Receding-horizon estimation for noisy nonlinear discrete-time systems

The problem of constructing a receding-horizon estimator for nonlinear discrete-time systems affected by disturbances has been addressed. The noises are assumed to be bounded, additive, and acting on both state and measurement equations. The estimator is designed according to a sliding-window strategy, i.e., so that it minimizes a receding-horizon estimation cost function. The stability of the resulting filter has been investigated and an upper bound on the estimation error has been found. Such a filter can be suitably approximated by parametrized nonlinear approximators as, for example, neural networks. A min-max algorithm turns out to be well-suited to selecting these parameters, as it allows one to guarantee the stability of the error dynamics of the approximate receding-horizon filter. This estimator is designed off line in such a way as to be able to process any possible information pattern. This enables it to generate state estimates almost instantly with a small on-line computational burden.

[1]  Wook Hyun Kwon,et al.  A receding horizon Kalman FIR filter for discrete time-invariant systems , 1999, IEEE Trans. Autom. Control..

[2]  Toshiyuki Ohtsuka,et al.  Nonlinear receding-horizon state estimation by real-time optimization technique , 1996 .

[3]  Fred C. Schweppe,et al.  Uncertain dynamic systems , 1973 .

[4]  Thomas Parisini,et al.  A neural state estimator with bounded errors for nonlinear systems , 1999, IEEE Trans. Autom. Control..

[5]  Jay H. Lee,et al.  Constrained linear state estimation - a moving horizon approach , 2001, Autom..

[6]  Jay H. Lee,et al.  Receding Horizon Recursive State Estimation , 1993, 1993 American Control Conference.

[7]  D. Mayne,et al.  Moving horizon observers and observer-based control , 1995, IEEE Trans. Autom. Control..

[8]  A. Jazwinski Limited memory optimal filtering , 1968 .

[9]  G. Zimmer State observation by on-line minimization , 1994 .

[10]  Keck Voon Ling,et al.  Receding horizon recursive state estimation , 1999, IEEE Trans. Autom. Control..

[11]  Giorgio Battistelli,et al.  Receding-horizon estimation for discrete-time linear systems , 2003, IEEE Trans. Autom. Control..

[12]  M. Alamir Optimization based non-linear observers revisited , 1999 .

[13]  J. Grizzle,et al.  Observer design for nonlinear systems with discrete-time measurements , 1995, IEEE Trans. Autom. Control..

[14]  David Q. Mayne,et al.  Constrained state estimation for nonlinear discrete-time systems: stability and moving horizon approximations , 2003, IEEE Trans. Autom. Control..