Wei Guoliang, Wang Zidong, Lam James, Fraser Karl, Rao Ganti Prasada, Liu Xiaohui
School of Information Sciences and Technology, Donghua University, Shanghai 200051, China.
Math Biosci. 2009 Aug;220(2):73-80. doi: 10.1016/j.mbs.2009.04.002. Epub 2009 Apr 23.
This paper addresses the robust filtering problem for a class of linear genetic regulatory networks (GRNs) with stochastic disturbances, parameter uncertainties and time delays. The parameter uncertainties are assumed to reside in a polytopic region, the stochastic disturbance is state-dependent described by a scalar Brownian motion, and the time-varying delays enter into both the translation process and the feedback regulation process. We aim to estimate the true concentrations of mRNA and protein by designing a linear filter such that, for all admissible time delays, stochastic disturbances as well as polytopic uncertainties, the augmented state estimation dynamics is exponentially mean square stable with an expected decay rate. A delay-dependent linear matrix inequality (LMI) approach is first developed to derive sufficient conditions that guarantee the exponential stability of the augmented dynamics, and then the filter gains are parameterized in terms of the solution to a set of LMIs. Note that LMIs can be easily solved by using standard software packages. A simulation example is exploited in order to illustrate the effectiveness of the proposed design procedures.
本文研究了一类具有随机干扰、参数不确定性和时滞的线性基因调控网络(GRN)的鲁棒滤波问题。假设参数不确定性存在于一个多面体区域,随机干扰由标量布朗运动描述且依赖于状态,时变时滞同时进入转录过程和反馈调节过程。我们的目标是通过设计一个线性滤波器来估计mRNA和蛋白质的真实浓度,使得对于所有允许的时滞、随机干扰以及多面体不确定性,增广状态估计动态在指数均方意义下稳定且具有期望的衰减率。首先开发了一种基于时滞依赖线性矩阵不等式(LMI)的方法来推导保证增广动态指数稳定性的充分条件,然后根据一组LMI的解对滤波器增益进行参数化。注意,LMI可以使用标准软件包轻松求解。通过一个仿真例子来说明所提出设计方法的有效性。