Constrained Consensus
Angelia Nedi\'c, Asuman Ozdaglar, Pablo A. Parrilo

TL;DR
This paper introduces distributed algorithms for multi-agent systems to achieve consensus or optimize a global objective under individual constraints, with proven convergence and rate results.
Contribution
It proposes a novel projected consensus and subgradient algorithms for constrained distributed optimization with convergence guarantees.
Findings
Convergence of the projected consensus algorithm is established.
The projected subgradient algorithm converges to the optimal solution.
Algorithms work with time-varying network connectivity and constraints.
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 estimate of each agent is restricted to lie in a different constraint set. 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…
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