicles
Author :
Ferdowsi, M. ; Monti, Antonello ; Ponci, Ferdinanda ; Fathi, G.
Author_Institution :
E.ON Energy Res. Center, Inst. for Autom. of Complex Power Syst., E.ON ERC, RWTH Aachen Univ., Aachen, Germany
Abstract :
Large-scale grid integration of plug in Electric Vehicles (EVs) brings in many challenges and opportunities for electric power systems. Considering their relatively high power demand and flexibility in terms of charging time, EVs can offer opportunities for demand side management. In particular, the socalled EV Aggregators or Charge Optimization Systems (COS) can optimize the charging schedule of EVs with respect to a number of factors, such as available renewable generation and electricity market prices. However, the optimized schedules must be validated to assure that they do not lead to violation of any operational constraint of the power system. To this aim, major changes in the charging schedules to be applied by COS must be checked with the system operator. This paper describes an EV schedule verification system based on artificial neural networks. This system verifies if the COS schedules can be directly applied or if some modifications are necessary. The proposed approach is tested on two sample distribution systems.
Keywords :
demand side management; electric vehicles; large scale integration; neural nets; optimisation; power distribution economics; power engineering computing; power grids; power markets; COS schedules; EV aggregators; EV schedule verification system; artificial neural networks; charging schedule optimization system; charging time; demand side management verification system; distribution systems; electric power systems; electric vehicles; electricity market prices; high power demand; high power flexibility; large-scale grid integration; operational constraint; renewable generation; system operator; Artificial neural networks; Electric vehicles; Load flow; Loading; Schedules; Training; Voltage measurement; artificial neural networks; electric vehicles; network topology; power distribution; power systems measurements;
Conference_Titel :
Applied Measurements for Power Systems Proceedings (AMPS), 2014 IEEE International Workshop on
Conference_Location :
Aachen
DOI :
10.1109/AMPS.2014.6947724