Control-Based Online Distributed Optimization
By: Wouter J. A. van Weerelt, Nicola Bastianello
Potential Business Impact:
Helps computers make smart choices faster.
In this paper we design a novel class of online distributed optimization algorithms leveraging control theoretical techniques. We start by focusing on quadratic costs, and assuming to know an internal model of their variation. In this set-up, we formulate the algorithm design as a robust control problem, showing that it yields a fully distributed algorithm. We also provide a distributed routine to acquire the internal model. We show that the algorithm converges exactly to the sequence of optimal solutions. We empirically evaluate the performance of the algorithm for different choices of parameters. Additionally, we evaluate the performance of the algorithm for quadratic problems with inexact internal model and non-quadratic problems, and show that it outperforms alternative algorithms in both scenarios.
Similar Papers
An Optimal Control Interpretation of Augmented Distributed Optimization Algorithms
Optimization and Control
Makes smart networks work better, faster.
Optimization via a Control-Centric Framework
Optimization and Control
Makes computers solve problems faster and more reliably.
Optimization via a Control-Centric Framework
Optimization and Control
Makes computers solve problems faster and more reliably.