Publication | Closed Access
On sampled-data models for nonlinear systems
135
Citations
28
References
2005
Year
Deterministic Nonlinear SystemsNonlinear System IdentificationParameter IdentificationDeterministic SystemEngineeringNonlinear ControlSystems EngineeringNonlinear SystemsNonlinear ProcessSystem IdentificationApproximation TheoryOrdinary Differential EquationsLocal Truncation Error
Models for deterministic continuous-time nonlinear systems typically take the form of ordinary differential equations. To utilize these models in practice invariably requires discretization. In this paper, we show how an approximate sampled-data model can be obtained for deterministic nonlinear systems such that the local truncation error between the output of this model and the true system is of order /spl Delta//sup r+1/, where /spl Delta/ is the sampling period and r is the system relative degree. The resulting model includes extra zero dynamics which have no counterpart in the underlying continuous-time system. The ideas presented here generalize well-known results for the linear case. We also explore the implications of these results in nonlinear system identification.
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