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Noise covariance identification for time-varying and nonlinear systems
Authors:Ming Ge  Eric C Kerrigan
Affiliation:1. Department of Electrical &2. Electronic Engineering, Imperial College London, London, UK;3. Electronic Engineering and Department of Aeronautics, Imperial College London, London, UK
Abstract:Kalman-based state estimators assume a priori knowledge of the covariance matrices of the process and observation noise. However, in most practical situations, noise statistics and initial conditions are often unknown and need to be estimated from measurement data. This paper presents an auto-covariance least-squares-based algorithm for noise and initial state error covariance estimation of large-scale linear time-varying (LTV) and nonlinear systems. Compared to existing auto-covariance least-squares based-algorithms, our method does not involve any approximations for LTV systems, has fewer parameters to determine and is more memory/computationally efficient for large-scale systems. For nonlinear systems, our algorithm uses full information estimation/moving horizon estimation instead of the extended Kalman filter, so that the stability and accuracy of noise covariance estimation for nonlinear systems can be guaranteed or improved, respectively.
Keywords:Auto-covariance least squares  noise covariance estimation  state estimation  linear time-varying systems  nonlinear systems  Kalman filter  extended Kalman filter  moving horizon estimation
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