Ir al contenido

Documat


Incremental hierarchical clustering driven automatic annotations for unifying iot streaming data

  • Sivadi Balakrishna [2] ; M.Thirumaran [2] ; Vijender Kumar Solanki [3] ; Edward Rolando Núñez-Valdez [1] Árbol académico
    1. [1] Universidad de Oviedo

      Universidad de Oviedo

      Oviedo, España

    2. [2] Pondicherry Engineering College
    3. [3] CMR Institute of Technology, Hyderabad, TS (India)
  • Localización: IJIMAI, ISSN-e 1989-1660, Vol. 6, Nº. 2, 2020, págs. 56-70
  • Idioma: inglés
  • DOI: 10.9781/ijimai.2020.03.001
  • Enlaces
  • Resumen
    • In the Internet of Things (IoT), Cyber-Physical Systems (CPS), and sensor technologies huge and variety of streaming sensor data is generated. The unification of streaming sensor data is a challenging problem. Moreover, the huge amount of raw data has implied the insufficiency of manual and semi-automatic annotation and leads to an increase of the research of automatic semantic annotation. However, many of the existing semantic annotation mechanisms require many joint conditions that could generate redundant processing of transitional results for annotating the sensor data using SPARQL queries. In this paper, we present an Incremental Clustering Driven Automatic Annotation for IoT Streaming Data (IHC-AA-IoTSD) using SPARQL to improve the annotation efficiency. The processes and corresponding algorithms of the incremental hierarchical clustering driven automatic annotation mechanism are presented in detail, including data classification, incremental hierarchical clustering, querying the extracted data, semantic data annotation, and semantic data integration. The IHCAA-IoTSD has been implemented and experimented on three healthcare datasets and compared with leading approaches namely- Agent-based Text Labelling and Automatic Selection (ATLAS), Fuzzy-based Automatic Semantic Annotation Method (FBASAM), and an Ontology-based Semantic Annotation Approach (OBSAA), yielding encouraging results with Accuracy of 86.67%, Precision of 87.36%, Recall of 85.48%, and F-score of 85.92% at 100k triple data.

  • Referencias bibliográficas
    • G. Xiao, J. Guo, L. D. Xu, and Z. Gong, “User interoperability with heterogeneous IoT devices through transformation,” IEEE Transactions on...
    • Rohit Dhall & Vijender Kumar Solanki, “An IoT Based Predictive Connected Car Maintenance Approach,” International Journal of Interactive...
    • Sivadi Balakrishna, M Thirumaran, R. Padmanaban, and Vijender Kumar Solanki “An Efficient Incremental Clustering based Improved K-Medoids...
    • Sivadi Balakrishna, M Thirumaran, and Vijender Kumar Solanki “Machine Learning based Improved GMM Mechanism for IoT Real-Time Dynamic Data...
    • H. T. Lin, “Implementing Smart Homes with Open Source Solutions”, International Journal of Smart Home Vol.7 Issue. 4, pp 289–295, 2013.
    • Antunes, Mário, Diogo Gomes, and Rui L. Aguiar. “Towards IoT data classification through semantic features.” Future Generation Computer Systems,...
    • M. Junling, J. Xueqin, and L. Hongqi, “Research on Semantic Architecture and Semantic Technology of IoT,” Research and Development, vol. 8,...
    • Q. Xu, P. Ren, H. Song, and Q. Du, “Security enhancement for IoT communications exposed to eavesdroppers with uncertain locations,” IEEE Access,...
    • D. Rong, “The Research on Automatic Semantic Annotation Methods”, Lanzhou University of Technology, Lanzhou, China, 2012.
    • F. Chen, C. Lu, H.Wu. Wu, and M. Li, “A semantic similarity measure integrating multiple conceptual relationships for web service discovery,”...
    • C. De Maio, G. Fenza, M. Gallo, V. Loia, and S. Senatore, “Formal and relational concept analysis for fuzzy-based automatic semantic annotation,”...
    • P. Barnaghi, W. Wang, L. Dong, and C. Wang, “A linked-data model for semantic sensor streams,” IEEE International Conference on and IEEE Cyber,...
    • S. Kolozali, M. Bermudez-Edo, D. Puschmann, F. Ganz, and P. Barnaghi, “A knowledge-based approach for real-time IoT data stream annotation...
    • W. Wei and P. Barnaghi, “Semantic annotation and reasoning for sensor data,” in Smart Sensing and Context, vol. 5741 of Lecture Notes in Computer...
    • P. Chenyi, Service-oriented entity semantic annotation in internet of things, South China University of Technology, Guangzhou, China, 2015.
    • J. Bing, “Research on semantic-based service architecture and key algorithms for the internet of things”, Jilin University, Changchun, China,...
    • Z. Ming, “Research on several key issues in internet of things applications”, Beijing University of Posts and Telecommunications, Beijing,...
    • E. Charton, M. Gagnon, and B. Ozell, “Automatic semantic web annotation of named entities,” in Advances in Artificial Intelligence, vol. 6657...
    • G. Diallo, M. Simonet, and A. Simonet, “An approach to automatic ontology-based annotation of biomedical texts,” Lecture Notes in Computer...
    • M. Jacoby, A. Antonic, K. Kreiner, R. Lapacz, J. Pielorz. “Semantic interoperability as key to IoT platform federation,” in LNCS 10218: Interoperability...
    • A.P. Plageras, K.E. Psannis, C. Stergiou, H. Wang, B.B. Gupta, “ Efficient IoT- based sensor BIG Data collection- processing and analysis...
    • A. E. Khaled, S. Helal, “Interoperable communication framework for bridging RESTful and topic-based communication in IoT”, Future Generation...
    • Kolozali, S. Puschmann, D.; Bermudez-Edo, M.; Barnaghi, P. “On the Effect of Adaptive and Non adaptive Analysis of Time-Series Sensory Data”,...
    • Mazayev, Andriy, Jaime A. Martins, and Noélia Correia. “Interoperability in IoT through the Semantic Profiling of Objects.” IEEE Access 6,...
    • Mayer, Simon, Jack Hodges, Dan Yu, Mareike Kritzler, and Florian Michahelles. “An open semantic framework for the industrial Internet of Things.”...
    • Shi, Feifei, Qingjuan Li, Tao Zhu, and Huansheng Ning. “A survey of data semantization in internet of things.” Sensors 18, no. 1, 313, 2018.
    • Al Zamil, Mohammed Gh, Majdi Rawashdeh, Samer Samarah, M. Shamim Hossain, Awny Alnusair, and Sk Md Mizanur Rahman. “An annotation technique...
    • Moutinho, Filipe, Luís Paiva, Julius Köpke, and Pedro Maló. “Extended Semantic Annotations for Generating Translators in the Arrowhead Framework.”...

Fundación Dialnet

Mi Documat

Opciones de artículo

Opciones de compartir

Opciones de entorno