Neuromorphic Spiking Ring Attractor for Proprioceptive Joint-State Estimation

arXiv cs.RO / 4/16/2026

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Key Points

  • The paper proposes a neuromorphic spiking ring-attractor network to estimate a robot joint angle by maintaining a stable, self-sustaining activity bump as an internal continuous representation.
  • It achieves stability via local excitation combined with broad inhibition, while velocity-modulated asymmetries translate the activity bump and enforce boundary conditions tied to mechanical joint limits.
  • Experiments/analysis indicate smooth trajectory tracking and improved behavior near joint limits, including reduced drift and better accuracy versus unbounded variants.
  • The approach is designed for compact, hardware-compatible implementation and demonstrates multi-second stability with an approximately near-linear relationship between bump velocity and synaptic modulation.

Abstract

Maintaining stable internal representations of continuous variables is fundamental for effective robotic control. Continuous attractor networks provide a biologically inspired mechanism for encoding such variables, yet neuromorphic realizations have rarely addressed proprioceptive estimation under resource constraints. This work introduces a spiking ring-attractor network representing a robot joint angle through self-sustaining population activity. Local excitation and broad inhibition support a stable activity bump, while velocity-modulated asymmetries drive its translation and boundary conditions confine motion within mechanical limits. The network reproduces smooth trajectory tracking and remains stable near joint limits, showing reduced drift and improved accuracy compared to unbounded models. Such compact hardware-compatible implementation preserves multi-second stability demonstrating a near-linear relationship between bump velocity and synaptic modulation.