Drawing Inspiration from Human Brain Networks: Construction of Interconnected Virtual Networks

Virtualization of wireless sensor networks (WSN) is widely considered as a foundational block of edge/fog computing, which is a key technology that can help realize next-generation Internet of things (IoT) networks. In such scenarios, multiple IoT devices and service modules will be virtually deploy...

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Main Authors: Masaya Murakami, Daichi Kominami, Kenji Leibnitz, Masayuki Murata
Format: Article
Language:English
Published: MDPI AG 2018-04-01
Series:Sensors
Subjects:
Online Access:http://www.mdpi.com/1424-8220/18/4/1133
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spelling doaj-3634e930d8d244ca97d7644af6b168ca2020-11-24T21:44:54ZengMDPI AGSensors1424-82202018-04-01184113310.3390/s18041133s18041133Drawing Inspiration from Human Brain Networks: Construction of Interconnected Virtual NetworksMasaya Murakami0Daichi Kominami1Kenji Leibnitz2Masayuki Murata3Graduate School of Information Science and Technology, Osaka University, 1-5, Yamadaoka, Suita 565-0871, Osaka, JapanGraduate School of Economics, Osaka University, 1-7, Machikaneyama-cho, Toyonaka 560-0043, Osaka, JapanCenter for Information and Neural Networks (CiNet), 1-4, Yamadaoka, Suita 565-0871, Osaka, JapanGraduate School of Information Science and Technology, Osaka University, 1-5, Yamadaoka, Suita 565-0871, Osaka, JapanVirtualization of wireless sensor networks (WSN) is widely considered as a foundational block of edge/fog computing, which is a key technology that can help realize next-generation Internet of things (IoT) networks. In such scenarios, multiple IoT devices and service modules will be virtually deployed and interconnected over the Internet. Moreover, application services are expected to be more sophisticated and complex, thereby increasing the number of modifications required for the construction of network topologies. Therefore, it is imperative to establish a method for constructing a virtualized WSN (VWSN) topology that achieves low latency on information transmission and high resilience against network failures, while keeping the topological construction cost low. In this study, we draw inspiration from inter-modular connectivity in human brain networks, which achieves high performance when dealing with large-scale networks composed of a large number of modules (i.e., regions) and nodes (i.e., neurons). We propose a method for assigning inter-modular links based on a connectivity model observed in the cerebral cortex of the brain, known as the exponential distance rule (EDR) model. We then choose endpoint nodes of these links by controlling inter-modular assortativity, which characterizes the topological connectivity of brain networks. We test our proposed methods using simulation experiments. The results show that the proposed method based on the EDR model can construct a VWSN topology with an optimal combination of communication efficiency, robustness, and construction cost. Regarding the selection of endpoint nodes for the inter-modular links, the results also show that high assortativity enhances the robustness and communication efficiency because of the existence of inter-modular links of two high-degree nodes.http://www.mdpi.com/1424-8220/18/4/1133Internet of Thingsbrain networksvirtual networkswireless sensor networks
collection DOAJ
language English
format Article
sources DOAJ
author Masaya Murakami
Daichi Kominami
Kenji Leibnitz
Masayuki Murata
spellingShingle Masaya Murakami
Daichi Kominami
Kenji Leibnitz
Masayuki Murata
Drawing Inspiration from Human Brain Networks: Construction of Interconnected Virtual Networks
Sensors
Internet of Things
brain networks
virtual networks
wireless sensor networks
author_facet Masaya Murakami
Daichi Kominami
Kenji Leibnitz
Masayuki Murata
author_sort Masaya Murakami
title Drawing Inspiration from Human Brain Networks: Construction of Interconnected Virtual Networks
title_short Drawing Inspiration from Human Brain Networks: Construction of Interconnected Virtual Networks
title_full Drawing Inspiration from Human Brain Networks: Construction of Interconnected Virtual Networks
title_fullStr Drawing Inspiration from Human Brain Networks: Construction of Interconnected Virtual Networks
title_full_unstemmed Drawing Inspiration from Human Brain Networks: Construction of Interconnected Virtual Networks
title_sort drawing inspiration from human brain networks: construction of interconnected virtual networks
publisher MDPI AG
series Sensors
issn 1424-8220
publishDate 2018-04-01
description Virtualization of wireless sensor networks (WSN) is widely considered as a foundational block of edge/fog computing, which is a key technology that can help realize next-generation Internet of things (IoT) networks. In such scenarios, multiple IoT devices and service modules will be virtually deployed and interconnected over the Internet. Moreover, application services are expected to be more sophisticated and complex, thereby increasing the number of modifications required for the construction of network topologies. Therefore, it is imperative to establish a method for constructing a virtualized WSN (VWSN) topology that achieves low latency on information transmission and high resilience against network failures, while keeping the topological construction cost low. In this study, we draw inspiration from inter-modular connectivity in human brain networks, which achieves high performance when dealing with large-scale networks composed of a large number of modules (i.e., regions) and nodes (i.e., neurons). We propose a method for assigning inter-modular links based on a connectivity model observed in the cerebral cortex of the brain, known as the exponential distance rule (EDR) model. We then choose endpoint nodes of these links by controlling inter-modular assortativity, which characterizes the topological connectivity of brain networks. We test our proposed methods using simulation experiments. The results show that the proposed method based on the EDR model can construct a VWSN topology with an optimal combination of communication efficiency, robustness, and construction cost. Regarding the selection of endpoint nodes for the inter-modular links, the results also show that high assortativity enhances the robustness and communication efficiency because of the existence of inter-modular links of two high-degree nodes.
topic Internet of Things
brain networks
virtual networks
wireless sensor networks
url http://www.mdpi.com/1424-8220/18/4/1133
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