Synchronization of an excitatory integrate-and-fire neural network

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Publication:376450

DOI10.1007/s11538-013-9823-8zbMath1273.92013OpenAlexW2079712990WikidataQ46797090 ScholiaQ46797090MaRDI QIDQ376450

Jacques Henry, Grégory Dumont

Publication date: 5 November 2013

Published in: Bulletin of Mathematical Biology (Search for Journal in Brave)

Full work available at URL: https://hal.inria.fr/hal-00822472/file/explosion-revised.pdf




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