Abstract :
This paper deals with the classical problem of state estimation, considering partially unknown, nonlinear systems with noise
measurements. Estimation of both, state variables and unstructured uncertain term, are performed simultaneously. In order to
transform the measured disturbance into system disturbance, an alternative system representation is proposed, which lead a more
advantageous observer structure. The observer proposed contains a proportional-type contribution and a sliding term for the measurement
of error, which provides robustness against noisy measurements and model uncertainties. Convergence analysis of the
estimation methodology proposed is performed, analysing the equation of the dynamics of the estimation error; it is shown that the
observer exhibits asymptotic convergence. Estimation of monomer concentration, average molecular weight, polydispersity and filtering
of temperature in a batch stirred polymerization reactor illustrates the good performance of the observer proposed.
Keywords :
Unstructured uncertainty estimation , state estimation , Noisy measurements , Robust performance , sliding-mode observer