Application of new multi-objective optimization algorithm for EV scheduling in smart grid through the uncertainties

  • WanJun Yin
  • Dinesh Mavaluru
  • Munir Ahmed
  • Mazhar Abbas
  • Aida DarvishanEmail author
Original Research


Ecological and economics issues are caused to give careful consideration to electric vehicles (EV) and sustainable power source assets. One of the proposed answers for increment the impact of these assets, is to utilize the electric vehicles potential. The capability of electric vehicles require planning for Smart Distribution Systems (SDS). Request reaction programs, as a suitable device to utilize endorsers’ potential in ideal administration of the system, gives dynamic nearness of supporters in control framework execution change and these projects, in basic conditions, can give the request prerequisites diminishment, in a brief timeframe. In this work, attempts to presents a multi-objective scheduling of EV based on the sustainable assets in smart grid, cover uncertainty caused by inexhaustible assets and EVs, by considering of the request reaction projects and EV battery stockpiling framework, limit the working expenses and the measure of intensity framework contamination, with enhancing procedures. Improved optimization algorithm is utilized for taking care of the advancing issue. Operating costs dropped much further utilizing monetary model of the demand response and vehicle charge/discharge and smart program in the hours when the load is lower. Effectiveness of proposed method is applied on 33 bus standard power system.


Multi-objective scheduling EV Renewables source Demand response Optimization 



This work is partially supported by the Education Department of Sichuan Province (GZY18C49), The Key Program of Guangyuan Municipal Science and Technology Project (2018ZCZDYF016).


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Copyright information

© Springer-Verlag GmbH Germany, part of Springer Nature 2019

Authors and Affiliations

  • WanJun Yin
    • 1
    • 2
  • Dinesh Mavaluru
    • 3
  • Munir Ahmed
    • 4
  • Mazhar Abbas
    • 4
  • Aida Darvishan
    • 5
    Email author
  1. 1.School of Electronic & Mechanical EngineeringXidian UniversityXi’anPeople’s Republic of China
  2. 2.Sichuan Vocational College of Information TechnologyGuangyuanPeople’s Republic of China
  3. 3.College of Computing and InformaticsSaudi Electronic UniversityRiyadhSaudi Arabia
  4. 4.Department of Management SciencesCOMSATS University IslamabadIslamabadPakistan
  5. 5.Department of Industrial EngineeringUniversity of HoustonHoustonUSA

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