Terrain Slope Estimation Methods Using the Least Squares Approach
Sung-Hoon Mok and Hyochoong Bang
International Journal of Aeronautical and Space Sicences, vol. 14, no. 1, pp.85-90, 2013
Abstract : This paper presents a study on terrain referenced navigation (TRN). The extended Kalman filter (EKF) is adopted as a filter
method. A Jacobian matrix of measurement equations in the EKF consists of terrain slope terms, and accurate slope estimation
is essential to keep filter stability. Two slope estimation methods are proposed in this study. Both methods are based on the
least-squares approach. One is planar regression searching the best plane, in the least-squares sense, representing the terrain
map over the region, determined by position error covariance. It is shown that the method could provide a more accurate
solution than the previously developed linear regression approach, which uses lines rather than a plane in the least-squares
measure. The other proposed method is weighted planar regression. Additional weights formed by Gaussian pdf are multiplied
in the planar regression, to reflect the actual pdf of the position estimate of EKF. Monte Carlo simulations are conducted, to
compare the performance between the previous and two proposed methods, by analyzing the filter properties of divergence
probability and convergence speed. It is expected that one of the slope estimation methods could be implemented, after
determining which of the filter properties is more significant at each mission.
Key words: Terrain referenced navigation, Extended Kalman filter, Terrain Slope Estimation
Keyword : Terrain referenced navigation, Extended Kalman filter, Terrain Slope Estimation, Least squares method |