Jun HeYong ChenZhaoxia ZhangWentao YinDanfeng Chen
In order to overcome the limitation of the traditional adaptive Unscented Kalman Filtering (UKF) algorithm in noise covariance estimation for state and measurement, we propose a hybrid adaptive UKF algorithm based on combining Maximum a posteriori (MAP) criterion and Maximum likelihood (ML) criterion, in this paper.First, to prevent the actual noise covariance deviating from the true value which can lead to the state estimation error and arouse the filtering divergence, a real-time covariance matrices estimation algorithm based on hybrid MAP and ML is proposed for obtaining the statement and measurement noises covariance, respectively; and then, a balance equation the two kinds of covariance matrix is structured in this proposed to minimize the statement estimation error.Compared with the UKF based MAP and based ML, the proposed algorithm provides better convergence and stability.
Jun HeQinhua ZhangQin HuGuouxi Sun
Chunyao HanJiajun XiongKai Zhang
Chunyao HanJiajun XiongKai Zhang
Yutong JiangGuoshan XuJiedun Hao