Mean Field Approach for Configuring Population Dynamics on a Biohybrid Neuromorphic System
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Published:2020-06-27
Issue:11
Volume:92
Page:1303-1321
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ISSN:1939-8018
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Container-title:Journal of Signal Processing Systems
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language:en
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Short-container-title:J Sign Process Syst
Author:
Partzsch Johannes, Mayr ChristianORCID, Giulioni Massimiliano, Noack Marko, Hänzsche Stefan, Scholze Stefan, Höppner Sebastian, Giudice Paolo Del, Schüffny Rene
Abstract
AbstractReal-time coupling of cell cultures to neuromorphic circuits necessitates a neuromorphic network that replicates biological behaviour both on a per-neuron and on a population basis, with a network size comparable to the culture. We present a large neuromorphic system composed of 9 chips, with overall 2880 neurons and 144M conductance-based synapses. As they are realized in a robust switched-capacitor fashion, individual neurons and synapses can be configured to replicate with high fidelity a wide range of biologically realistic behaviour. In contrast to other exploration/heuristics-based approaches, we employ a theory-guided mesoscopic approach to configure the overall network to a range of bursting behaviours, thus replicating the statistics of our targeted in-vitro network. The mesoscopic approach has implications beyond our proposed biohybrid, as it allows a targeted exploration of the behavioural space, which is a non-trivial task especially in large, recurrent networks.
Funder
FP7 Future and Emerging Technologies
Publisher
Springer Science and Business Media LLC
Subject
Hardware and Architecture,Modeling and Simulation,Information Systems,Signal Processing,Theoretical Computer Science,Control and Systems Engineering
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