Designing Worm-Inspired Neural Networks for Interpretable Robotic Control

Mathias Lechner1, Ramin Hasani2, Manuel Zimmer3, Thomas Henzinger1, Radu Grosu4

  • 1IST Austria
  • 2TU Wien
  • 3IMP Austria
  • 4Stony Brook University

Details

10:45 - 12:00 | Mon 20 May | Room 220 POD 03 | MoA1-03.1

Session: Biologically-Inspired Robots - 1.1.03

Abstract

In this paper, we design novel liquid time-constant recurrent neural networks for robotic control, inspired by the brain of the nematode, C. elegans. In the worm's nervous system, neurons communicate through nonlinear time-varying synaptic links established amongst them by their particular wiring structure. This property enables neurons to express liquid time-constants dynamics and therefore allows the network to originate complex behaviors with a small number of neurons. We identify neuron-pair communication motifs as design operators and use them to configure compact neuronal network structures to govern sequential robotic tasks. The networks are systematically designed to map the environmental observations to motor actions, by their hierarchical topology from sensory neurons, through recurrently-wired interneurons, to motor neurons. The networks are then parametrized in a supervised-learning scheme by a search-based algorithm. We demonstrate that obtained networks realize interpretable dynamics. We evaluate their performance in controlling mobile and arm robots, and compare their attributes to other artificial neural network-based control agents. Finally, we experimentally show their superior resilience to environmental noise, compared to the existing machine learning-based methods.