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Applied sensor fault detection, identification and data reconstruction based on PCA and SOMNN for industrial systems

机译:基于PCA和SOMNN的工业系统传感器故障检测,识别和数据重构应用

摘要

The paper presents two readily implementable approaches for Sensor Fault Detection, Identification (SFD/I) and faulted sensor data reconstruction in complex systems, in real-time. Specifically, Principal Component Analysis (PCA) and Self-Organizing Map Neural Networks (SOMNNs) are demonstrated for use on industrial turbine systems. In the first approach, Squared Prediction Error (SPE) based on the PCA residual space is used for SFD. SPE contribution plot is employed for SFI. A missing value approach from an extension of PCA is applied for faulted sensor data reconstruction. In the second approach, SFD is performed by SOMNN based Estimation Error (EE), and SFI is achieved by EE contribution plot. Data reconstruction is based on an extension of the SOMNN algorithm. The results are compared in each examining stage. The validation of both approaches is demonstrated through experimental data during the commissioning of an industrial 15MW turbine.
机译:本文提出了两种易于实现的方法,用于在复杂系统中实时进行传感器故障检测,识别(SFD / I)和故障传感器数据重建。具体而言,展示了用于工业涡轮机系统的主成分分析(PCA)和自组织映射神经网络(SOMNN)。在第一种方法中,基于PCA剩余空间的平方预测误差(SPE)用于SFD。 SPE贡献图用于SFI。来自PCA扩展的缺失值方法可用于故障传感器数据的重建。在第二种方法中,SFD由基于SOMNN的估计误差(EE)执行,而SFI由EE贡献图实现。数据重建基于SOMNN算法的扩展。在每个检查阶段比较结果。在工业15MW汽轮机调试期间,通过实验数据证明了这两种方法的有效性。

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