Journal of Spatial Information Science (Jun 2013)

A dynamic and context-aware semantic mediation service for discovering and fusion of heterogeneous sensor data

  • Mohamed Bakillah,
  • Steve H.L. Liang,
  • Alexander Zipf,
  • Mir Abolfazl Mostafavi

DOI
https://doi.org/10.5311/JOSIS.2013.6.104
Journal volume & issue
Vol. 2013, no. 6
pp. 155 – 185

Abstract

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Sensors play an increasingly critical role in capturing and distributing observation of phenomena in our environment. The Semantic Sensor Web enables interoperability to support various applications that use data made available by semantically heterogeneous sensor services. However, several challenges still need to be addressed to achieve this vision. More particularly, mechanisms that can support context-aware semantic mapping that adapts to dynamic metadata of sensors are required. Semantic mapping for Sensor Web is required to support sensor data fusion, sensor data discovery and retrieval, and automatic semantic annotation, to name only a few applications. This paper presents a context-aware ontology-based semantic mediation service for heterogeneous sensor services. The semantic mediation service is context-aware and dynamic because it takes into account the real-time variability of thematic, spatial and temporal features that describe sensor data in different contexts. The semantic mediation service integrates rule-based reasoning to support resolution of semantic heterogeneities. An application scenario is presented showing how the semantic mediation service can improve sensor data interpretation, reuse, and sharing in static and dynamic settings.

Keywords