Article ID Journal Published Year Pages File Type
4628387 Applied Mathematics and Computation 2014 14 Pages PDF
Abstract

In this work the Goodwin model applied to gene transcription is employed as a benchmark system for estimation purposes, considering two dynamic behaviors, monotone decreasing and sustained oscillations, each one under a specific parameter’s set. The preceding observability analysis of the Goodwin model was done via linear observability and the differential–algebraic framework, where is proved that the system is fully observable from mRNA concentration measurements. Therefore a class of nonlinear observer which considers a class of sigmoid and linear functions of the output feedback, considering model uncertainties, is proposed and a sketch of proof of the observer’s convergence is provided under the background of the Lyapunov theory, in order to demonstrate asymptotic convergence. Numerical experiments are carrying out in order to show the performance of the proposed methodology which is compared with a standard Luenberger (Proportional) observer and a proportional sliding-mode observer (PSMO).

Related Topics
Physical Sciences and Engineering Mathematics Applied Mathematics
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