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Querying Industrial Stream-Temporal Data: an Ontology-based Visual Approach

机译:查询工业流-时间数据:基于本体的可视化方法

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摘要

An increasing number of sensors are being deployed in business-critical environments, systems, and equipment; and stream a vast amount of data. The operational efficiency and effectiveness of business processes rely on domain experts’ agility in interpreting data into actionable business information. A domain expert has extensive domain knowledge but not necessarily skills and knowledge on databases and formal query languages. Therefore, centralised approaches are often preferred. These require IT experts to translate the information needs of domain experts into extract-transform-load (ETL) processes in order to extract and integrate data and then let domain experts apply predefined analytics. Since such a workflow is too time intensive, heavy-weight and inflexible given the high volume and velocity of data, domain experts need to extract and analyse the data of interest directly. Ontologies, i.e., semantically rich conceptual domain models, present an intelligible solution by describing the domain of interest on a higher level of abstraction closer to the reality. Moreover, recent ontology-based data access (OBDA) technologies enable end users to formulate their information needs into queries using a set of terms defined in an ontology. Ontological queries could then be translated into SQL or some other database query languages, and executed over the data in its original place and format automatically. To this end, this article reports an ontology-based visual query system (VQS), namely OptiqueVQS, how it is extended for a stream-temporal query language called STARQL, a user experiment with the domain experts at Siemens AG, and STARQL’s query answering performance over a proof of concept implementation for PostgreSQL.
机译:在关键业务环境,系统和设备中部署了越来越多的传感器;并传输大量数据。业务流程的运营效率和有效性取决于领域专家将数据解释为可操作的业务信息的敏捷性。领域专家具有广泛的领域知识,但不一定具有有关数据库和正式查询语言的技能和知识。因此,通常首选集中式方法。这些要求IT专家将领域专家的信息需求转换为提取-转换-加载(ETL)流程,以便提取和集成数据,然后让领域专家应用预定义的分析。由于这样的工作流程太耗时,笨重且不灵活,因为数据量大且速度快,因此领域专家需要直接提取和分析感兴趣的数据。本体,即语义丰富的概念域模型,通过在更接近现实的更高抽象层次上描述关注域,提出了一种可理解的解决方案。此外,最近的基于本体的数据访问(OBDA)技术使最终用户能够使用本体中定义的一组术语将其信息需求表达为查询。然后,可以将本体查询转换为SQL或其他数据库查询语言,并自动以其原始位置和格式对数据执行。为此,本文报告了基于本体的视觉查询系统(VQS),即OptiqueVQS,如何将其扩展为称为STARQL的流时态查询语言,西门子股份公司领域专家的用户实验以及STARQL的查询回答性能优于PostgreSQL的概念验证实现。

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