pp. 1789-1801
S&M1899 Research Paper of Special Issue https://doi.org/10.18494/SAM.2019.2333 Published: June 7, 2019 Dynamic Data Driven-based Automatic Clustering and Semantic Annotation for Internet of Things Sensor Data [PDF] Szu-Yin Lin, Jun-Bin Li, and Ching-Tzu Yu (Received February 14, 2019; Accepted April 1, 2019) Keywords: clustering, semantic annotation, ontology, Internet of Things, sensor data
Faced with the advent of the era of smart Internet of Things (IoT), a large amount of sensor data and a large number of intelligent applications have been introduced into our lives. However, the dynamic and multimodal nature of data makes it challenging to transform them into machine-readable and machine-interpretable forms. In this study, a semantic annotation method is proposed to annotate sensor data through semantics. First, the method constructs an initial ontology based on the semantic sensor network (SSN) ontology for dynamic IoT sensor data. Second, through K-means clustering, new knowledge is extracted from input data, and the semantic information is used for updating the initial ontology. The updated ontology then forms the basis of semantic annotation. In this study, an experiment is performed to analyze the data collected from sensors every 10 s for a period of one month. From the results of simulation experiments, we found useful knowledge from new data. With more available knowledge, sensor data can be annotated with higher adequacy.
Corresponding author: Szu-Yin LinThis work is licensed under a Creative Commons Attribution 4.0 International License. Cite this article Szu-Yin Lin, Jun-Bin Li, and Ching-Tzu Yu, Dynamic Data Driven-based Automatic Clustering and Semantic Annotation for Internet of Things Sensor Data, Sens. Mater., Vol. 31, No. 6, 2019, p. 1789-1801. |