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A Graph-based Sensor Fault Detection and Diagnosis for Demand-Controlled Ventilation Systems Extracted from a Semantic Ontology

机译:基于图形的传感器故障检测和诊断从语义本体中提取的需求控制的通风系统

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Fault detection and diagnosis in HVAC systems such as demand-controlled ventilation systems, is a crucial step to attain optimal user comfort and energy saving, through providing fast and accurate monitoring, control, and recovery solutions in buildings. This can be accomplished by increasing the number of the utilized sensors and actuators in each zone, which leads to an enormous increase in the complexity of the system, due to the need to capture these components' values and the interactions between them. To overcome the complexity issue, it is important to establish an accurate model of the system, which contains the system components like sensors and actuators, and the relationships between them. However, achieving an accurate model design of the building, its technical components and the relationships between them is rarely available. Especially, the lack of precision in technical measurements, which is needed in model-based diagnostic methods to develop precise thresholds and conditions that are required to make the decisions. In this paper a model was developed to overcome the previous challenges, by the following: 1) creating a simulated model for a building, to extract the missing sensors' thresholds, values and relationships between those sensors. 2) A semantic model represented by the building ontology, to model the relationships between sensors and their containing systems, created based on the diagnostic information provided by the simulated model. And 3) A novel diagnostic directed graph is extracted from the ontology to offer more automation to the diagnosis and lessen the complexity of the system, by providing a clear graph of the decision making process.
机译:HVAC系统(如需求控制的通风系统)等故障检测和诊断是通过在建筑物中提供快速准确的监控,控制和恢复解决方案来实现最佳用户舒适和节能的重要步骤。这可以通过增加每个区域中的使用传感器和致动器的数量来实现,这导致系统的复杂性巨大增加,因为需要捕获这些组件的值和它们之间的相互作用。为了克服复杂性问题,重要的是建立系统的准确模型,它包含传感器和执行器等系统组件,以及它们之间的关系。然而,实现了建筑物的准确模型设计,其技术组件和它们之间的关系很少可用。特别是,技术测量中缺乏精度,这是基于模型的诊断方法所需要的,以开发做出决策所需的精确阈值和条件。在本文中,开发了一种模型来克服以前的挑战:1)为建筑物创建模拟模型,以提取这些传感器之间的缺失的传感器阈值,值和关系。 2)由建筑本体中表示的语义模型,以模拟传感器和其包含系统之间的关系,基于模拟模型提供的诊断信息创建。 3)从本体中提取新的诊断指向图,以提供更自动化的诊断,并通过提供决策过程的清晰图来减少系统的复杂性。

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