MANEROAONCSep 15, 2019

Cognitive swarming in complex environments with attractor dynamics and oscillatory computing

arXiv:1909.06711v132 citations
Originality Incremental advance
AI Analysis

This work addresses the challenge of scaling autonomous swarm control and theoretical neuroscience models to complex environments, potentially advancing both domains, but it appears incremental as it builds on existing neural circuit analogies.

The paper tackles the problem of extending theoretical models of spatial cognition to large or complex environments by introducing the 'NeuroSwarms' control framework, which analogizes agents to neurons and swarming groups to recurrent networks, demonstrating emergent behaviors like phase-organized rings and trajectory sequences in fragmented mazes.

Neurobiological theories of spatial cognition developed with respect to recording data from relatively small and/or simplistic environments compared to animals' natural habitats. It has been unclear how to extend theoretical models to large or complex spaces. Complementarily, in autonomous systems technology, applications have been growing for distributed control methods that scale to large numbers of low-footprint mobile platforms. Animals and many-robot groups must solve common problems of navigating complex and uncertain environments. Here, we introduce the 'NeuroSwarms' control framework to investigate whether adaptive, autonomous swarm control of minimal artificial agents can be achieved by direct analogy to neural circuits of rodent spatial cognition. NeuroSwarms analogizes agents to neurons and swarming groups to recurrent networks. We implemented neuron-like agent interactions in which mutually visible agents operate as if they were reciprocally-connected place cells in an attractor network. We attributed a phase state to agents to enable patterns of oscillatory synchronization similar to hippocampal models of theta-rhythmic (5-12 Hz) sequence generation. We demonstrate that multi-agent swarming and reward-approach dynamics can be expressed as a mobile form of Hebbian learning and that NeuroSwarms supports a single-entity paradigm that directly informs theoretical models of animal cognition. We present emergent behaviors including phase-organized rings and trajectory sequences that interact with environmental cues and geometry in large, fragmented mazes. Thus, NeuroSwarms is a model artificial spatial system that integrates autonomous control and theoretical neuroscience to potentially uncover common principles to advance both domains.

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