Fault detection in a three-tank hydraulic system using unknown input observer and extended Kalman filter
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Published:2021-12-02
Issue:4A
Volume:9
Page:
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ISSN:2307-1877
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Container-title:Journal of Engineering Research
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language:
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Short-container-title:JER is an international, peer-reviewed journal that publishes full-length original research papers, reviews, case studies in all areas of Engineering.
Author:
E. O. HASSAN Ayman, ,A. A. MOHAMMED Tasnim,DEMİRKOL Aşkın, ,
Abstract
This paper presents the problem of fault diagnosis in a three-tank hydraulic system. A mathematical model of the system is developed in order to apply two different observing algorithms. Unknown Input Observer (UIO) and Extended Kalman Filter (EKF) have been used to detect and isolate actuator and sensor faults. For Unknown Input Observer (UIO), residuals are calculated from the measured and estimated output according to the eigenvalues of the system after processed by Linear Matrix Inequality (LMI). Extended Kalman filter uses process and measurement noise variances for state estimation. Unknown Input Observer and Extended Kalman Filter's performance in fault estimation and isolation is evaluated under different scenarios. Using Extended Kalman Filter (EKF), faults can be diagnosed effectively in the presence of noise, while Unknown Input Observer (UIO) is working better in the absence of noise, and simulation results illustrate that clearly.
Publisher
Journal of Engineering Research
Subject
General Engineering
Cited by
2 articles.
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