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Sensor-fault detection, diagnosis and estimation for centrifugal chiller systems using principal-component analysis method

机译:基于主成分分析法的离心式冷水机组传感器故障检测,诊断和评估

摘要

An online strategy is developed to detect, diagnose and validate sensor faults in centrifugal chillers. Considering thermophysical characteristics of the water-cooled centrifugal chillers, a dozen sensors of great concern in the chiller-system monitoring and controls were assigned into two models based on principal-component analysis. Each of the two models can group a set of correlated variables and capture the systematic trends of the chillers. The Q-statistic and Q-contribution plot were used to detect and diagnose the sensor faults, respectively. In addition, an approach based on the minimization of squared prediction error of reconstructed vector of variables was used to reconstruct the identified faulty-sensors, i.e., estimate their bias magnitudes. The sensor-fault detection, diagnosis and estimation strategy was validated using an existing building chiller plant while various sensor faults were introduced.
机译:开发了一种在线策略来检测,诊断和验证离心式冷却器中的传感器故障。考虑到水冷离心式制冷机的热物理特性,基于主成分分析,将十几个在制冷机系统监视和控制中非常关注的传感器分配到两个模型中。这两个模型中的每一个都可以对一组相关变量进行分组,并捕获冷水机组的系统趋势。 Q统计量和Q贡献图分别用于检测和诊断传感器故障。另外,基于最小化变量的重构向量的平方预测误差的方法被用于重构所识别的故障传感器,即,估计它们的偏置量。在引入各种传感器故障的同时,使用现有的建筑冷水机组对传感器故障的检测,诊断和估计策略进行了验证。

著录项

  • 作者

    Wang S; Cui J;

  • 作者单位
  • 年度 2005
  • 总页数
  • 原文格式 PDF
  • 正文语种 eng
  • 中图分类

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