Populations of spiking neurons for reservoir computing: Closed loop control of a compliant quadruped |
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Affiliation: | 1. Visual Computing Institute, RWTH Aachen University and JARA Center for Simulation and Data Science, Aachen, Germany;2. Department IV - Human-Computer Interaction, Trier University, Germany |
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Abstract: | Compliant robots can be more versatile than traditional robots, but their control is more complex. The dynamics of compliant bodies can however be turned into an advantage using the physical reservoir computing framework. By feeding sensor signals to the reservoir and extracting motor signals from the reservoir, closed loop robot control is possible. Here, we present a novel framework for implementing central pattern generators with spiking neural networks to obtain closed loop robot control. Using the FORCE learning paradigm, we train a reservoir of spiking neuron populations to act as a central pattern generator. We demonstrate the learning of predefined gait patterns, speed control and gait transition on a simulated model of a compliant quadrupedal robot. |
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Keywords: | Spiking neural networks Compliant robotics Quadruped control Reservoir computing |
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