ROLL AND PITCH ESTIMATION VIA AN ACCELEROMETER ARRAY AND SENSOR NETWORKS

  • Baek, W. (Department of Mechanical Engineering, Ajou University) ;
  • Song, B. (Department of Mechanical Engineering, Ajou University) ;
  • Kim, Y. (Department of Electronic Engineering, Ajou University) ;
  • Hong, S.K. (Department of Electronic Engineering, Ajou University)
  • Published : 2007.12.01

Abstract

In this paper, a roll and pitch estimation algorithm using a set of accelerometers and wireless sensor networks(S/N) is presented for use in a passenger vehicle. While an inertial measurement unit(IMU) is generally used for roll/pitch estimation, performance may be degraded in the presence of longitudinal acceleration and yaw motion. To compensate for this performance degradation, a new roll and pitch estimation algorithm is proposed that uses an accelerometer array, global positioning system(GPS) and in-vehicle networks to get information from yaw rate and roll rate sensors. Angular acceleration and roll and pitch approximation are first calculated based on vehicle kinematics. A discrete Kalman filter is then applied to estimate both roll and pitch more precisely by reducing noise from the running engine and from road disturbance. Finally, the feasibility of the proposed algorithm is shown by comparing its performance experimentally with that of an IMU in the framework of an indoor test platform as well as a test vehicle.

Keywords

References

  1. Bosch (2007). Automotive Technology/Safety. Bosch Website. http://rb-kwin.bosch.com/en-KR/start/safety.html
  2. Gillespie, T. D. (1992). Fundamentals of Vehicle Dynamics. SAE
  3. Greenwood, D. T. (1988). Principles of Dynamics, 2nd edn. Prentice Hall. New Jersey
  4. Kim, M. H., Oh, J. H., Lee, J. H. and Jeon, M. C. (2006). Development of rollover criteria based on simple physical model of rollover event. Int. J. Automotive Technology 7, 1, 51−59
  5. Mostov, K. S., Soloviev, A. A. and Koo, T. J. (1997). Accelerometer based gyro-free multi-sensor generic inertial device for automotive applications. Proc. IEEE Conf. ITS, 1047−1052
  6. Ryu, J. and Gerdes, J. C. (2004). Integrating inertial sensors with GPS for vehicle dynamics control. ASME J. Dynamic Systems, Measurement, and Control, 126, 243−254
  7. Siemens (2007). Restraint Systems. Siemens Website. http://www.siemensat.co.kr/products/ rest.html
  8. Smith, S. W. (1999). The Scientist and Engineer's Guide to Digital Signal Processing. California Technical Publishing. California
  9. Tseng, H. E., Xu, L. and Hrovat, D. (2007). Estimation of land vehicle roll and pitch angles. Vehicle System Dynamics 45, 5, 455−443
  10. Ungoren, A. Y. and Peng, H. (2004). Evaluation of vehicle dynamic control for rollover prevention, Int. J. Automotive Technology 5, 2, 115−122
  11. VTI (2007). Product & Applications/Automotive. VTI Website. http://www.vti.fi/en/products-solutions/solutions/automotive