Spatial Ontology-Mediated Query Answering over Mobility Streams
نویسندگان
چکیده
The development of (semi)-autonomous vehicles and communication between vehicles and infrastructure (V2X) will aid to improve road safety by identifying dangerous traffic scenes. A key to this is the Local Dynamic Map (LDM), which acts as an integration platform for static, semi-static, and dynamic information about traffic in a geographical context. At present, the LDM approach is purely database-oriented with simple query capabilities, while an elaborate domain model as captured by an ontology and queries over data streams that allow for semantic concepts and spatial relationships are still missing. To fill this gap, we present an approach in the context of ontology-mediated query answering that features conjunctive queries over DL-LiteA ontologies allowing spatial relations and window operators over streams having a pulse. For query evaluation, we present a rewriting approach to ordinary DL-LiteA that transforms spatial relations involving epistemic aggregate queries and uses a decomposition approach that generates a query execution plan. Finally, we report on experiments with two scenarios and evaluate our implementation based on the stream RDBMS PipelineDB.
منابع مشابه
Towards Spatial Ontology-Mediated Query Answering over Mobility Streams
The development of (semi)-autonomous vehicles and communication between vehicles and infrastructure (V2X) will aid to improve road safety by identifying dangerous traffic scenes. A key to this is the Local Dynamic Map (LDM), which acts as an integration platform for static, semi-static, and dynamic information about traffic in a geographical context. At present, the LDM approach is purely datab...
متن کاملDetecting Mobility Patterns using Spatial Query Answering over Streams
The development of (semi)-autonomous vehicles and communication between vehicles and infrastructure (V2X) will aid to improve road safety and reduce emissions by identifying dangerous traffic scenes based on movement patterns. A key to this is the Local Dynamic Map (LDM), which acts as an integration platform for static, temporary, and dynamic information about traffic in a geographical context...
متن کاملTowards Temporal Fuzzy Query Answering on Stream-based Data
For reasoning over streams of data ontology-based data access is a common approach. The method for answering conjunctive queries (CQs) over DL-Lite ontologies in this setting is by rewritings of the query and evaluation of the resulting query by a data base engine. For streambased applications the classical expressivity of DL-Lite lacks means to handle fuzzy and temporal information. In this pa...
متن کاملOntology-Mediated Query Answering: Harnessing Knowledge to Get More from Data
Ontology-mediated query answering (OMQA) is a new paradigm in data management that seeks to exploit the semantic knowledge expressed in ontologies to improve query answering over data. This paper briefly introduces OMQA and gives an overview of two recent lines of research.
متن کاملComputationally Feasible Query Answering over Spatio-thematic Ontologies
Providing query answering facilities at the conceptual level of a geographic data model requires deduction, and deduction in geographical information systems (GIS) is a demanding task due to the size of the data that are stored in secondary memory. In particular, this is the case for deductive query answering w.r.t. spatio-thematic ontologies, which provide a logical conceptualization of an app...
متن کامل