Modeling, Identification and Control (Jul 1998)

A finite-difference method for linearization in nonlinear estimation algorithms

  • Tor S. Schei

DOI
https://doi.org/10.4173/mic.1998.3.2
Journal volume & issue
Vol. 19, no. 3
pp. 141 – 152

Abstract

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Linearizations of nonlinear functions that are based on Jacobian matrices often cannot be applied in practical applications of nonlinear estimation techniques. An alternative linearization method is presented in this paper. The method assumes that covariance matrices are determined on a square root factored form. A factorization of the output covariance from a nonlinear vector function is directly determined by "perturbing" the nonlinear function with the columns of the factored input covariance, without explicitly calculating the linearization and with no differentiations involved. The output covariance is more accurate than that obtained with the ordinary Jacobian linearization method. It also has an advantage that Jacobian matrices do not have to be derived symbolically.

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