Comparison of Centralized Multi-Sensor Measurement and State Fusion Methods with Ensemble Kalman Filter for Process Fault diagnosis
This paper investigates the application of centralized multi-sensor data fusion (CMSDF) technique to enhance the process fault detection. The ensemble Kalman filter (EnKF) is used to estimate the process faults of the simulated high-update rate Wheel Mobile Robot (WMR) benchmark. Currently there exist two commonly used centralized multi-sensor data fusion methods for Kalman filter including centralized measurement fusion and centralized state-vector fusion. The measurement fusion methods directly fuse observations or sensor measurements to obtain a weighted or combined measurement and then use a single Kalman filter to obtain the final state estimate based upon the fused measurement. Whereas state-vector fusion methods use a group of local Kalman filters to obtain individual sensor based state estimates which are then fused to obtain an improved joint state estimate. The simulation results are shown for single, double, triple and quadruple faults detection and diagnosis.
ensemble Kalman filter (EnKF) centralized multi-sensor data fusion (CMSDF) measurement fusion state-vector fusion
Yucheng Zhou Jiahe Xu Yuanwei Jing
Department of Research Institute of Wood Industry Chinese Academy of Forestry, Beijing, 100091 Information Science and Engineering, Northeastern University, 110004, Shenyang, Liaoning
国际会议
The 22nd China Control and Decision Conference(2010年中国控制与决策会议)
徐州
英文
3302-3307
2010-05-26(万方平台首次上网日期,不代表论文的发表时间)