
doi: 10.1155/2015/192307
Existing methods on structural controllability of networked systems are based on critical assumptions such as nodal dynamics with infinite time constants and availability of input signals to all nodes. In this paper, we relax these assumptions and examine the structural controllability for practical model of networked systems. We explore the relationship between structural controllability and graph reachability. Consequently, a simple graph-based algorithm is presented to obtain the minimum driver nodes. Finally, simulation results are presented to illustrate the performance of the proposed algorithm in dealing with large-scale networked systems.
Controllability, Practical model, Infinite time, Reachability, Decentralized systems, Graph-based algorithms, 510, 620, T Technology (General), Structural controllability, Graphic methods, Networked systems, Algorithms, Control/observation systems governed by ordinary differential equations
Controllability, Practical model, Infinite time, Reachability, Decentralized systems, Graph-based algorithms, 510, 620, T Technology (General), Structural controllability, Graphic methods, Networked systems, Algorithms, Control/observation systems governed by ordinary differential equations
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