A Framework for Time-Varying Optimization via Derivative Estimation
Abstract
Optimization algorithms have a rich and fundamental relationship with ordinary differential equations given by its continuous-time limit. When the cost function varies with time -- typically in response to a dynamically changing environment -- online optimization becomes a continuous-time trajectory tracking problem. To accommodate these time variations, one typically requires some inherent knowledge about their nature such as a time derivative. In this paper, we propose a novel construction and analysis of a continuous-time derivative estimation scheme based on "dirty-derivatives", and show how it naturally interfaces with continuous-time optimization algorithms using the language of ISS (Input-to-State Stability). More generally, we show how a simple Lyapunov redesign technique leads to provable suboptimality guarantees when composing this estimator with any well-behaved optimization algorithm for time-varying costs.
Cite
@article{arxiv.2403.19088,
title = {A Framework for Time-Varying Optimization via Derivative Estimation},
author = {Matteo Marchi and Jonathan Bunton and João Pedro Silvestre and Paulo Tabuada},
journal= {arXiv preprint arXiv:2403.19088},
year = {2024}
}