期刊名称:International Journal of Applied Mathematics and Computer Science
电子版ISSN:2083-8492
出版年度:2019
卷号:29
期号:1
页码:1-14
DOI:10.2478/amcs-2019-0002
出版社:De Gruyter Open
摘要:Predictive analysis gradually gains importance in industry. For instance, service engineers at Siemens diagnostic centres
unveil hidden knowledge in huge amounts of historical sensor data and use it to improve the predictive systems analysing
live data. Currently, the analysis is usually done using data-dependent rules that are specific to individual sensors and
equipment. This dependence poses significant challenges in rule authoring, reuse, and maintenance by engineers. One
solution to this problem is to employ ontology-based data access (OBDA), which provides a conceptual view of data via
an ontology. However, classical OBDA systems do not support access to temporal data and reasoning over it. To address
this issue, we propose a framework for temporal OBDA. In this framework, we use extended mapping languages to extract
information about temporal events in the RDF format, classical ontology and rule languages to reflect static information,
as well as a temporal rule language to describe events. We also propose a SPARQL-based query language for retrieving
temporal information and, finally, an architecture of system implementation extending the state-of-the-art OBDA platform
Ontop.
关键词:metric temporal logic; ontology;based data access; SPARQL query; Ontop;