Fault detection for multi-rate sensor fusion under multiple uncertainties

In multi-sensor fusion, it is hard to guarantee that all sensors have an identical sampling rate, especially in the distributive and/or heterogeneous case. Meanwhile, system modelling may face the coexistence of multiple uncertainties including stochastic noise, unknown input (UI) and faults in complex environment. To this end, the authors propose the problem of fault detection for multi-rate sensor fusion systems subject to UI, stochastic noise with known covariance, and faults imposed on the actuator and sensors. Furthermore, the new form of multi-rate observer (MRO) is presented and lifted to the single-rate one with causality constraint for parameter design. Observer parameters are determined optimally in pursuit of the UI decoupling and maximum noise attenuation under the causality constraint. Differing from the traditional observer, the proposed MRO is time varying, that is, its parameters need recursive computation and hence has better adaptability to the effect of uncertainties. Finally, a multi-rate residual generator is constructed via a hypothesis test in which the threshold is adaptively designed. A numerical example is given to show the effectiveness of their proposed method.

[1]  L. Hong,et al.  Multirate interacting multiple model (MRIMM) filtering with out-of-sequence GMTI data , 2003 .

[2]  Jie Sheng,et al.  Optimal filtering for multirate systems , 2005, IEEE Transactions on Circuits and Systems II: Express Briefs.

[3]  Donghua Zhou,et al.  Network‐based robust fault detection with incomplete measurements , 2009 .

[4]  M. S. Fadali Observer-based robust fault detection of multirate linear system using a lift reformulation , 2003, Comput. Electr. Eng..

[5]  Quan Pan,et al.  Multi-rate optimal state estimation , 2009, Int. J. Control.

[6]  D. Andrisani,et al.  Estimation using a multirate filter , 1987 .

[7]  Lang Hong,et al.  Multirate interacting multiple model filtering for target tracking using multirate models , 1999, IEEE Trans. Autom. Control..

[8]  J.E. Gray,et al.  Theory of distributed estimation using multiple asynchronous sensors , 2005, IEEE Transactions on Aerospace and Electronic Systems.

[9]  Quan Pan,et al.  Multi-rate stochastic H∞ filtering for networked multi-sensor fusion , 2010, Autom..

[10]  Huijun Gao,et al.  Robust $H_{\infty}$ Filtering for a Class of Nonlinear Networked Systems With Multiple Stochastic Communication Delays and Packet Dropouts , 2010, IEEE Transactions on Signal Processing.

[11]  Jing Ma,et al.  Information fusion estimators for systems with multiple sensors of different packet dropout rates , 2011, Inf. Fusion.

[12]  Yang Liu,et al.  Least-Squares Fault Detection and Diagnosis for Networked Sensing Systems Using A Direct State Estimation Approach , 2013, IEEE Transactions on Industrial Informatics.

[13]  Huijun Gao,et al.  Distributed H∞ Filtering for a Class of Markovian Jump Nonlinear Time-Delay Systems Over Lossy Sensor Networks , 2013, IEEE Transactions on Industrial Electronics.

[14]  M. S. Fadali,et al.  Fault detection for systems with multirate sampling , 1998, Proceedings of the 1998 American Control Conference. ACC (IEEE Cat. No.98CH36207).

[15]  Donghua Zhou,et al.  Robust fault detection for networked systems with communication delay and data missing , 2009, Autom..

[16]  Yeung Sam Hung,et al.  Distributed H∞-consensus filtering in sensor networks with multiple missing measurements: The finite-horizon case , 2010, Autom..

[17]  Lang Hong,et al.  Distributed multirate interacting multiple model fusion (DMRIMMF) with application to out-of-sequence GMTI data , 2004, IEEE Transactions on Automatic Control.

[18]  Iman Izadi,et al.  An H∞ approach to fast rate fault detection for multirate sampled-data systems , 2006 .

[19]  Donghua Zhou,et al.  Estimation Fusion with General Asynchronous Multi-Rate Sensors , 2010, IEEE Transactions on Aerospace and Electronic Systems.

[20]  Zidong Wang,et al.  H∞ filtering with randomly occurring sensor saturations and missing measurements , 2012, Autom..

[21]  Iman Izadi,et al.  An optimal scheme for fast rate fault detection based on multirate sampled data , 2005 .

[22]  D. Hertz,et al.  Fast approximate maximum likelihood algorithm for single source localisation , 1995 .

[23]  Donghua Zhou,et al.  Leakage Fault Diagnosis for an Internet-Based Three-Tank System: An Experimental Study , 2012, IEEE Transactions on Control Systems Technology.

[24]  Thomas E Marlin,et al.  Process Control , 1995 .

[25]  Hao Ye,et al.  Observer-Based Fast Rate Fault Detection for a Class of Multirate Sampled-Data Systems , 2007, IEEE Transactions on Automatic Control.

[26]  Steven Liu,et al.  Fusion Estimation for Sensor Networks With Nonuniform Estimation Rates , 2014, IEEE Transactions on Circuits and Systems I: Regular Papers.

[27]  L.P. Yan,et al.  Asynchronous multirate multisensor information fusion algorithm , 2007, IEEE Transactions on Aerospace and Electronic Systems.

[28]  M. S. Fadali,et al.  Timely robust fault detection for multirate linear systems , 2002 .

[29]  Gang Feng,et al.  Multi-rate distributed fusion estimation for sensor networks with packet losses , 2012, Autom..

[30]  Huijun Gao,et al.  Distributed Filtering for a Class of Time-Varying Systems Over Sensor Networks With Quantization Errors and Successive Packet Dropouts , 2012, IEEE Transactions on Signal Processing.