Distributed Kalman Filtering Over Massive Data Sets: Analysis Through Large Deviations of Random Riccati Equations

IEEE Transactions on Information Theory(2015)

引用 49|浏览28
暂无评分
摘要
This paper studies the convergence of the estimation error process and the characterization of the corresponding invariant measure in distributed Kalman filtering for potentially unstable and large linear dynamic systems. A gossip network protocol termed modified gossip interactive Kalman filtering (M-GIKF) is proposed, where sensors exchange their filtered states (estimates and error covariances) and propagate their observations via intersensor communications of rate γ̅; γ̅ is defined as the averaged number of intersensor message passages per signal evolution epoch. The filtered states are interpreted as stochastic particles swapped through local interaction. This paper shows that the conditional estimation error covariance sequence at each sensor under M-GIKF evolves as a random Riccati equation (RRE) with Markov modulated switching. By formulating the RRE as a random dynamical system, it is shown that the network achieves weak consensus, i.e., the conditional estimation error covariance at a randomly selected sensor converges weakly (in distribution) to a unique invariant measure. Further, it is proved that as γ̅ → ∞ this invariant measure satisfies the large deviation (LD) upper and lower bounds, implying that this measure converges exponentially fast (in probability) to the Dirac measure δP*, where P* is the stable error covariance of the centralized (Kalman) filtering setup. The LD results answer a fundamental question on how to quantify the rate at which the distributed scheme approaches the centralized performance as the intersensor communication rate increases.
更多
查看译文
关键词
massive data sets,distributed kalman filtering,protocols,kalman filter,kalman filters,distributed signal processing,markov modulated switching,covariance analysis,intersensor communications,filtered states,random riccati equations,gossip network protocol,riccati equations,modified gossip interactive kalman filtering,estimation theory,gossip,estimation error process,random algebraic riccati equation,stochastic particles,conditional estimation error covariance sequence,consensus,large deviations,random dynamical systems,estimation
AI 理解论文
溯源树
样例
生成溯源树,研究论文发展脉络
Chat Paper
正在生成论文摘要