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首页> 外文期刊>Control of Network Systems, IEEE Transactions on >Scalable Consensus in Networks of Multiagent Systems Using High-Gain Observers
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Scalable Consensus in Networks of Multiagent Systems Using High-Gain Observers

机译:使用高增益观察员的多轴系统网络中的可扩展达人

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摘要

Consensus algorithms are popular in the field of multiagent systems due to their wide application in formation control, distributed estimation, sensor networks, etc. Generally, for certain classes of undirected graphs, with an increase in the network size, the second smallest eigenvalue of the graph Laplacian decreases toward zero, which leads to a slow convergence rate. We present a scalable consensus algorithm using proportional derivative (PD) control where the eigenvalues of the closed-loop Laplacian matrix are invariant with respect to the size of the network for general directed graphs. The PD controller is realized using a high-gain observer. We show that the trajectories of the closed-loop system when the high-gain observer is used can be brought arbitrarily close to the trajectories under the PD controller. Simulation results are presented to demonstrate the efficacy of the proposed algorithm.
机译:由于它们在形成控制,分布式估计,传感器网络等中的广泛应用程序,对于某些类别的无向图,具有增加的网络尺寸,因此,共识算法在多层系统领域中受欢迎。通常,网络尺寸增加,第二个最小的特征值图拉普拉斯曲面降低为零,导致收敛速度缓慢。我们使用比例衍生(Pd)控制的可扩展共识算法,其中闭环拉普拉斯矩阵的特征值相对于一般定向图的网络的大小是不变的。使用高增益观测器实现PD控制器。我们表明,当使用高增益观测器时,闭环系统的轨迹可以随意接近PD控制器下的轨迹。提出了仿真结果以证明所提出的算法的功效。

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