In this paper we consider distributed adaptive stabilization for uncertain multivariable linear systems with a time-varying diagonal matrix gain. We show that uncertain multivariable linear systems are stabilizable by diagonal matrix high gains if the system matrix is an H-matrix with positive diagonal entries. Based on matrix measure and stability theory for diagonally dominant systems, we consider two classes of uncertain linear systems, and derive a threshold condition to ensure their exponential stability by a monotonically increasing diagonal gain matrix. When each individual gain function in the matrix gain is updated by state-dependent functions using only local state information, the boundedness and convergence of both system states and adaptive matrix gains are guaranteed. We apply the adaptive distributed stabilization approach to adaptive synchronization control for large-scale complex networks consisting of nonlinear node dynamics and time-varying coupling weights. A unified framework for adaptive synchronization is proposed that includes several general design approaches for adaptive coupling weights to guarantee network synchronization.
翻译:在本文中,我们考虑为不确定的多变线性系统分配适应性稳定,并有时间变化的对角矩阵增益。我们表明,如果系统矩阵是带有正对角分入的H矩阵矩阵,不确定的多变线性系统可以通过对角矩阵高增益加以稳定。根据矩阵测量和对角主导系统的稳定理论,我们考虑两类不确定线性系统,并得出一个临界条件,通过单倍增长的对角增益矩阵确保其指数性稳定。当矩阵增益中的每个个人增益功能都通过国家独立功能更新时,仅使用当地国家信息,系统状态和适应性矩阵增益的界限和趋同都得到保证。我们采用适应性分布性稳定办法,对由非线性结动力和时间变化组合权重组成的大型复杂网络进行适应性同步控制。提议了一个统一的适应性同步框架,其中包括若干适应性组合权的通用设计方法,以保证网络同步。