Journal of Systems Engineering and Electronics ›› 2008, Vol. 19 ›› Issue (2): 351-355.

• CONTROL THEORY AND APPLICATION • Previous Articles     Next Articles

Recurrent neural network for vehicle dead-reckoning

Ma Haibo, Zhang Liguo & Chen Yangzhou   

  1. School of Electronic Control Engineering, Beijing Univ. of Technology, Beijing 100022, P. R. China
  • Online:2008-04-21 Published:2010-01-03

Abstract:

For vehicle integrated navigation systems, real-time estimating states of the dead reckoning (DR) unit is much more difficult than that of the other measuring sensors under indefinite noises and nonlinear characteristics. Compared with the well known, extended Kalman filter (EKF), a recurrent neural network is proposed for the solution, which not only improves the location precision and the adaptive ability of resisting disturbances, but also avoids calculating the analytic derivation and Jacobian matrices of the nonlinear system model. To test the performances of the recurrent neural network, these two methods are used to estimate the state of the vehicle’s DR navigation system. Simulation results show that the recurrent neural network is superior to the EKF and is a more ideal filtering method for vehicle DR navigation.