A Neurodynamic Approach to Distributed Optimization With Globally Coupled Constraints

IEEE Trans Cybern. 2018 Nov;48(11):3149-3158. doi: 10.1109/TCYB.2017.2760908. Epub 2017 Oct 18.

Abstract

In this paper, a distributed neurodynamic approach is proposed for constrained convex optimization. The objective function is a sum of local convex subproblems, whereas the constraints of these subproblems are coupled. Each local objective function is minimized individually with the proposed neurodynamic optimization approach. Through information exchange between connected neighbors only, all nodes can reach consensus on the Lagrange multipliers of all global equality and inequality constraints, and the decision variables converge to the global optimum in a distributed manner. Simulation results of two power system cases are discussed to substantiate the effectiveness and characteristics of the proposed approach.