Ontology-based integration of performance related data and models: An application to industrial turbine analytics

G. Mehdi, T. Runkler, M. Roshchin, S. Suresh, Nguyen Quang
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引用次数: 1

Abstract

In industrial power generation plants, subsystem monitoring and analytics play a vital role in quantifying the knowledge about different factors that impact their overall performance. Multi-dimensional performance metrics, e.g. thermal efficiency, in-service time, mean-time-to-failure etc., are calculated that may have different data constraints, modelling techniques, and execution frameworks. Automating these calculations and combining multiple metrics to form a single performance index (e.g. reliability) is a challenging task as it requires considerable domain-specific expertise and consolidation of performance-related data and its underlying models. In this paper, we propose to use ontologies to assist domain analyst to first, capture appropriate semantic data of an individual performance metric, and later to provide means to integrate and execute multiple metrics to accurately reflect the overall performance of a plant. We present our prototypical implementation, its evaluation; furthermore, we discuss an ontology model that currently describes three distinct analytical models and its related data based on the case study of Siemens gas turbines. We also demonstrate how ontologies can support to infer the appropriate aggregation method in calculating composite indices.
基于本体的性能相关数据和模型的集成:在工业涡轮机分析中的应用
在工业发电厂中,子系统监测和分析在量化影响其整体性能的不同因素的知识方面起着至关重要的作用。多维性能指标,如热效率、使用时间、平均故障时间等,可能具有不同的数据约束、建模技术和执行框架。将这些计算自动化并将多个指标组合成单个性能指标(例如可靠性)是一项具有挑战性的任务,因为它需要相当多的特定领域的专业知识,并整合与性能相关的数据及其底层模型。在本文中,我们建议使用本体来帮助领域分析师首先捕获单个性能指标的适当语义数据,然后提供集成和执行多个指标的方法,以准确反映工厂的整体性能。我们展示了我们的原型实现,它的评估;此外,我们还讨论了一个本体模型,该模型目前描述了三种不同的分析模型及其基于西门子燃气轮机案例研究的相关数据。我们还演示了本体如何支持在计算复合索引时推断适当的聚合方法。
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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