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Semantically-enhanced rule-based diagnostics for industrial Internet of Things: The SDRL language and case study for Siemens trains and turbines

机译:基于语义增强的基于规则的事业互联网的诊断:SDRL语言和西门子火车和涡轮机的案例研究

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An Industrial Internet of Things (IoT) is a network of intelligent industrial equipment such as trains and power generating turbines that collect and share large amounts of data. These data are either generated by various sensors deployed in the equipment or captures equipment specific information such as configurations, history of use, and manufacturer. Diagnostics of the industrial IoT is critical to minimise the maintenance cost and downtime of its equipment. It is common that industry today employs rule-based diagnostic systems for this purpose. Rules are typically used to process signals from sensors installed in equipment by filtering, aggregating, and combining sequences of time-stamped measurements recorded by the sensors. Such rules are often data-dependent in the sense that they rely on specific characteristics of individual sensors and equipment. This dependence poses significant challenges in rule authoring, reuse, and maintenance by engineers especially when the rules are applied in industrial IoT scenarios. In this work we propose an approach to address these problems by relying on the well-known Ontology-Based Data Access approach: we propose to use ontologies to mediate the sensor signals and the rules. To this end, we propose a semantic rule language, SDRL, where signals are first class citizens. Our language offers a balance of expressive power, usability, and efficiency: it captures most of Siemens data-driven diagnostic rules, significantly simplifies authoring of diagnostic tasks, and allows to efficiently rewrite semantic rules from ontologies to data and execute over data. We implemented our approach in a semantic diagnostic system and evaluated it. For evaluation, we developed a use case of rail systems as well as power generating turbines at Siemens and conducted experiments to demonstrate both usability and efficiency of our solution. (C) 2018 Elsevier B.V. All rights reserved.
机译:工业互联网(物联网)是智能工业设备网络,如列车和发电涡轮机,收集和分享大量数据。这些数据由部署在设备中的各种传感器,或者捕获设备特定信息,例如配置,使用历史和制造商。工业IOT的诊断对于最小化其设备的维护成本和停机至关重要。今天,行业普遍采用基于规则的诊断系统为此目的。规则通常用于通过过滤,聚合和组合传感器记录的时间戳测量的序列来处理来自设备中安装的传感器的信号。这些规则往往是数据依赖于他们依赖各个传感器和设备的特定特性。这种依赖性在规则创作,重用和维护中造成了重大挑战,特别是当规则应用于工业物联网场景时。在这项工作中,我们提出了一种通过依赖于基于本体的本体的数据访问方法来解决这些问题的方法:我们建议使用本体介绍传感器信号和规则。为此,我们提出了一种语义规则语言,SDRL,信号是头等公民。我们的语言提供了表现力,可用性和效率的平衡:它捕获了大多数西门子数据驱动的诊断规则,显着简化了诊断任务的创作,并允许有效地将来自本体的语义规则从本体上重写为数据并通过数据执行。我们在语义诊断系统中实现了我们的方法并评估了它。为了评估,我们开发了一种轨道系统的用例以及西门子的发电机涡轮机,并进行了实验,以证明我们解决方案的可用性和效率。 (c)2018年elestvier b.v.保留所有权利。

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