Demonstrating Advantages of Neuromorphic Computation: A Pilot Study
November 08, 2018 ยท Declared Dead ยท ๐ Frontiers in Neuroscience
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Authors
Timo Wunderlich, Akos F. Kungl, Eric Mรผller, Andreas Hartel, Yannik Stradmann, Syed Ahmed Aamir, Andreas Grรผbl, Arthur Heimbrecht, Korbinian Schreiber, David Stรถckel, Christian Pehle, Sebastian Billaudelle, Gerd Kiene, Christian Mauch, Johannes Schemmel, Karlheinz Meier, Mihai A. Petrovici
arXiv ID
1811.03618
Category
cs.NE: Neural & Evolutionary
Cross-listed
cs.ET
Citations
125
Venue
Frontiers in Neuroscience
Last Checked
4 months ago
Abstract
Neuromorphic devices represent an attempt to mimic aspects of the brain's architecture and dynamics with the aim of replicating its hallmark functional capabilities in terms of computational power, robust learning and energy efficiency. We employ a single-chip prototype of the BrainScaleS 2 neuromorphic system to implement a proof-of-concept demonstration of reward-modulated spike-timing-dependent plasticity in a spiking network that learns to play the Pong video game by smooth pursuit. This system combines an electronic mixed-signal substrate for emulating neuron and synapse dynamics with an embedded digital processor for on-chip learning, which in this work also serves to simulate the virtual environment and learning agent. The analog emulation of neuronal membrane dynamics enables a 1000-fold acceleration with respect to biological real-time, with the entire chip operating on a power budget of 57mW. Compared to an equivalent simulation using state-of-the-art software, the on-chip emulation is at least one order of magnitude faster and three orders of magnitude more energy-efficient. We demonstrate how on-chip learning can mitigate the effects of fixed-pattern noise, which is unavoidable in analog substrates, while making use of temporal variability for action exploration. Learning compensates imperfections of the physical substrate, as manifested in neuronal parameter variability, by adapting synaptic weights to match respective excitability of individual neurons.
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