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Sensors fault estimation, isolation and detection using MIMO extended Kalman filter for industrial applications

机译:使用MIMO扩展卡尔曼滤波器的传感器故障估计,隔离和检测,适用于工业应用

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Fault Detection and Isolation (FDI) technique became a necessary part in most industrial systems. This paper introduces a new fault state estimation and isolation technique based on Extended Multiple Model Adaptive Estimator (EMMAE) technique for industrial applications especially for industrial boiler systems. The boiler system contains six sensors in the input and three sensors in the output that used to identify linear system dynamics using state space model. System state and multiple sensor faults are estimated, isolated and detected using Extended Kalman Filter (EKF). Based on the estimated fault for each sensor features extraction, the faulty sensor is classified. The proposed technique is applied on real industrial boiler plant measurements data to demonstrate and validate the ability of proposed technique to implement online in real world.
机译:故障检测和隔离(FDI)技术已成为大多数工业系统中的必要部分。本文介绍了一种基于扩展多模型自适应估计器(EMMAE)技术的故障状态估计和隔离新技术,适用于工业应用,尤其是工业锅炉系统。锅炉系统在输入中包含六个传感器,在输出中包含三个传感器,用于使用状态空间模型识别线性系统动力学。使用扩展卡尔曼滤波器(EKF)可以估计,隔离和检测系统状态和多个传感器故障。基于每个传感器特征提取的估计故障,对故障传感器进行分类。所提出的技术被应用于实际的工业锅炉厂测量数据,以证明和验证所提出的技术在现实世界中在线实施的能力。

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