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A Novel Chiller Sensors Fault Diagnosis Method Based on Virtual Sensors

机译:基于虚拟传感器的新型冷水机构传感器故障诊断方法

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Sensor fault detection and diagnosis (FDD) has great significance for ensuring the energy saving and normal operation of the air conditioning system. Chiller systems serving as an important part of central air conditioning systems are the major energy consumer in commercial and industrial buildings. In order to ensure the normal operation of the chiller system, virtual sensors have been proposed to detect and diagnose sensor faults. However, the performance of virtual sensors could be easily impacted by abnormal data. To solve this problem, virtual sensors combined with the maximal information coefficient (MIC) and a long short-term memory (LSTM) network is proposed for chiller sensor fault diagnosis. Firstly, MIC, which has the ability to quantify the degree of relevance in a data set, is applied to examine all potentially interesting relationships between sensors. Subsequently, sensors with high correlation are divided into several groups by the grouping thresholds. Two virtual sensors, which are constructed in each group by LSTM with different input sensors and corresponding to the same physical sensor, could have the ability to predict the value of physical sensors. High correlation sensors in each group improve the fitting effect of virtual sensors. Finally, sensor faults can be diagnosed by the absolute deviation which is generated by comparing the virtual sensors’ output with the actual value measured from the air-cooled chiller. The performance of the proposed method is evaluated by using a real data set. Experimental results indicate that virtual sensors can be well constructed and the proposed method achieves a significant performance along with a low false alarm rate.
机译:传感器故障检测和诊断(FDD)对确保空调系统的节能和正常运行具有重要意义。作为中央空调系统的重要组成的冷却器系统是商业和工业建筑的主要能源消费者。为了确保冷却器系统的正常运行,已经提出了虚拟传感器来检测和诊断传感器故障。但是,虚拟传感器的性能可能很容易受到异常数据的影响。为了解决这个问题,提出了与最大信息系数(MIC)和长短期存储器(LSTM)网络相结合的虚拟传感器,用于冷却器传感器故障诊断。首先,应用能够量化数据集中相关性的麦克风,以检查传感器之间的所有潜在有趣的关系。随后,通过分组阈值将具有高相关的传感器分成几组。通过LSTM与不同输入传感器的LSTM构造的两个虚拟传感器,并且对应于相同的物理传感器,可以具有预测物理传感器的值的能力。每个组中的高相关传感器改善了虚拟传感器的拟合效果。最后,通过通过将虚拟传感器的输出与从空冷冷却器测量的实际值进行比较,可以通过绝对偏差诊断传感器故障。通过使用真实数据集来评估所提出的方法的性能。实验结果表明,虚拟传感器可以很好地构造,并且所提出的方法实现了显着性能以及低误报率。

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