A neural-network-based realization of in-network computation for the Internet of Things

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2017Access:
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Kaminski, N. and Macaluso, I. and Di Pascale, E. and Nag, A. and Brady, J. and Kelly, M. and Nolan, K. and Guibene, W. and Doyle, L., A neural-network-based realization of in-network computation for the Internet of Things, IEEE ICC 2017 SAC Symposium Internet of Things Track, 2017, 7996821-Download Item:
Abstract:
Ultra-dense Internet of Things (IoT) networks and
machine type communications herald an enormous opportunity
for new computing paradigms and are serving as a catalyst for
profound change in the evolution of the Internet. We explore
leveraging the communication within IoT to serve data processing
by appropriately shaping the aggregate behavior of a network
to parallel more traditional computation methods. This paper
presents an element of this vision, whereby we map the operations
of an artificial neural network onto the communication of an
IoT network for simultaneous data processing and transfer.
That is, we provide a framework to treat a network holistically
as an artificial neural network, rather than placing neural
networks within the network. The operation of components of a
neural network, neurons and connections between neurons, are
performed by the various elements of the IoT network, i.e., the
devices and their connections. The proposed approach reduces
the latency in delivering processed information and supports the
locality of information inherent to IoT by removing the need for
transfer to remote data processing sites.
Sponsor
Grant Number
Science Foundation Ireland (SFI)
13/RC/2077
Author's Homepage:
http://people.tcd.ie/ledoylehttp://people.tcd.ie/macalusi
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PUBLISHED
Author: Doyle, Linda; Macaluso, Irene
Sponsor:
Science Foundation Ireland (SFI)Other Titles:
IEEE ICC 2017 SAC Symposium Internet of Things TrackType of material:
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Full text availableDOI:
http://dx.doi.org/10.1109/ICC.2017.7996821Metadata
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