Search Techniques for the Web of Things: A Taxonomy and Survey

The Web of Things aims to make physical world objects and their data accessible through standard Web technologies to enable intelligent applications and sophisticated data analytics. Due to the amount and heterogeneity of the data, it is challenging to perform data analysis directly; especially when...

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Main Authors: Yuchao Zhou, Suparna De, Wei Wang, Klaus Moessner
Format: Article
Language:English
Published: MDPI AG 2016-04-01
Series:Sensors
Subjects:
Online Access:http://www.mdpi.com/1424-8220/16/5/600
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spelling doaj-e492ae86f3614c078fe578d2fea1de412020-11-24T22:17:15ZengMDPI AGSensors1424-82202016-04-0116560010.3390/s16050600s16050600Search Techniques for the Web of Things: A Taxonomy and SurveyYuchao Zhou0Suparna De1Wei Wang2Klaus Moessner3Institute for Communication Systems (ICS), University of Surrey, Guildford GU2 7XH, UKInstitute for Communication Systems (ICS), University of Surrey, Guildford GU2 7XH, UKDepartment of Computer Science and Software Engineering, Xi’an Jiaotong-Liverpool University, Ren’ai Road Dushu Lake Higher Education Town SIP, Suzhou 215123, ChinaInstitute for Communication Systems (ICS), University of Surrey, Guildford GU2 7XH, UKThe Web of Things aims to make physical world objects and their data accessible through standard Web technologies to enable intelligent applications and sophisticated data analytics. Due to the amount and heterogeneity of the data, it is challenging to perform data analysis directly; especially when the data is captured from a large number of distributed sources. However, the size and scope of the data can be reduced and narrowed down with search techniques, so that only the most relevant and useful data items are selected according to the application requirements. Search is fundamental to the Web of Things while challenging by nature in this context, e.g., mobility of the objects, opportunistic presence and sensing, continuous data streams with changing spatial and temporal properties, efficient indexing for historical and real time data. The research community has developed numerous techniques and methods to tackle these problems as reported by a large body of literature in the last few years. A comprehensive investigation of the current and past studies is necessary to gain a clear view of the research landscape and to identify promising future directions. This survey reviews the state-of-the-art search methods for the Web of Things, which are classified according to three different viewpoints: basic principles, data/knowledge representation, and contents being searched. Experiences and lessons learned from the existing work and some EU research projects related to Web of Things are discussed, and an outlook to the future research is presented.http://www.mdpi.com/1424-8220/16/5/600searchWeb of ThingsInternet of Thingslinked datastreaming dataobservation and measurement datasensorsentities
collection DOAJ
language English
format Article
sources DOAJ
author Yuchao Zhou
Suparna De
Wei Wang
Klaus Moessner
spellingShingle Yuchao Zhou
Suparna De
Wei Wang
Klaus Moessner
Search Techniques for the Web of Things: A Taxonomy and Survey
Sensors
search
Web of Things
Internet of Things
linked data
streaming data
observation and measurement data
sensors
entities
author_facet Yuchao Zhou
Suparna De
Wei Wang
Klaus Moessner
author_sort Yuchao Zhou
title Search Techniques for the Web of Things: A Taxonomy and Survey
title_short Search Techniques for the Web of Things: A Taxonomy and Survey
title_full Search Techniques for the Web of Things: A Taxonomy and Survey
title_fullStr Search Techniques for the Web of Things: A Taxonomy and Survey
title_full_unstemmed Search Techniques for the Web of Things: A Taxonomy and Survey
title_sort search techniques for the web of things: a taxonomy and survey
publisher MDPI AG
series Sensors
issn 1424-8220
publishDate 2016-04-01
description The Web of Things aims to make physical world objects and their data accessible through standard Web technologies to enable intelligent applications and sophisticated data analytics. Due to the amount and heterogeneity of the data, it is challenging to perform data analysis directly; especially when the data is captured from a large number of distributed sources. However, the size and scope of the data can be reduced and narrowed down with search techniques, so that only the most relevant and useful data items are selected according to the application requirements. Search is fundamental to the Web of Things while challenging by nature in this context, e.g., mobility of the objects, opportunistic presence and sensing, continuous data streams with changing spatial and temporal properties, efficient indexing for historical and real time data. The research community has developed numerous techniques and methods to tackle these problems as reported by a large body of literature in the last few years. A comprehensive investigation of the current and past studies is necessary to gain a clear view of the research landscape and to identify promising future directions. This survey reviews the state-of-the-art search methods for the Web of Things, which are classified according to three different viewpoints: basic principles, data/knowledge representation, and contents being searched. Experiences and lessons learned from the existing work and some EU research projects related to Web of Things are discussed, and an outlook to the future research is presented.
topic search
Web of Things
Internet of Things
linked data
streaming data
observation and measurement data
sensors
entities
url http://www.mdpi.com/1424-8220/16/5/600
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AT klausmoessner searchtechniquesforthewebofthingsataxonomyandsurvey
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