Abstract

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.

Highlights

  • Agent subgroups forming line segments and rings continuously phase-synchronized in a shared oscillation that was independent from the absolute movement or rotation of the formation in space

  • We demonstrated that NeuroSwarms bridges artificial systems and theoretical models of animal spatial cognition

  • By analogizing agents and swarms to neurons and networks, we showed that a high-level neural approach to distributed autonomous control produces complex dynamics with navigational value

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Summary

Introduction

The neural representations of the hippocampus and related structures have motivated several approaches to spatial mapping, planning, and navigation for robotic platforms (Milford et al 2004; Cuperlier et al 2007; Milford and Wyeth 2008; Barrera and Weitzenfeld 2008) These neuromimetic models have relied on the representations of place cells, head direction cells, border cells, and/or grid cells to drive spatial computations in support of single-platform robotic control (Milford et al 2010; Tejera et al 2018; Kreiser et al 2018; Balaji et al 2019; Gaussier et al 2019). The neurodynamics of hippocampal function may reveal a path toward decentralized self-organization for future applications of autonomous swarming

Model analogy: swarms as spatial neuron circuits
Self-stabilizing attractor maps
Oscillatory phase coding
Internal place fields for swarm control
NeuroSwarms: mobile oscillatory Hebbian learning
Reward capture
NeuroSwarms motion control: closing the loop
Single-entity simulations
NeuroSwarms simulations
Emergent swarming behaviors
Reward-based behavior in a compartmented arena
Behavioral reorganization in large hairpin mazes
Theoretical integration of neural dynamics and artificial swarming systems
Neural phase-organized swarming enables complex and heterogeneous behaviors
Cognitive swarming control for large-scale groups of small-scale platforms
Conclusions
Compliance with ethical standards
Full Text
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