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IAE-adaptive Kalman filter for INS/GPS integrated navigation system
作者姓名:Bian Hongwei~    Jin Zhihua~ & Tian Weifeng~ . Dept. of Information Measurement Technology and Instruments  Shanghai Jiaotong Univ.  Shanghai  P. R. China  . Dept. of Electrical Engineering of Naval Univ. of Engineering  Wuhan
作者单位:Bian Hongwei~ 1,2,Jin Zhihua~1 & Tian Weifeng~2 1. Dept. of Information Measurement Technology and Instruments,Shanghai Jiaotong Univ.,Shanghai 200030,P. R. China; 2. Dept. of Electrical Engineering of Naval Univ. of Engineering,Wuhan 430033
摘    要:1 .INTRODUCTIONInertial navigation system(INS) and Global posi-tioning system ( GPS) are two major navigationsystems now widely usedfor marine applications a-round the world. Considering both systems pos-sess complementary working characteristics , abooming attention is focused on finding effectivemethods to combine the two different systems toconstituteintegrated navigation system with higheraccuracy and better performance .Information likeGPS position and velocity are often chosen as…

收稿时间:7 January 2005. 

IAE-adaptive Kalman filter for INS/GPS integrated navigation system
Bian Hongwei ,,Jin Zhihua & Tian Weifeng . Dept. of Information Measurement Technology and Instruments,Shanghai Jiaotong Univ.,Shanghai ,P. R. China, . Dept. of Electrical Engineering of Naval Univ. of Engineering,Wuhan .IAE-adaptive Kalman filter for INS/GPS integrated navigation system[J].Journal of Systems Engineering and Electronics,2006,17(3):502-508.
Authors:Bian Hongwei  Jin Zhihua  Tian Weifeng
Institution:1. Dept. of Information Measurement Technology and Instruments, Shanghai Jiaotong Univ., Shanghai 200030, P. R. China; Dept. of Electrical Engineering of Naval Univ. of Engineering, Wuhan 430033
2. Dept. of Information Measurement Technology and Instruments, Shanghai Jiaotong Univ., Shanghai 200030, P. R. China
3. Dept. of Electrical Engineering of Naval Univ. of Engineering, Wuhan 430033
Abstract:A marine INS/GPS adaptive navigation system is presented. GPS with two antenna providing vessel's altitude is selected as the auxiliary system fusing with INS to improve the performance of the hybrid system. The Kalman filter is the most frequently used algorithm in the integrated navigation system, which is capable of estimating INS errors online based on the measured errors between INS and GPS. The standard Kalman filter (SKF) assumes that the statistics of the noise on each sensor are given. As long as the noise distributions do not change, the Kalman filter will give the optimal estimation. However GPS receiver will be disturbed easily and thus temporally changing measurement noise will join into the outputs of GPS, which will lead to performance degradation of the Kalman filter. Many researchers introduce fuzzy logic control method into innovation-based adaptive estimation adaptive Kalman filtering (IAE-AKF) algorithm, and accordingly propose various adaptive Kalman filters. However how to design the fuzzy logic controller is a very complicated problem still without a convincing solution. A novel IAE-AKF is proposed herein, which is based on the maximum likelihood criterion for the proper computation of the filter innovation covariance and hence of the filter gain. The approach is direct and simple without having to establish fuzzy inference rules. After having deduced the proposed IAE-AKF algorithm theoretically in detail, the approach is tested by the simulation based on the system error model of the developed INS/GPS integrated marine navigation system. Simulation results show that the adaptive Kalman filter outperforms the SKF with higher accuracy, robustness and less computation. It is demonstrated that this proposed approach is a valid solution for the unknown changing measurement noise exited in the Kalman filter.
Keywords:inertial navigation system  global positioning system  integrated navigation system  adaptive Kalman filter
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