The vast amounts of data generated in wireless industrial networked deployments introduce significant challenges on the data distribution process to consumer nodes within the timeframes imposed by the requirements of the Industry 4.0 paradigm. Using technological and methodological enablers, we can compose centralized or decentralized data distribution methods, which are able to help meeting the data requirements of the industrial applications. In this paper, using the technological enablers of WirelessHART, RPL and the methodological enabler of proxy selection as building blocks, we compose the protocol stacks of four different methods (both centralized and decentralized) for data distribution in wireless industrial networks over the IEEE 802.15.4 physical layer. Although there have been several comparisons of relevant methods in the recent literature, we identify that most of those comparisons are either theoretical, or based on abstract simulation tools, unable to uncover the specific, detailed impacts of the methods to the underlying networking infrastructure. We implement the presented methods in OMNeT++ and we evaluate their performance via a detailed simulation analysis. Interestingly enough, we demonstrate that the careful selection of a limited set of proxies for data caching in the network can lead to increased data delivery success rate and low data access latency.

On the Performance of Data Distribution Methods for Wireless Industrial Networks / T.P. Raptis, A. Formica, E. Pagani, A. Passarella - In: Proceedings 1st IEEE International Workshop on Data Distribution in Industrial and Pervasive Internet (DIPI 2019)Prima edizione. - [s.l] : IEEE, 2019 Jun. - ISBN 9781728102702. (( Intervento presentato al 1. convegno International Workshop on Data Distribution in Industrial and Pervasive Internet (DIPI 2019) tenutosi a Washington nel 2019.

On the Performance of Data Distribution Methods for Wireless Industrial Networks

E. Pagani;
2019

Abstract

The vast amounts of data generated in wireless industrial networked deployments introduce significant challenges on the data distribution process to consumer nodes within the timeframes imposed by the requirements of the Industry 4.0 paradigm. Using technological and methodological enablers, we can compose centralized or decentralized data distribution methods, which are able to help meeting the data requirements of the industrial applications. In this paper, using the technological enablers of WirelessHART, RPL and the methodological enabler of proxy selection as building blocks, we compose the protocol stacks of four different methods (both centralized and decentralized) for data distribution in wireless industrial networks over the IEEE 802.15.4 physical layer. Although there have been several comparisons of relevant methods in the recent literature, we identify that most of those comparisons are either theoretical, or based on abstract simulation tools, unable to uncover the specific, detailed impacts of the methods to the underlying networking infrastructure. We implement the presented methods in OMNeT++ and we evaluate their performance via a detailed simulation analysis. Interestingly enough, we demonstrate that the careful selection of a limited set of proxies for data caching in the network can lead to increased data delivery success rate and low data access latency.
WirelessHART; RPL; Proxy Selection; Data Caching; OMNeT++; Industry 4.0
Settore INF/01 - Informatica
giu-2019
IEEE
http://cnd.iit.cnr.it/dipi2019/program.html
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Utilizza questo identificativo per citare o creare un link a questo documento: https://hdl.handle.net/2434/661864
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