4.3 Article

Calibration efficiency improvement of rule-based energy management system for a plug-in hybrid electric vehicle

Journal

INTERNATIONAL JOURNAL OF AUTOMOTIVE TECHNOLOGY
Volume 18, Issue 2, Pages 335-344

Publisher

KOREAN SOC AUTOMOTIVE ENGINEERS-KSAE
DOI: 10.1007/s12239-017-0034-4

Keywords

Calibration; Plug-in hybrid electric vehicle; Radar chart; Optimal Latin hypercube design; RBF neural network

Funding

  1. National Natural Science Foundation of China [51205153]
  2. Natural Science Foundation of Jilin Province [20140101072JC]
  3. Project of International Cooperation and Exchange Foundation of Jilin Province [20140414013GH]
  4. Education Department of Jilin Province 13th Five-Year Science and Technology project [427]

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This paper presents a calibration method of a rule-based energy management strategy designed for a plug-in hybrid electric vehicle, which aims to find the optimal set of control parameters to compromise within the conflicting calibration requirements (e.g. emissions and economy). A comprehensive evaluating indicator covering emissions and economy performance is constructed by the method of radar chart. Moreover, a radial basis functions (RBFs) neural network model is proposed to establish a precise model within the control parameters and the comprehensive evaluation indicator. The best set of control parameters under offline calibration is gained by the multi-island genetic algorithm. Finally, the offline calibration results are compared with the experimental results using a chassis dynamometer. The comparison results validate the effectiveness of the proposed offline calibrating approach, which is based on the radar chart method and the RBF neural network model on vehicle performance improvement and calibrating efficiency.

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