| 
          
            On Sustainability of Context-Aware Services Among Heterogeneous Smart Spaces
            
            
               Jason J. Jung (Yeungnam University, Korea)  
              
             
                    
            
              Abstract: Most of ambient intelligence studies have tried   to employ inductive methods (e.g., data mining) to discover useful   information and patterns from data streams on sensor   networks. However, since the spaces have been sharing their   information with each other, it is difficult for such inductive   methods to conduct the discovery process from the sensor streams   intermixed from the heterogeneous sensor networks. In this paper, we   propose an ontology-based middleware system to improve   sustainability of context-aware service in the interconnected smart   spaces. Two main challenges of this work are i) sensor data   preprocessing (i.e., session identification) and ii) information   fusion (i.e., information integration). The ontology in each sensor   space can provide and describe semantics of data measured by each   sensor. By aligning these ontologies from the sensor spaces, the   semantics of sensor data captured inside can be compared. Thus, we   can find out not only relationships between sensor streams but also   temporal dynamics of a data stream. To evaluate the proposed method,   we have collected sensor streams from in our building during 30   days. By using two well-known data mining methods (i.e.,   co-occurrence pattern and sequential pattern), the results from raw   sensor streams and ones from sensor streams with preprocessing were   compared with respect to two measurements recall and   precision. 
             
            
              Keywords: ontology, preprocessing, semantic sensor networks;, stream mining 
             
            Categories: H.1.1, H.3.5, I.2.11  
           |