Design of nonfragile state estimator for discrete-time genetic regulatory networks subject to randomly occurring uncertainties and time-varying delays (Q1688073)
From MaRDI portal
| This is the item page for this Wikibase entity, intended for internal use and editing purposes. Please use this page instead for the normal view: Design of nonfragile state estimator for discrete-time genetic regulatory networks subject to randomly occurring uncertainties and time-varying delays |
scientific article; zbMATH DE number 6822312
| Language | Label | Description | Also known as |
|---|---|---|---|
| English | Design of nonfragile state estimator for discrete-time genetic regulatory networks subject to randomly occurring uncertainties and time-varying delays |
scientific article; zbMATH DE number 6822312 |
Statements
Design of nonfragile state estimator for discrete-time genetic regulatory networks subject to randomly occurring uncertainties and time-varying delays (English)
0 references
5 January 2018
0 references
Summary: We deal with the design problem of nonfragile state estimator for discrete-time Genetic Regulatory Networks (GRNs) with time-varying delays and randomly occurring uncertainties. In particular, the norm-bounded uncertainties enter into the GRNs in random ways in order to reflect the characteristic of the modelling errors, and the so-called randomly occurring uncertainties are characterized by certain mutually independent random variables obeying the Bernoulli distribution. The focus of the paper is on developing a new nonfragile state estimation method to estimate the concentrations of the mRNA and the protein for considered uncertain delayed GRNs, where the randomly occurring estimator gain perturbations are allowed. By constructing a Lyapunov-Krasovskii functional, a delay-dependent criterion is obtained in terms of Linear Matrix Inequalities (LMIs) by properly using the discrete-time Wirtinger-based inequality and reciprocally convex combination approach as well as the free-weighting matrix method. It is shown that the proposed method ensures that the estimation error dynamics is globally asymptotically stable and the desired estimator parameter is designed via the solutions to certain LMIs. Finally, we provide two numerical examples to illustrate the feasibility and validity of the proposed estimation results.
0 references
state estimator
0 references
discrete-time genetic regulatory networks
0 references
randomly occurring uncertainties
0 references
time-varying delays
0 references
0 references
0 references
0 references