4.7 Article

An Approximate Dual Subgradient Algorithm for Multi-Agent Non-Convex Optimization

Journal

IEEE TRANSACTIONS ON AUTOMATIC CONTROL
Volume 58, Issue 6, Pages 1534-1539

Publisher

IEEE-INST ELECTRICAL ELECTRONICS ENGINEERS INC
DOI: 10.1109/TAC.2012.2228038

Keywords

Dual subgradient algorithm; Lagrangian duality

Funding

  1. NSF [CMMI-0643673]

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We consider amulti-agent optimization problem where agents subject to local, intermittent interactions aim to minimize a sum of local objective functions subject to a global inequality constraint and a global state constraint set. In contrast to previous work, we do not require that the objective, constraint functions, and state constraint sets are convex. In order to deal with time-varying network topologies satisfying a standard connectivity assumption, we resort to consensus algorithm techniques and the Lagrangian duality method. We slightly relax the requirement of exact consensus, and propose a distributed approximate dual subgradient algorithm to enable agents to asymptotically converge to a pair of primal-dual solutions to an approximate problem. To guarantee convergence, we assume that the Slater's condition is satisfied and the optimal solution set of the dual limit is singleton. We implement our algorithm over a source localization problem and compare the performance with existing algorithms.

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