DocumentCode
2133271
Title
Real time analysis of sensor data for the Internet of Things by means of clustering and event processing
Author
Hromic, Hugo ; Le Phuoc, Danh ; Serrano, Martin ; Antonic, Aleksandar ; Zarko, Ivana P. ; Hayes, Conor ; Decker, Stefan
Author_Institution
NUI Galway - Information Mining and Retrieval Unit, Insight Centre for Data Analytics, Ireland
fYear
2015
fDate
8-12 June 2015
Firstpage
685
Lastpage
691
Abstract
Sensor technology and sensor networks have evolved so rapidly that they are now considered a core driver of the Internet of Things (IoT), however data analytics on IoT streams is still in its infancy. This paper introduces an approach to sensor data analytics by using the OpenIoT1 middleware; real time event processing and clustering algorithms have been used for this purpose. The OpenIoT platform has been extended to support stream processing and thus we demonstrate its flexibility in enabling real time on-demand application domain analytics. We use mobile crowd-sensed data, provided in real time from wearable sensors, to analyse and infer air quality conditions. This experimental evaluation has been implemented using the design principles and methods for IoT data interoperability specified by the OpenIoT project. We describe an event and clustering analytics server that acts as an interface for novel analytical IoT services. The approach presented in this paper also demonstrates how sensor data acquired from mobile devices can be integrated within IoT platforms to enable analytics on data streams. It can be regarded as a valuable tool to understand complex phenomena, e.g., air pollution dynamics and its impact on human health.
Keywords
Correlation; Internet of things; Middleware; Real-time systems; Sensors; Servers; Temperature measurement; Applications; Cloud Computing; Intelligence Server; Interoperability; Linked Data; Sensor Data; Services;
fLanguage
English
Publisher
ieee
Conference_Titel
Communications (ICC), 2015 IEEE International Conference on
Conference_Location
London, United Kingdom
Type
conf
DOI
10.1109/ICC.2015.7248401
Filename
7248401
Link To Document