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Detection and diagnosis of AHU sensor faults using principal component analysis method

机译:主成分分析法检测和诊断AHU传感器故障

摘要

A strategy based on the principal component analysis (PCA) method is developed to detect and diagnose the sensor faults in air handling units (AHU). Sensor faults are detected using the Q statistic (squared prediction error, SPE). They are isolated using the Q statistic and Q contribution plot supplemented by simple expert rules. Two models are employed to deal with the heat balance and pressure flow balance separately to reduce the effects of the system nonlinearity and to ensure the PCA method's validity in different control modes. The fault isolation ability of the PCA method is also improved using the multiple models. Simulation tests and measurements from the BMS of a building are used to verify the PCA based strategy for automatic validation of AHU monitoring instrumentations and detecting/isolating AHU sensor faults under typical operating conditions. The robustness of the PCA based strategy in detecting/diagnosing sensor faults when typical component faults occur is examined.
机译:开发了一种基于主成分分析(PCA)方法的策略来检测和诊断空气处理单元(AHU)中的传感器故障。使用Q统计量(预测误差平方,SPE)检测传感器故障。使用简单的专家规则补充的Q统计量和Q贡献图将它们隔离。使用两种模型分别处理热平衡和压力流量平衡,以减少系统非线性的影响并确保PCA方法在不同控制模式下的有效性。使用多个模型还可以提高PCA方法的故障隔离能力。来自建筑物BMS的仿真测试和测量结果被用于验证基于PCA的策略,以在典型操作条件下自动验证AHU监测仪器并检测/隔离AHU传感器故障。当出现典型的组件故障时,将检查基于PCA的策略在检测/诊断传感器故障中的鲁棒性。

著录项

  • 作者

    Wang S; Xiao F;

  • 作者单位
  • 年度 2004
  • 总页数
  • 原文格式 PDF
  • 正文语种 eng
  • 中图分类

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