Non-Ergodic Convergence Algorithms for Distributed Consensus and Coupling-Constrained Optimization
By: Chenyang Qiu, Zongli Lin
Potential Business Impact:
Helps power grids share electricity fairly and fast.
We study distributed convex optimization with two ubiquitous forms of coupling: consensus constraints and global affine equalities. We first design a linearized method of multipliers for the consensus optimization problem. Without smoothness or strong convexity, we establish non-ergodic sublinear rates of order O(1/\sqrt{k}) for both the objective optimality and the consensus violation. Leveraging duality, we then show that the economic dispatch problem admits a dual consensus formulation, and that applying the same algorithm to the dual economic dispatch yields non-ergodic O(1/\sqrt{k}) decay for the error of the summation of the cost over the network and the equality-constraint residual under convexity and Slater's condition. Numerical results on the IEEE 118-bus system demonstrate faster reduction of both objective error and feasibility error relative to the state-of-the-art baselines, while the dual variables reach network-wide consensus.
Similar Papers
Linear Convergence of Distributed Compressed Optimization with Equality Constraints
Systems and Control
Makes computers share information faster and smarter.
Exponential convergence of a distributed divide-and-conquer algorithm for constrained convex optimization on networks
Optimization and Control
Solves big problems by breaking them into smaller ones.
Communication-Efficient Distributed Online Nonconvex Optimization with Time-Varying Constraints
Optimization and Control
Helps robots learn tasks with less data.