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基于强跟踪滤波的传感器故障诊断的改进方法
引用本文:刘志成,郎建华,邱海莲.基于强跟踪滤波的传感器故障诊断的改进方法[J].计算机工程与应用,2010,46(21):229-231.
作者姓名:刘志成  郎建华  邱海莲
作者单位:1.太原工业学院 自动化系,太原 030008 2.山西北方兴安化学工业有限公司,太原 030008 3.云南省机械研究设计院,昆明 650031
基金项目:山西高校科技研究开发项目 
摘    要:针对基于强跟踪卡尔曼滤波的传感器故障诊断方法中存在的滤波稳定性差、估计精度低的缺点,提出了双滤波器的方法。一个滤波器的量测噪声方差和系统噪声方差均大于实际值,它对故障的估计精度较低,但跟踪速度较快;另一个滤波器的算法中的量测噪声方差大于实际值,它对故障的估计精度较高,但跟踪速度较慢,正好与前者形成互补,然后用第一个滤波器实现故障的及时检测,用第二个滤波器实现对故障幅值的精确估计。仿真实验表明,该方法较好地兼顾了滤波稳定性、估计精度及速度。

关 键 词:强跟踪滤波器  故障参数  估计精度  跟踪速度
收稿时间:2009-1-4
修稿时间:2009-3-12  

Improved method for sensor fault diagnosis based on strong tracking filtering
LIU Zhi-cheng,LANG Jian-hua,QIU Hai-lian.Improved method for sensor fault diagnosis based on strong tracking filtering[J].Computer Engineering and Applications,2010,46(21):229-231.
Authors:LIU Zhi-cheng  LANG Jian-hua  QIU Hai-lian
Affiliation:1.Department of Automation,Taiyuan Institute of Technology,Taiyuan 030008,China 2.Shanxi North Xing’an Chemical Industry Company Limited,Taiyuan 030008,China 3.Yunnan Mechanical Research and Design Institute,Kunming 650031,China
Abstract:Aiming at the deficiency of bad stability of filter and low precision estimation in the method for sensor fault diagnosis based on strong tracking Kalman filtering,two-filters method is put forward.If the measurement noise variance and system noise variance of a filter are both more than its real noise variance,then its fault estimation precision will be low,but tracking speed will be high;inversely,if only the measurement noise variance of another filter is more than its real noise variance,then its fault estimation precision will be high,and tracking speed will be low.So the first filter can be used to detect the fault timely and the second filter can be used to estimate the fault amplitude accurately.The results of simula-tion experiments show that this method is effective.
Keywords:strong tracking filtering  fault parameters  estimation precision  tracking speed
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