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Application of Recursive Subspace Method in Vehicle Lateral Dynamics Model Identification

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  • Tengyue Ba
  • Xiqiang Guan
  • Jian W. Zhang
  • Sanzhou Wang

Abstract

Modeling of vehicle behavior based on the identification method has received a renewed attention in recent years. In order to improve the linear time-invariant vehicle identification model, a more general identifiable vehicle model structure is proposed, in which time-varying characteristics of vehicle speed and cornering stiffness are taken into consideration. To identify the proposed linear time-varying vehicle model, a well-established data-driven method, named recursive optimized version of predictor-based subspace identification, is introduced. Before vehicle model identification, the influences of four parameters in the subspace algorithm are studied based on pulse input road test. And then a set of practical optimal parameters are chosen and used for the vehicle model identification. Through a series of standard road tests under different maneuvers, the linear time-varying vehicle model can be identified in real-time. It is demonstrated by comparison that the predicted outputs of the proposed vehicle model are much closer to the real vehicle outputs and the model has a wider range of application.

Suggested Citation

  • Tengyue Ba & Xiqiang Guan & Jian W. Zhang & Sanzhou Wang, 2016. "Application of Recursive Subspace Method in Vehicle Lateral Dynamics Model Identification," Mathematical Problems in Engineering, Hindawi, vol. 2016, pages 1-15, June.
  • Handle: RePEc:hin:jnlmpe:1715762
    DOI: 10.1155/2016/1715762
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