Ontology-based reasoning to reconFigure industrial processes for energy efficiency

Dimitrios Kouzapas, Nearchos Stylianidis, C. Panayiotou, Demetrios G. Eliades
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Abstract

Modern factories collect and process a large volume of different types of industrial process data. These data are used to develop metrics and Key Performance Indicators to monitor and improve productivity and the efficiency of a factory. Improving the efficiency of an industrial process, however, This work develops an ontology-based framework that semantically describes an industrial process, and in particular it describes the elements of physical connectivity, industrial behaviour, and KPIs. Using a notion of sub-process hierarchy, a Decision Support System explores and suggests options for reconfiguring the elements of the industrial process, to improve efficiency. A proof-of-concept use-case from the KIOS Water System Testbed is presented. The pumping station (connectivity, behaviour and energy efficiency KPIs) of the Testbed is semantically modelled, whereas the DSS suggests reconfiguration options for improving its overall energy efficiency.
基于本体的推理以重新配置工业流程以提高能源效率
现代工厂收集和处理大量不同类型的工业过程数据。这些数据用于制定度量标准和关键绩效指标,以监控和提高工厂的生产力和效率。然而,为了提高工业流程的效率,本工作开发了一个基于本体的框架,该框架在语义上描述了一个工业流程,特别是它描述了物理连接、工业行为和kpi的元素。决策支持系统使用子过程层次结构的概念,探索并提出重新配置工业过程元素的选项,以提高效率。介绍了KIOS水系统试验台的概念验证用例。测试平台的泵站(连通性、行为和能效kpi)进行了语义建模,而DSS则建议重新配置选项以提高其整体能效。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
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