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Robust filtering for discrete-time systems with bounded noise and parametric uncertainty
272
Citations
19
References
2001
Year
Mathematical ProgrammingDiscrete-time SystemsEngineeringRobust ControlComputational ComplexitySemidefinite ProgrammingStochastic AnalysisUncertainty ModelingMinimal Confidence EllipsoidState EstimationFiltering TechniqueUncertainty QuantificationSystems EngineeringDigital FilterStochastic ControlApproximation TheoryRobust OptimizationParametric UncertaintyInverse ProblemsComputer ScienceBounded NoiseSignal ProcessingStochastic OptimizationBusinessUnknown-but-bounded Parameter Uncertainty
This note presents a new approach to finite-horizon guaranteed state prediction for discrete-time systems affected by bounded noise and unknown-but-bounded parameter uncertainty. Our framework handles possibly nonlinear dependence of the state-space matrices on the uncertain parameters. The main result is that a minimal confidence ellipsoid for the state, consistent with the measured output and the uncertainty description, may be recursively computed in polynomial time, using interior-point methods for convex optimization. With n states, l uncertain parameters appearing linearly in the state-space matrices, with rank-one matrix coefficients, the worst-case complexity grows as O(l(n + l)/sup 3.5/) With unstructured uncertainty in all system matrices, the worst-case complexity reduces to O(n/sup 3.5/).
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