Learning inverse kinematics using neural computational primitives on neuromorphic hardware
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Date
2023-10-26Type
- Journal Article
ETH Bibliography
yes
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Abstract
Current low-latency neuromorphic processing systems hold great potential for developing autonomous artificial agents. However, the variable nature and low precision of the underlying hardware substrate pose severe challenges for robust and reliable performance. To address these challenges, we adopt hardware-friendly processing strategies based on brain-inspired computational primitives, such as triplet spike-timing dependent plasticity, basal ganglia-inspired disinhibition, and cooperative-competitive networks and apply them to motor control. We demonstrate this approach by presenting an example of robust online motor control using a hardware spiking neural network implemented on a mixed-signal neuromorphic processor, trained to learn the inverse kinematics of a two-joint robotic arm. The final system is able to perform low-latency control robustly and reliably using noisy silicon neurons. The spiking neural network, trained to control two joints of the iCub robot arm simulator, performs a continuous target-reaching task with 97.93% accuracy, 33.96 ms network latency, 102.1 ms system latency, and with an estimated power consumption of 26.92 μW during inference (control). This work provides insights into how specific computational primitives used by real neural systems can be applied to neuromorphic computing for solving real-world engineering tasks. It represents a milestone in the design of end-to-end spiking robotic control systems, relying on event-driven sensory encoding, neuromorphic processing, and spiking motor control. Show more
Permanent link
https://doi.org/10.3929/ethz-b-000655693Publication status
publishedExternal links
Journal / series
npj RoboticsVolume
Pages / Article No.
Publisher
NatureOrganisational unit
09699 - Indiveri, Giacomo / Indiveri, Giacomo
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ETH Bibliography
yes
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