This paper present a method toimprove the estimation accuracy of a tracking Karlman filter (TKF) by using a multilayed neural network (MNN). Estimation accuracy of the TKF is degraded due to the uncertainties which cannot be expressed by the linear state-space model given priori.. The MNN capable of leaning an arbitrary so that realized a mapping from measurement to the corrections of estimation of TKF. Simullation results show that the estimation accuracy is much improved by using MNN.
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韩明华,袁乃昌.多层神经网络在跟踪式卡尔曼滤波器中的应用[J].国防科技大学学报,1997,19(5):18-24. Han Minghua, Yuan Naichang. A Improved Tracking Karlman Filter Using a Multilayed Neural network[J]. Journal of National University of Defense Technology,1997,19(5):18-24.