Skip to content

Thecave3/adaptive-rsync-stat

Folders and files

NameName
Last commit message
Last commit date

Latest commit

 

History

16 Commits
 
 
 
 
 
 
 
 
 
 

Repository files navigation

Exploiting Edge Computing for Adaptive Data Update in Internet of Things Networks

AdaptiveStatisticCalculator






Andrea Petroni∗, Andrea Lacava∗, Pierluigi Locatelli∗, Gianluigi Nero∗, Marcello Pediconi†, Francesca Cuomo∗

∗Department of Information Engineering, Electronics and Telecommunications La Sapienza University of Rome, Italy; †Aenduo s.r.l., Rome, Italy;

Abstract - With the incoming of pervasive Internet of Things (IoT) era it is expected to have billions of entities simultaneously connected to the network, sharing heterogeneous data over different applications. Such a scenario would therefore open new challenges about network management and information exchange rules. In this context, the increasing data volume may especially lead Cloud-based services to be suffering from overload and data traffic consumption increase when serving a huge number of devices. A potential approach to address this problem is related to edge computing, including all those enabling technologies able to move large part of network computing close to the data sources, proving several benefits in terms of latency reduction, bandwidth optimization and security. Another aspect impacting the performance is the optimization of the amount data volumes transmitted by the IoT devices. This task is accomplished by specific data synchronization protocols and algorithms that are responsible for information exchange between the device and the cloud. In this direction, we consider a decentralized IoT cloud framework where devices connect to the data center through an IoT gateway. Moreover, we present a mechanism for data synchronization that considers Octodiff, a well known tool for data compression, combined with an adaptive algorithm specifically tailored to limited, variable, IoT traffic volumes. By investigating the performance of the proposed architecture, we show how the traffic amount generated by IoT cloud-services can be conveniently reduced.

About

Exploiting Edge Computing for Adaptive Data Update in Internet of Things Networks

Resources

Stars

Watchers

Forks

Releases

No releases published

Packages

No packages published

Contributors 2

  •  
  •