Publication | Closed Access
Distributed Primal–Dual Subgradient Method for Multiagent Optimization via Consensus Algorithms
252
Citations
29
References
2011
Year
Mathematical ProgrammingDistributed AlgorithmLarge-scale Global OptimizationEngineeringDistributed AlgorithmsDistributed OptimizationConvex OptimizationNetwork AnalysisSystems EngineeringDistributed Constraint OptimizationDistributed Problem SolvingPrimal–dual Subgradient MethodComputer ScienceDistributed Ai SystemConvex State ConstraintCombinatorial OptimizationMultiple AgentsOperations Research
This paper studies the problem of optimizing the sum of multiple agents' local convex objective functions, subject to global convex inequality constraints and a convex state constraint set over a network. Through characterizing the primal and dual optimal solutions as the saddle points of the Lagrangian function associated with the problem, we propose a distributed algorithm, named the distributed primal-dual subgradient method, to provide approximate saddle points of the Lagrangian function, based on the distributed average consensus algorithms. Under Slater's condition, we obtain bounds on the convergence properties of the proposed method for a constant step size. Simulation examples are provided to demonstrate the effectiveness of the proposed method.
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