Lightweight Data-Security Ontology for IoT

Although current estimates depict steady growth in Internet of Things (IoT), many works portray an as yet immature technology in terms of security. Attacks using low performance devices, the application of new technologies and data analysis to infer private data, lack of development in some aspects...

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Bibliographic Details
Main Authors: Pedro Gonzalez-Gil, Juan Antonio Martinez, Antonio F. Skarmeta
Format: Article
Language:English
Published: MDPI AG 2020-02-01
Series:Sensors
Subjects:
iot
Online Access:https://www.mdpi.com/1424-8220/20/3/801
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spelling doaj-22fcdf3c63dd4dbd9b6c9d0bae9ce64f2020-11-25T01:30:14ZengMDPI AGSensors1424-82202020-02-0120380110.3390/s20030801s20030801Lightweight Data-Security Ontology for IoTPedro Gonzalez-Gil0Juan Antonio Martinez1Antonio F. Skarmeta2Dept. Ingeniería de la Información y las Comunicaciones, Facultad de Informática, Universidad de Murcia, 30100 Murcia, SpainOdin Solutions, Polígono Industrial Oeste C/ Perú, 5, 3∘, Oficina 12, 30820 Alcantarilla (Murcia), SpainDept. Ingeniería de la Información y las Comunicaciones, Facultad de Informática, Universidad de Murcia, 30100 Murcia, SpainAlthough current estimates depict steady growth in Internet of Things (IoT), many works portray an as yet immature technology in terms of security. Attacks using low performance devices, the application of new technologies and data analysis to infer private data, lack of development in some aspects of security offer a wide field for improvement. The advent of Semantic Technologies for IoT offers a new set of possibilities and challenges, like data markets, aggregators, processors and search engines, which rise the need for security. New regulations, such as GDPR, also call for novel approaches on data-security, covering personal data. In this work, we present DS4IoT, a data-security ontology for IoT, which covers the representation of data-security concepts with the novel approach of doing so from the perspective of data and introducing some new concepts such as regulations, certifications and provenance, to classical concepts such as access control methods and authentication mechanisms. In the process we followed ontological methodologies, as well as semantic web best practices, resulting in an ontology to serve as a common vocabulary for data annotation that not only distinguishes itself from previous works by its bottom-up approach, but covers new, current and interesting concepts of data-security, favouring implicit over explicit knowledge representation. Finally, this work is validated by proof of concept, by mapping the DS4IoT ontology to the NGSI-LD data model, in the frame of the IoTCrawler EU project.https://www.mdpi.com/1424-8220/20/3/801iotsecurity ontolgoydata-securitycertificationregulationprovenance
collection DOAJ
language English
format Article
sources DOAJ
author Pedro Gonzalez-Gil
Juan Antonio Martinez
Antonio F. Skarmeta
spellingShingle Pedro Gonzalez-Gil
Juan Antonio Martinez
Antonio F. Skarmeta
Lightweight Data-Security Ontology for IoT
Sensors
iot
security ontolgoy
data-security
certification
regulation
provenance
author_facet Pedro Gonzalez-Gil
Juan Antonio Martinez
Antonio F. Skarmeta
author_sort Pedro Gonzalez-Gil
title Lightweight Data-Security Ontology for IoT
title_short Lightweight Data-Security Ontology for IoT
title_full Lightweight Data-Security Ontology for IoT
title_fullStr Lightweight Data-Security Ontology for IoT
title_full_unstemmed Lightweight Data-Security Ontology for IoT
title_sort lightweight data-security ontology for iot
publisher MDPI AG
series Sensors
issn 1424-8220
publishDate 2020-02-01
description Although current estimates depict steady growth in Internet of Things (IoT), many works portray an as yet immature technology in terms of security. Attacks using low performance devices, the application of new technologies and data analysis to infer private data, lack of development in some aspects of security offer a wide field for improvement. The advent of Semantic Technologies for IoT offers a new set of possibilities and challenges, like data markets, aggregators, processors and search engines, which rise the need for security. New regulations, such as GDPR, also call for novel approaches on data-security, covering personal data. In this work, we present DS4IoT, a data-security ontology for IoT, which covers the representation of data-security concepts with the novel approach of doing so from the perspective of data and introducing some new concepts such as regulations, certifications and provenance, to classical concepts such as access control methods and authentication mechanisms. In the process we followed ontological methodologies, as well as semantic web best practices, resulting in an ontology to serve as a common vocabulary for data annotation that not only distinguishes itself from previous works by its bottom-up approach, but covers new, current and interesting concepts of data-security, favouring implicit over explicit knowledge representation. Finally, this work is validated by proof of concept, by mapping the DS4IoT ontology to the NGSI-LD data model, in the frame of the IoTCrawler EU project.
topic iot
security ontolgoy
data-security
certification
regulation
provenance
url https://www.mdpi.com/1424-8220/20/3/801
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AT juanantoniomartinez lightweightdatasecurityontologyforiot
AT antoniofskarmeta lightweightdatasecurityontologyforiot
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