4.6 Article

Quantized Consensus of Multi-Agent Networks With Sampled Data and Markovian Interaction Links

Journal

IEEE TRANSACTIONS ON CYBERNETICS
Volume 49, Issue 5, Pages 1816-1825

Publisher

IEEE-INST ELECTRICAL ELECTRONICS ENGINEERS INC
DOI: 10.1109/TCYB.2018.2814993

Keywords

Markovian interaction links; multi-agent networks; quantized consensus; sampled data

Funding

  1. 13th Recruitment Program for Innovation Talents (Long Term)
  2. National Natural Science Foundation of China [61374053, 61473129]
  3. Wuhan Morning Light Plan of Youth Science and Technology [2017050304010288]

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This paper investigates the joint effect of quantization, sampled data, and general Markovian interaction links on consensus networks with a leader under directed graphs. The diversity of edges formed by all the followers and the leader is also considered. Each agent in the network possesses continuous-time general linear dynamics. Each agent's state is measured only at sampling time instants, which is encoded before transmission. Subsequently, the encoded state is transmitted through noiseless digital communication links with Markovian switching rates. For this problem, a sufficient condition is derived to guarantee the convergence of the encoded states, based on which a necessary and sufficient condition is obtained to achieve consensus tracking in the mean-square sense. In addition, two sufficient conditions on coupling gain, one of which is fully distributed, are provided by proposing an optimal linear quadratic regulator-based gain matrix to ensure consensus tracking and then, the analysis of consensus region is presented. Finally, a numerical example is presented for illustrating the effectiveness of the theoretical results.

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