• DocumentCode
    62926
  • Title

    Predictive Algorithm for Optimizing Power Flow in Hybrid Ultracapacitor/Battery Storage Systems for Light Electric Vehicles

  • Author

    Laldin, Omar ; Moshirvaziri, Mazhar ; Trescases, Olivier

  • Author_Institution
    Purdue Univ., West Lafayette, IN, USA
  • Volume
    28
  • Issue
    8
  • fYear
    2013
  • fDate
    Aug. 2013
  • Firstpage
    3882
  • Lastpage
    3895
  • Abstract
    This study deals with the optimal control of hybrid energy storage systems for electric vehicle applications. These storage systems can capitalize on the high specific energy of Lithium-Ion batteries and the high specific power of modern ultracapacitors. The new predictive algorithm uses a state-based approach inspired by power systems optimization, organized as a probability-weighted Markov process to predict future load demands. Decisions on power sharing are made in real time, based on the predictions and probabilities of state trajectories along with associated system losses. Detailed simulations comparing various power sharing algorithms are presented, along with converter-level simulations presenting the response characteristics of power sharing scenarios. The full hybrid storage system along with the mechanical drivetrain is implemented and validated experimentally on a 500 W, 50 V system with a programmable drive cycle having a strong regenerative component. It is experimentally shown that the hybrid energy storage system runs more efficiently and captures the excess regenerative energy that is otherwise dissipated in the mechanical brakes due to the battery´s limited charge current capability.
  • Keywords
    DC-DC power convertors; Markov processes; battery management systems; battery powered vehicles; hybrid electric vehicles; hybrid power systems; lithium; load flow control; load forecasting; losses; optimal control; power system control; predictive control; probability; regenerative braking; secondary cells; supercapacitors; transport control; DC-DC power converter; Li; battery limited charge current capability; battery management; converter-level simulation; hybrid ultracapacitor-battery storage system; light electric vehicle; lithium-ion battery; load demand prediction; mechanical brake dissipation; mechanical drivetrain; optimal control; power 500 W; power flow optimization; power sharing algorithm; power system optimization; predictive algorithm; probability-weighted Markov process; programmable drive cycle; regenerative component; state-based approach; system loss association; voltage 50 V; Batteries; Capacitance; Prediction algorithms; Real-time systems; Supercapacitors; System-on-a-chip; Battery management; dc–dc converters; digital control; electric vehicles (EVs); energy management; hybrid energy storage; ultracapacitors (u-caps);
  • fLanguage
    English
  • Journal_Title
    Power Electronics, IEEE Transactions on
  • Publisher
    ieee
  • ISSN
    0885-8993
  • Type

    jour

  • DOI
    10.1109/TPEL.2012.2226474
  • Filename
    6340349