Bio-inspired multimodal learning with organic neuromorphic electronics for behavioral conditioning in robotics

Author:

de Burgt Yoeri van1ORCID,Krauhausen Imke1ORCID,Griggs Sophie2,McCulloch Iain3ORCID,Toonder Jaap1ORCID,Gkoupidenis Paschalis4ORCID

Affiliation:

1. Eindhoven University of Technology

2. Department of Chemistry, University of Oxford

3. University of Oxford

4. Max Planck Institute for Polymer Research

Abstract

Abstract Biological systems interact directly with the environment and learn by receiving multimodal feedback via sensory stimuli that shape the formation of internal neuronal representations. Drawing inspiration from biological concepts such as exploration and sensory processing that eventually lead to behavioral conditioning, we present a robotic system handling objects through multimodal learning. A small-scale organic neuromorphic circuit locally integrates and adaptively processes multimodal sensory stimuli, enabling the robot to interact intelligently with its surroundings. The real-time handling of sensory stimuli via low-voltage organic neuromorphic devices with synaptic functionality forms multimodal associative connections that lead to behavioral conditioning, and thus the robot learns to avoid potentially dangerous objects. This work demonstrates that adaptive neuro-inspired circuitry with multifunctional organic materials, can accommodate locally efficient bio-inspired learning for advancing intelligent robotics.

Publisher

Research Square Platform LLC

Reference48 articles.

1. The grand challenges of Science Robotics;Yang G-Z;Sci Robot,2018

2. Artificial neural networks;Hopfield JJ;IEEE Circuits Devices Mag,1988

3. Reinforcement learning in artificial and biological systems;Neftci EO;Nat Mach Intell,2019

4. Embodied neuromorphic intelligence;Bartolozzi C;Nat Commun,2022

5. Neuromorphic computing hardware and neural architectures for robotics;Sandamirskaya Y;Sci Robot,2022

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