Smart City Gnosys

Smart city article details

Title Taxonomy And Software Architecture For Real-Time Context-Aware Collaborative Smart Environments
ID_Doc 54471
Authors Bazan-Muñoz A.; Ortiz G.; Augusto J.C.; Garcia-de-Prado A.
Year 2024
Published Internet of Things (Netherlands), 26
DOI http://dx.doi.org/10.1016/j.iot.2024.101160
Abstract The widespread of Internet of Things (IoT) and the price reduction and ubiquity of telecommunications has led to the emergence of smart environments where devices are becoming increasingly smarter and everything is connected and from which society aims to benefit. The data obtained from IoT is rapidly processed in various domains for the achievement of smart cities and societies. However, in many cases, applications are not contextualized by using data from outside the domain but are only contextualized using data from the domain itself, missing the opportunity for further contextualization. The lack of common criteria for the integration of data from different application domains is one of the main reasons that significantly hinders the integration of third-party data into real-time processing and decision-making systems and thus, the context awareness of developed applications. Although the use of several taxonomies and ontologies for context awareness in various application domains have been proposed, in many cases they are highly domain specific and/or difficult to integrate with other systems, which makes it challenging to facilitate data sharing between different systems and their processing to achieve enhanced context awareness. We aim to contribute to the addressing of these limitations through a reusable and extensible multi-domain taxonomy targeted to collaborative IoT and smart environments, which is also automatically integrated into a software architecture with real-time complex event processing technologies. The proposed solution has been illustrated through a case study and performance tests have been carried out in different computing capacity scenarios, showing its feasibility and usefulness. © 2024 The Author(s)
Author Keywords Complex event processing; Context awareness; Internet of Things; Smart environment; Taxonomy


Similar Articles


Id Similarity Authors Title Published
15913 View0.869Kamienski, CA; Borelli, FF; Biondi, GO; Pinheiro, I; Zyrianoff, ID; Jentsch, MContext Design And Tracking For Iot-Based Energy Management In Smart CitiesIEEE INTERNET OF THINGS JOURNAL, 5, 2 (2018)
41686 View0.867Aguilar, J; Jerez, M; Mendonça, M; Sánchez, MPerformance Analysis Of The Ubiquitous And Emergent Properties Of An Autonomic Reflective Middleware For Smart CitiesCOMPUTING, 102, 10 (2020)
5137 View0.866Almagrabi A.O.; Al-Otaibi Y.D.A Survey Of Context-Aware Messaging-Addressing For Sustainable Internet Of Things (Iot)Sustainability (Switzerland), 12, 10 (2020)
53084 View0.862Medvedev, A; Zaslavsky, A; Indrawan-Santiago, M; Haghighi, PD; Hassani, AStoring And Indexing Iot Context For Smart City ApplicationsINTERNET OF THINGS, SMART SPACES, AND NEXT GENERATION NETWORKS AND SYSTEMS, NEW2AN 2016/USMART 2016, 9870 (2016)
2756 View0.86do Nascimento L.V.; de Oliveira J.P.M.A Multi-Agent Architecture For Context Sources Integration In Smart CitiesFuture Generation Computer Systems, 172 (2025)
1073 View0.855Aiello G.; Camillo A.; Del Coco M.; Giangreco E.; Pinnella M.; Pino S.; Storelli D.A Context Agnostic Air Quality Service To Exploit Data In The Ioe Era2019 4th International Conference on Smart and Sustainable Technologies, SpliTech 2019 (2019)
15242 View0.854Krishna M.H.; Manjunatha; Kumar R.; Singh N.; Kumar A.; Ftaiet A.A.Complex Event Processing In Web Streams With Ontology-Based Abstraction Layers For Smart City FrameworksTQCEBT 2024 - 2nd IEEE International Conference on Trends in Quantum Computing and Emerging Business Technologies 2024 (2024)
15931 View0.852Giallonardo E.; Poggi F.; Rossi D.; Zimeo E.Context-Aware Reactive Systems Based On Runtime Semantic ModelsProceedings of the International Conference on Software Engineering and Knowledge Engineering, SEKE, 2019-July (2019)
47337 View0.852Harika A.; Aravinda K.; Shrivastava A.; Nagpal A.; Praveen; Thajeel S.K.Scalable Ontology-Driven Data Mining Algorithms For Real-Time Analysis Of Iot Data StreamsTQCEBT 2024 - 2nd IEEE International Conference on Trends in Quantum Computing and Emerging Business Technologies 2024 (2024)
11996 View0.851Bibri S.E.Big Data Analytics And Context-Aware Computing: Characteristics, Commonalities, Differences, Applications, And ChallengesUrban Book Series (2018)