Bayesian optimization of distributed neurodynamical controller models for spatial navigation
Armin Hadzic, Grace M. Hwang, Kechen Zhang, Kevin M. Schultz and, Joseph D. Monaco

TL;DR
This paper introduces a Bayesian Optimization framework to efficiently tune complex neurodynamical controllers for multi-agent swarm navigation, enabling better performance in spatial tasks while reducing computational costs.
Contribution
The study presents a novel Bayesian Optimization approach for tuning neurodynamical swarm controllers, improving efficiency and adaptability over traditional manual or grid search methods.
Findings
Bayesian Optimization effectively tunes high-dimensional controller parameters.
The approach accelerates the translation of neuroscientific models to practical applications.
Sample-efficient evaluation enhances understanding of complex swarm behaviors.
Abstract
Dynamical systems models for controlling multi-agent swarms have demonstrated advances toward resilient, decentralized navigation algorithms. We previously introduced the NeuroSwarms controller, in which agent-based interactions were modeled by analogy to neuronal network interactions, including attractor dynamics and phase synchrony, that have been theorized to operate within hippocampal place-cell circuits in navigating rodents. This complexity precludes linear analyses of stability, controllability, and performance typically used to study conventional swarm models. Further, tuning dynamical controllers by hand or grid search is often inadequate due to the complexity of objectives, dimensionality of model parameters, and computational costs of simulation-based sampling. Here, we present a framework for tuning dynamical controller models of autonomous multi-agent systems based on…
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Taxonomy
TopicsAdvanced Chemical Sensor Technologies
