4.5 Article

Road curvature estimation for vehicle lane departure detection using a robust Takagi-Sugeno fuzzy observer

Journal

VEHICLE SYSTEM DYNAMICS
Volume 51, Issue 5, Pages 581-599

Publisher

TAYLOR & FRANCIS LTD
DOI: 10.1080/00423114.2011.642806

Keywords

lane departure warning system; vehicle dynamics; robust fuzzy TakagiSugeno observer; LMI

Funding

  1. Conseil Regional de Picardie
  2. European Regional Development Fund within the framework of the project 'SEDVAC'

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In this paper, a lane departure detection method is studied and evaluated via a professional vehicle dynamics software. Based on a robust fuzzy observer designed with unmeasurable premise variables with unknown inputs, the road curvature is estimated and compared with the vehicle trajectory curvature. The difference between the two curvatures is used by the proposed algorithm as the first driving risk indicator. To reduce false alarms and take into account the driver corrections, a second driving risk indicator is considered, which is based on the steering dynamics, and it gives the time to the lane keeping. The used nonlinear model deduced from the vehicle lateral dynamics and a vision system is represented by an uncertain TakagiSugeno fuzzy model. Taking into account the unmeasured variables, an unknown input fuzzy observer is then proposed. Synthesis conditions of the proposed fuzzy observer are formulated in terms of linear matrix inequalities using Lyapunov method. The proposed approach is evaluated under different driving scenarios using a software simulator. Simulation results show good efficiency of the proposed method.

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