• DocumentCode
    3846230
  • Title

    Constrained Consensus and Optimization in Multi-Agent Networks

  • Author

    Angelia Nedic;Asuman Ozdaglar;Pablo A. Parrilo

  • Author_Institution
    Industrial and Enterprise Systems Engineering Department, University of Illinois at Urbana-Champaign, Urbana, United States of America
  • Volume
    55
  • Issue
    4
  • fYear
    2010
  • Firstpage
    922
  • Lastpage
    938
  • Abstract
    We present distributed algorithms that can be used by multiple agents to align their estimates with a particular value over a network with time-varying connectivity. Our framework is general in that this value can represent a consensus value among multiple agents or an optimal solution of an optimization problem, where the global objective function is a combination of local agent objective functions. Our main focus is on constrained problems where the estimates of each agent are restricted to lie in different convex sets. To highlight the effects of constraints, we first consider a constrained consensus problem and present a distributed "projected consensus algorithm" in which agents combine their local averaging operation with projection on their individual constraint sets. This algorithm can be viewed as a version of an alternating projection method with weights that are varying over time and across agents. We establish convergence and convergence rate results for the projected consensus algorithm. We next study a constrained optimization problem for optimizing the sum of local objective functions of the agents subject to the intersection of their local constraint sets. We present a distributed "projected subgradient algorithm" which involves each agent performing a local averaging operation, taking a subgradient step to minimize its own objective function, and projecting on its constraint set. We show that, with an appropriately selected stepsize rule, the agent estimates generated by this algorithm converge to the same optimal solution for the cases when the weights are constant and equal, and when the weights are time-varying but all agents have the same constraint set.
  • Keywords
    "Constraint optimization","Distributed algorithms","Convergence","Autonomous agents","Engineering profession","Systems engineering and theory","Laboratories","Intelligent networks"
  • Journal_Title
    IEEE Transactions on Automatic Control
  • Publisher
    ieee
  • ISSN
    0018-9286
  • Type

    jour

  • DOI
    10.1109/TAC.2010.2041686
  • Filename
    5404774