This paper is concerned with distributed fusion estimation problem for discrete‐time nonlinear systems with asynchronous sampling data in the clustered sensor networks. A nonlinear sequential fusion method consisting of a… Click to show full abstract
This paper is concerned with distributed fusion estimation problem for discrete‐time nonlinear systems with asynchronous sampling data in the clustered sensor networks. A nonlinear sequential fusion method consisting of a sequential measurement fusion (SMF) method and a sequential state fusion (SSF) method is proposed. It is shown that the SMF estimator using the Unscented Kalman Filtering (UKF) method can handle the asynchronous measurement data sequentially and the SSF estimator which uses sequential matrix weighting method can get a close performance as the centralized batch matrix weighting method but has a lower computational complexity. The proposed measurement fusion method is able to deal with asynchronous measurements and has lower computational complexity as compared with the augmentation method. A simulation example shows the effectiveness of the proposed nonlinear sequential fusion method.
               
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