Rapid Transitions with Robust Accelerated Delayed Self Reinforcement for Consensus-Based Networks
Anuj Tiwari, Santosh Devasia

TL;DR
This paper extends accelerated-gradient methods to directed multi-agent networks, enabling faster consensus transitions without requiring network modifications, and demonstrates significant improvements in robustness and convergence speed through simulations and experiments.
Contribution
It introduces a novel extension of accelerated-gradient approaches to general directed graphs, enhancing robustness and convergence without changing network connectivity.
Findings
40% improvement in structural robustness with Robust A-DSR
50% faster convergence to consensus in simulations
37% faster convergence observed in experiments
Abstract
Rapid transitions are important for quick response of consensus-based, multi-agent networks to external stimuli. While high-gain can increase response speed, potential instability tends to limit the maximum possible gain, and therefore, limits the maximum convergence rate to consensus during transitions. Since the update law for multi-agent networks with symmetric graphs can be considered as the gradient of its Laplacian-potential function, Nesterov-type accelerated-gradient approaches from optimization theory, can further improve the convergence rate of such networks. An advantage of the accelerated-gradient approach is that it can be implemented using accelerated delayed-self-reinforcement (A-DSR), which does not require new information from the network nor modifications in the network connectivity. However, the accelerated-gradient approach is not directly applicable to general…
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