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Comparison of Sensor Faults Detection using Independent Component Analysis and Data Fusion based on Extended Kalman Filter

机译:基于扩展卡尔曼滤波器的独立分量分析和数据融合的传感器故障检测比较

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In this paper Extended Kalman Filter (EKF) is used to fuse the process measurement sensor data. The usual approach in the classical EKF implementation, however, is based on the constant diagonal matrices for the process and measurement covariance. This inflexible constant covariance set-up which employs the ideal white noise model assumption for describing the process and measurement noises causes the EKF algorithm to diverge or at best converge to a large bound even it the EKF model is perfectly tuned This paper presents a modified extended kalman filter (MEKF) algorithm to prevent the filter divergence leading to an improved EKF estimation. The performances of the resulting sensor fault detection system are demonstrated an a simulated continuous stirred tank reactor (CSTR) benchmark case study for drift in calibration (Bias Error) and drift in degradation. Also, we Comparison of the resulting sensor drift fault detection with the Independent Component Analysis (ICA) method.
机译:在本文中,扩展卡尔曼滤波器(EKF)用于熔化过程测量传感器数据。然而,经典EKF实现中的通常方法基于处理和测量协方差的恒定对角线矩阵。这种不灵活的恒定协方差设置,用于描述过程和测量噪声的理想白噪声模型假设导致EKF算法分叉或最佳汇聚到甚至它的大型界限,即使是EKF型号完美调整本文呈现了修改后的扩展卡尔曼滤波器(MEKF)算法,以防止过滤器发散导致改进的EKF估计。所得到的传感器故障检测系统的性能被证明了一种模拟的连续搅拌罐反应器(CSTR)基准案例研究,用于校准(偏置误差)和劣化漂移。此外,我们将所得传感器漂移故障检测与独立分量分析(ICA)方法进行比较。

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