Scaling Robust Optimization for Swarms: A Distributed Perspective
Arshiya Taj Abdul, Augustinos D. Saravanos, Evangelos A. Theodorou

TL;DR
This paper develops a scalable, distributed robust optimization framework for safe multi-agent control under uncertainty, capable of handling both deterministic and stochastic uncertainties with improved computational efficiency.
Contribution
It introduces novel reformulations for robust constraints, incorporates distributed ADMM-based algorithms, and demonstrates scalability and safety in large multi-agent systems.
Findings
Effective handling of uncertainties in multi-agent control.
Scalability demonstrated with up to 246 agents.
Reduced computational complexity compared to standard methods.
Abstract
This article introduces a decentralized robust optimization framework for safe multi-agent control under uncertainty. Although stochastic noise has been the primary form of modeling uncertainty in such systems, these formulations might fall short in addressing uncertainties that are deterministic in nature or simply lack probabilistic data. To ensure safety under such scenarios, we employ the concept of robust constraints that must hold for all possible uncertainty realizations lying inside a bounded set. Nevertheless, standard robust optimization approaches become intractable due to the large number or non-convexity of the constraints involved in safe multi-agent control. To address this, we introduce novel robust reformulations that significantly reduce complexity without compromising safety. The applicability of the framework is further broadened to address both deterministic and…
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Taxonomy
TopicsComplex Network Analysis Techniques · Metaheuristic Optimization Algorithms Research · Insect and Arachnid Ecology and Behavior
