4.6 Article

CONSENSUS IN NETWORKS OF MULTIAGENTS WITH SWITCHING TOPOLOGIES MODELED AS ADAPTED STOCHASTIC PROCESSES

Journal

SIAM JOURNAL ON CONTROL AND OPTIMIZATION
Volume 49, Issue 1, Pages 227-253

Publisher

SIAM PUBLICATIONS
DOI: 10.1137/090745945

Keywords

consensus; network of multiagents; switching topology; adapted process

Funding

  1. National Natural Sciences Foundation of China [60774074, 60804044]
  2. Graduate Innovation Foundation of Fudan University [EYH1411040]
  3. Tian Yuan Youth Foundation of China [10826033]
  4. Foundation for the Author of National Excellent Doctoral Dissertation of the People's Republic of China [200921]
  5. Laboratory of Mathematics for Nonlinear Science, Fudan University

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In this paper, we discuss the consensus problem in networks of multiagents with stochastically switching topologies. The switch of graph topology is modeled as an adapted stochastic process, which in principle can include any stochastic processes such as independent and identically distributed (i.i.d.) processes and Markov chains. We derive the sufficient conditions for consensus in both discrete-time and continuous-time networks in terms of conditional expectations of the underlying graph topology. We prove that if there exist T > 0 and delta > 0 such that the conditional expectation of the union of the delta-graph topologies across each T-length time interval has spanning trees, then the multiagent system reaches consensus. For comparison, we show that some previous results on this topic can be derived from our main theorem as corollaries. This includes important results when the switching topology can be modeled as the special and important stochastic models-the i.i.d. process and the Markov process-which implies that we generalize the previous results to some extent. As applications, we also give some corollaries concerning stochastic processes other than the i.i.d. process and Markov processes, such as independent but not necessarily identically distributed processes, hidden Markov models, and phi-mixing processes.

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