The extended Kalman filter as an exponential observer for nonlinear systems 论文
1999IEEE Transactions on Signal Processing引用 292
Target Tracking and Data Fusion in Sensor NetworksAdaptive Control of Nonlinear SystemsControl Systems and Identification
摘要
We analyze the behavior of the extended Kalman filter as a state estimator for nonlinear deterministic systems. Using the direct method of Lyapunov, we prove that under certain conditions, the extended Kalman filter is an exponential observer, i.e., the dynamics of the estimation error is exponentially stable. Furthermore, we discuss a generalization of the Kalman filter with exponential data weighting to nonlinear systems.