Smart City Gnosys

Smart city article details

Title Scalable Ontology-Driven Data Mining Algorithms For Real-Time Analysis Of Iot Data Streams
ID_Doc 47337
Authors Harika A.; Aravinda K.; Shrivastava A.; Nagpal A.; Praveen; Thajeel S.K.
Year 2024
Published TQCEBT 2024 - 2nd IEEE International Conference on Trends in Quantum Computing and Emerging Business Technologies 2024
DOI http://dx.doi.org/10.1109/TQCEBT59414.2024.10545061
Abstract The emergence of Internet of Things (IoT) technology has resulted in an unparalleled surge of data streams, requiring sophisticated approaches for instantaneous analysis. This research study presents scalable ontology-driven data mining techniques that aim to improve the efficiency and accuracy of extracting information from real-time IoT data streams. The suggested system combines semantic web technologies with data mining to tackle the inherent issues of velocity, diversity, and volume of IoT data. The technique guarantees dynamic scalability and enhanced contextual comprehension by combining ontology-based data architecture with adaptive data mining technologies. The ontology functions as a semantic layer, enabling the seamless integration of dynamic data, the representation of knowledge, and the processing of queries. Meanwhile, the adaptive algorithms aim to optimize performance in real-time and ensure efficient utilization of resources. The research assesses the architecture by conducting comprehensive experiments using actual IoT information, showcasing substantial improvements in decision-making velocity and data throughput. This study makes a valuable contribution to the area by providing a strong and effective solution for analyzing real-time data from the IoT. This solution allows for intelligent decision-making in several domains, including smart cities, healthcare, and industrial automation. The use of an ontology-driven approach not only improves the understanding of data and increases the speed at which it is processed, but also allows for adaptation to changing data streams. This ensures consistent performance even in the face of a constant flood of data from the IoT. © 2024 IEEE.
Author Keywords Data Mining; Internet of Things; Ontology; RealTime Analysis; Scalable Algorithms


Similar Articles


Id Similarity Authors Title Published
11339 View0.892Saeed M.R.; Chelmis C.; Prasanna V.K.Automatic Integration And Querying Of Semantic Rich Heterogeneous Data: Laying The Foundations For Semantic Web Of ThingsManaging the Web of Things: Linking the Real World to the Web (2017)
23844 View0.882Kanzouai C.; Bouarourou S.; Zannou A.; Boulaalam A.; Nfaoui E.H.Enhancing Iot Scalability And Interoperability Through Ontology Alignment And FedproxFuture Internet, 17, 4 (2025)
48281 View0.88Bamgboye O.; Liu X.; Cruickshank P.; Liu Q.Semantic-Driven Approach For Validation Of Iot Streaming Data In Trustable Smart City Decision-Making And Monitoring SystemsBig Data and Cognitive Computing, 9, 4 (2025)
4559 View0.879Ranpara R.A Semantic And Ontology-Based Framework For Enhancing Interoperability And Automation In Iot SystemsDiscover Internet of Things, 5, 1 (2025)
23773 View0.877Hu L.; Shu Y.Enhancing Decision-Making With Data Science In The Internet Of Things EnvironmentsInternational Journal of Advanced Computer Science and Applications, 14, 9 (2023)
2340 View0.875Marshoodulla S.Z.; Saha G.A Lightweight Semantic Model For Iot Architecture: Smart Water Meter Usecase2023 4th International Conference on Computing and Communication Systems, I3CS 2023 (2023)
31427 View0.871Hassani A.; Montori F.; Liao K.; Haghighi P.D.; Jayaraman P.P.; Georgakopoulos D.; Giosa M.D.; Zaslavsky A.Inform: A Tool For Classification And Semantic Annotation Of Iot Datastreams7th IEEE World Forum on Internet of Things, WF-IoT 2021 (2021)
15242 View0.87Krishna 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)
48285 View0.869Balakrishna S.; Thirumaran M.Semantics And Clustering Techniques For Iot Sensor Data Analysis: A Comprehensive SurveyIntelligent Systems Reference Library, 174 (2019)
35038 View0.869Mukherjee S.; Gupta S.; Rawlley O.; Jain S.Leveraging Big Data Analytics In 5G-Enabled Iot And Industrial Iot For The Development Of Sustainable Smart CitiesTransactions on Emerging Telecommunications Technologies, 33, 12 (2022)