A distributed control invariant set computing algorithm for nonlinear cascade systems

Benjamin Decardi-Nelson, Jinfeng Liu
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引用次数: 2

Abstract

In this work, we present a distributed framework based on the graph algorithm for computing control invariant set for nonlinear cascade systems. The proposed algorithm exploits the structure of the interconnections within a process network. First, the overall system is decomposed into several subsystems with overlapping states. Second, the control invariant set for the subsystems are computed in a distributed manner. Finally, an approximation of the control invariant set for the overall system is reconstructed from the subsystem solutions and validated. We demonstrate the efficacy and convergence of the proposed method to the centralized graph-based algorithm using a nonlinear example.
非线性串级系统的分布式控制不变量集计算算法
在这项工作中,我们提出了一个基于图算法的分布式框架来计算非线性级联系统的控制不变集。该算法利用了过程网络内部互连的结构。首先,将整个系统分解为多个状态重叠的子系统。其次,以分布式方式计算子系统的控制不变量集;最后,根据子系统的解重构了整个系统的控制不变量集的近似,并进行了验证。我们用一个非线性的例子证明了该方法对集中式图算法的有效性和收敛性。
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