Abstract
We propose a competition-based approach to resilient distributed optimization with quadratic costs in Networked Control Systems (e.g., wireless sensor network, power grid, robotic team) where a fraction of agents may misbehave (through, e.g., hacking or power outage). Departing from classical filtering strategies proposed in literature, and inspired by a game-theoretic interpretation of consensus, we propose to introduce competition among normally behaving agents as a mean to enhance resilience against malicious attacks. Our proposal is supported by formal and heuristic results which show that i) there exists a nontrivial trade-off between blind collaboration and full competition and ii) the proposed approach can outperform standard techniques based on the algorithm Mean Subsequence Reduced.
Cite
CITATION STYLE
Ballotta, L., Como, G., Shamma, J. S., & Schenato, L. (2022). Competition-Based Resilience in Distributed Quadratic Optimization. In Proceedings of the IEEE Conference on Decision and Control (Vol. 2022-December, pp. 6454–6459). Institute of Electrical and Electronics Engineers Inc. https://doi.org/10.1109/CDC51059.2022.9993083
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