Human-Aware Sensor Network Ontology: Semantic Support for Empirical Data Collection

Significant efforts have been made to understand and document knowledge related to scientific measurements. Many of those efforts resulted in one or more high-quality ontologies that describe some aspects of scientific measurements, but not in a comprehensive and coherently integrated manner. For instance, we note that many of these high-quality ontologies are not properly aligned, and more challenging, that they have different and often conflicting concepts and approaches for encoding knowledge about empirical measurements. As a result of this lack of an integrated view, it is often challenging for scientists to determine whether any two scientific measurements were taken in semantically compatible manners, thus making it difficult to decide whether measurements should be analyzed in combination or not. In this paper, we present the Human-Aware Sensor Network Ontology that is a comprehensive alignment and integration of a sensing infrastructure ontology and a provenance ontology. HASNetO has been under development for more than one year, and has been reviewed, shared and used by multiple scientific communities. The ontology has been in use to support the data management of a number of large-scale ecological monitoring activities (observations) and empirical experiments.

[1]  Florian Probst Ontological Analysis of Observations and Measurements , 2006, GIScience.

[2]  Werner Kuhn A Functional Ontology of Observation and Measurement , 2009, GeoS.

[3]  Shawn Bowers,et al.  An ontology for describing and synthesizing ecological observation data , 2007, Ecol. Informatics.

[4]  Deborah L. McGuinness,et al.  Ontology-supported scientific data frameworks: The Virtual Solar-Terrestrial Observatory experience , 2009, Comput. Geosci..

[5]  Amit P. Sheth,et al.  The SSN ontology of the W3C semantic sensor network incubator group , 2012, J. Web Semant..

[6]  Deborah L. McGuinness,et al.  PROV-O: The PROV Ontology , 2013 .

[7]  Anna Fensel,et al.  SESAME-S: Semantic Smart Home System for Energy Efficiency , 2013, Informatik-Spektrum.

[8]  Thanos G. Stavropoulos,et al.  BOnSAI: a smart building ontology for ambient intelligence , 2012, WIMS '12.

[9]  W. Quine From Stimulus to Science , 1995 .

[10]  R. C. Groman,et al.  Evolving the BCO-DMO search interface - experience with semantic and smart search , 2010 .

[11]  Ricardo Usbeck,et al.  Combining Linked Data and Statistical Information Retrieval - Next Generation Information Systems , 2014, ESWC.

[12]  Amit P. Sheth,et al.  A Survey of the Semantic Specification of Sensors , 2009, SSN.

[13]  Christoph Stasch,et al.  A Stimulus-Centric Algebraic Approach to Sensors and Observations , 2009, GSN.

[14]  Paul T. Groth,et al.  Provenance XG Final Report , 2010 .

[15]  Deborah L. McGuinness,et al.  Contextual Data Collection for Smart Cities , 2015, S4SC@ISWC.

[16]  James Cheney,et al.  PROV-O: The PROV ontology:W3C recommendation 30 April 2013 , 2013 .