Constrained state estimation for nonlinear discrete-time systems: stability and moving horizon approximations
University of California, Berkeley · University of Wisconsin–Madison · +1 more institution
Abstract
State estimator design for a nonlinear discrete-time system is a challenging problem, further complicated when additional physical insight is available in the form of inequality constraints on the state variables and disturbances. One strategy for constrained state estimation is to employ online optimization using a moving horizon approximation. We propose a general theory for constrained moving horizon estimation. Sufficient conditions for asymptotic and bounded stability are established. We apply these results to develop a practical algorithm for constrained linear and nonlinear state estimation. Examples are used to illustrate the benefits of constrained state estimation. Our framework is deterministic.
Citation impact
- FWCI
- 48.30
- Percentile
- 100%
- References
- 44
Authors
3Topics & keywords
- Nonlinear system
- Mathematical optimization
- Estimator
- Bounded function
- State (computer science)
- Stability (learning theory)
- Exponential stability
- Mathematics