IEEE Transactions on Automatic Control, Vol.65, No.5, 2278-2285, 2020
Event-Triggered Discrete-Time Cubature Kalman Filter for Nonlinear Dynamical Systems With Packet Dropout
We propose a design framework for discrete-time event-triggered cubature Kalman filter for nonlinear dynamic systems over a wireless network with packet dropout. The design ensures that the prediction error covariance is bounded when packet delivery rate has a lower bound. We then show that the estimation error can be guaranteed to be bounded by properly tuning the threshold of the event-triggered mechanism. An example is given to illustrate the filter's performance.
Keywords:Kalman filters;Sensors;State estimation;Estimation error;Nonlinear systems;Current measurement;Bayes methods;Cubature Kalman Filter (CKF);discrete-time system;event-triggered mechanism;packet dropout;state estimation