4.7 Article

Joint state and parameter robust estimation of stochastic nonlinear systems

Journal

INTERNATIONAL JOURNAL OF ROBUST AND NONLINEAR CONTROL
Volume 26, Issue 14, Pages 3058-3074

Publisher

WILEY
DOI: 10.1002/rnc.3490

Keywords

stochastic nonlinear systems; extended robust filter; joint state and parameter estimation; non-Gaussian noise

Funding

  1. Serbian Ministry of Education, Science and Technological Development [TR33026, TR33027]

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Successful implementation of many control strategies is mainly based on accurate knowledge of the system and its parameters. Besides the stochastic nature of the systems, nonlinearity is one more feature that may be found in almost all physical systems. The application of extended Kalman filter for the joint state and parameter estimation of stochastic nonlinear systems is well known and widely spread. It is a known fact that in measurements, there are inconsistent observations with the largest part of population of observations (outliers). The presence of outliers can significantly reduce the efficiency of linear estimation algorithms derived on the assumptions that observations have Gaussian distributions. Hence, synthesis of robust algorithms is very important. Because of increased practical value in robust filtering as well as the rate of convergence, the modified extended Masreliez-Martin filter presents the natural frame for realization of the joint state and parameter estimator of nonlinear stochastic systems. The strong consistency is proved using the methodology of an associated ODE system. The behaviour of the new approach to joint estimation of states and unknown parameters of nonlinear systems in the case when measurements have non-Gaussian distributions is illustrated by intensive simulations. Copyright (c) 2015 John Wiley & Sons, Ltd.

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