2011
DOI: 10.1016/j.automatica.2011.09.015
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Mean square stability for Kalman filtering with Markovian packet losses

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Cited by 219 publications
(171 citation statements)
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“…It can be seen from [1,24] that among the topics on optimal estimation and control for the system with packet loss, there are some closely related fundamental issues: the stability of the estimator [25,26], the distribution and convergence of the estimation error covariance [27,28], the estimation performance evaluation [29,30], and the stability of the closed-loop system [14,31]. These four issues have been fully investigated for TCP-like systems, but they are seldom studied for SS-UDP systems.…”
Section: A Background and Motivationsmentioning
confidence: 99%
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“…It can be seen from [1,24] that among the topics on optimal estimation and control for the system with packet loss, there are some closely related fundamental issues: the stability of the estimator [25,26], the distribution and convergence of the estimation error covariance [27,28], the estimation performance evaluation [29,30], and the stability of the closed-loop system [14,31]. These four issues have been fully investigated for TCP-like systems, but they are seldom studied for SS-UDP systems.…”
Section: A Background and Motivationsmentioning
confidence: 99%
“…Its stability was studied in the pioneering work [25] where it is pointed out that there exists a critical value which determines the boundedness of the expected estimation error covariance (EEC), i.e., E[P k ]. Following [25], various aspects have been further researched, including the bound for the critical value [32], the distribution for EEC [27,28], the Markov packet losses case [26,[33][34][35]. In [29,30], the authors pointed out that P({P k ≤ M }) is a better evaluation for the estimation performance than the quantity E[P k ], and then obtained the lower and upper bounds for P({P k ≤ M }).…”
Section: B Related Work and Contributionsmentioning
confidence: 99%
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“…Stability analysis of Kalman filter for networked systems with random packet losses has been provided in, to name just a few, [77][78][79][80][81]. It is shown in [77] that there exists a critical value of observation arrival probability under which the expected error covariance is likely to grow unbounded.…”
Section: Treatments Of Network-induced Phenomenamentioning
confidence: 99%