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Multiple Faults Diagnosis For Sensors In Air Handling Unit Using Fisher Discriminant Analysis

机译:基于Fisher判别分析的空气处理机组传感器的多故障诊断。

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This paper presents a data-driven method based on principal component analysis and Fisher discriminant analysis to detect and diagnose multiple faults including fixed bias, drifting bias, complete failure of sensors, air damper stuck and water valve stuck occurred in the air handling units. Multi-level strategies are developed to improve the diagnosis efficiency. Firstly, system-level PCA model I based on energy balance is used to detect the abnormity in view of system. Then the local-level PCA model A and B based on supply air temperature and outdoor air flow rate control loops are used to further detect the occurrence of faults and pre-diagnose them into various locations. As a linear dimensionality reduction technique, moreover, Fisher discriminant analysis is presented to diagnose the fault source after pre-diagnosis. With Fisher transformation, all of the data classes including normal and faulty operation can be re-arrayed in a transformed data space and as a result separated. Comparing the Mahalanobis distances (MDs) of all the candidates, the least one can be identified as the fault source.
机译:本文提出了一种基于主成分分析和Fisher判别分析的数据驱动方法,以检测和诊断空气处理单元中发生的多个故障,包括固定偏差,漂移偏差,传感器完全故障,风门卡死和水阀卡死。开发了多级策略以提高诊断效率。首先,基于能量平衡的系统级PCA模型I用于从系统角度检测异常。然后,基于送风温度和室外空气流量控制回路的本地PCA模型A和B用于进一步检测故障的发生并将其预先诊断到各个位置。此外,作为线性降维技术,提出了Fisher判别分析法以对预诊断后的故障源进行诊断。使用Fisher转换,可以将所有包含正常操作和错误操作的数据类重新排列在转换后的数据空间中,并进行分离。比较所有候选者的马氏距离(MD),可以确定至少一个为故障源。

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