Bioinspired Smooth Neuromorphic Control for Robotic Arms
Ioannis Polykretis, Lazar Supic, and Andreea Danielescu

TL;DR
This paper presents a biologically inspired neuromorphic control system for robotic arms that achieves smooth, human-like movements with high efficiency by emulating neural networks responsible for natural motion.
Contribution
It introduces a novel spiking neural network-based controller compatible with neuromorphic hardware, improving motion smoothness and control performance over existing methods.
Findings
Achieved 19% reduction in motion jerk.
Produced trajectories with bell-shaped velocity profiles similar to humans.
Demonstrated real-world robotic arm control with state-of-the-art performance.
Abstract
Beyond providing accurate movements, achieving smooth motion trajectories is a long-standing goal of robotics control theory for arms aiming to replicate natural human movements. Drawing inspiration from biological agents, whose reaching control networks effortlessly give rise to smooth and precise movements, can simplify these control objectives for robot arms. Neuromorphic processors, which mimic the brain's computational principles, are an ideal platform to approximate the accuracy and smoothness of biological controllers while maximizing their energy efficiency and robustness. However, the incompatibility of conventional control methods with neuromorphic hardware limits the computational efficiency and explainability of their existing adaptations. In contrast, the neuronal subnetworks underlying smooth and accurate reaching movements are effective, minimal, and inherently compatible…
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Taxonomy
TopicsAdvanced Memory and Neural Computing · Neuroscience and Neural Engineering · Modular Robots and Swarm Intelligence
