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Diagnostic Bayesian networks for diagnosing air handling units faults - Part I : Faults in dampers, fans, filters and sensors

机译:用于诊断空气处理机组故障的诊断贝叶斯网络-第一部分:风门,风扇,过滤器和传感器的故障

摘要

Faults in air handling units (AHUs) affect the building energy efficiency and indoor environmental quality significantly. There is still a lack of effective methods for diagnosing AHU faults automatically. In this study, a diagnostic Bayesian networks (DBNs)-based method is proposed to diagnose 28 faults, which cover most of common faults in AHUs. The basic idea is to fully utilize all diagnostic information in an information fusion way. The DBNs are developed based on a comprehensive survey of AHU fault detection and diagnosis (FDD) methods and fault patterns reported in three AHU FDD projects including NIST 6964, ASHRAE projects RP-1020 and RP-1312. The study is published in two parts. In the Part I, the methodology is described firstly. Four DBNs are developed to diagnose faults in fans, dampers, ducts, filters and sensors. There are 10 typical faults concerned and 14 fault detectors introduced. Evaluations are made using the experimental data from the ASHRAE Project RP-1312. Results show that the DBN-based method is effective in diagnosing faults even when the diagnostic information is uncertain and incomplete.
机译:空气处理机组(AHU)的故障会严重影响建筑物的能源效率和室内环境质量。仍然缺乏有效的方法来自动诊断AHU故障。在这项研究中,提出了一种基于诊断贝叶斯网络(DBNs)的方法来诊断28个故障,这些故障涵盖了AHU中的大多数常见故障。基本思想是以信息融合的方式充分利用所有诊断信息。 DBN的开发基于对AHU故障检测和诊断(FDD)方法的全面调查以及在三个AHU FDD项目(包括NIST 6964,ASHRAE项目RP-1020和RP-1312)中报告的故障模式。该研究分为两个部分。在第一部分中,首先描述了方法。开发了四个DBN来诊断风扇,风门,管道,过滤器和传感器中的故障。有10种典型故障和14种故障检测器引入。使用ASHRAE项目RP-1312的实验数据进行评估。结果表明,即使诊断信息不确定且不完整,基于DBN的方法也可以有效地诊断故障。

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