• DocumentCode
    39771
  • Title

    Intelligent Hybrid Vehicle Power Control—Part II: Online Intelligent Energy Management

  • Author

    Murphey, Yi L. ; Jungme Park ; Kiliaris, L. ; Kuang, Ming L. ; Masrur, Md Abul ; Phillips, Anthony M. ; Qing Wang

  • Author_Institution
    Dept. of Electr. & Comput. Eng., Univ. of Michigan, Dearborn, MI, USA
  • Volume
    62
  • Issue
    1
  • fYear
    2013
  • fDate
    Jan. 2013
  • Firstpage
    69
  • Lastpage
    79
  • Abstract
    This is the second paper in a series of two that describe our research in intelligent energy management in a hybrid electric vehicle (HEV). In the first paper, we presented the machine-learning framework ML_EMO_HEV, which was developed for learning the knowledge about energy optimization in an HEV. The framework consists of machine-learning algorithms for predicting driving environments and generating the optimal power split of the HEV system for a given driving environment. In this paper, we present the following three online intelligent energy controllers: 1) IEC_HEV_SISE; 2) IEC_HEV_MISE ; and 3) IEC_HEV_MIME. All three online intelligent energy controllers were trained within the machine-learning framework ML_EMO_HEV to generate the best combination of engine power and battery power in real time such that the total fuel consumption over the whole driving cycle is minimized while still meeting the driver´s demand and the system constraints, including engine, motor, battery, and generator operation limits. The three online controllers were integrated into the Ford Escape hybrid vehicle model for online performance evaluation. Based on their performances on ten test drive cycles provided by the Powertrain Systems Analysis Toolkit library, we can conclude that the roadway type and traffic congestion level specific machine learning of optimal energy management is effective for in-vehicle energy control. The best controller, IEC_HEV_MISE, trained with the optimal power split generated by the DP optimization algorithm with multiple initial SOC points and single ending point, can provide fuel savings ranging from 5% to 19%. Together, these two papers cover the innovative technologies for modeling power flow, mathematical background of optimization in energy management, and machine-learning algorithms for generating intelligent energy controllers for quasioptimal energy flow in a power-split HEV.
  • Keywords
    dynamic programming; engines; hybrid electric vehicles; intelligent control; learning (artificial intelligence); power control; power engineering computing; Ford Escape hybrid vehicle model; IEC_HEV_MIME; IEC_HEV_MISE; IEC_HEV_SISE; ML_EMO_HEV; Powertrain Systems Analysis Toolkit library; battery power; driving environment prediction; dynamic programming optimization algorithm; energy optimization; engine power; fuel consumption; generator operation limit; hybrid electric vehicle; in-vehicle energy control; intelligent hybrid vehicle power control; machine learning algorithm; motor; online intelligent energy controller; online intelligent energy management; online performance evaluation; optimal energy management; optimal power split; power flow modeling; power-split HEV; quasioptimal energy flow; roadway type; traffic congestion level; Artificial neural networks; Batteries; Engines; Gears; Hybrid electric vehicles; Energy optimization; fuel economy; hybrid electric vehicle (HEV) power management; machine learning;
  • fLanguage
    English
  • Journal_Title
    Vehicular Technology, IEEE Transactions on
  • Publisher
    ieee
  • ISSN
    0018-9545
  • Type

    jour

  • DOI
    10.1109/TVT.2012.2217362
  • Filename
    6296724