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随机逼近自适应滤波在捷联惯导系统初始对准中的应用
引用本文:柏猛,李敏花.随机逼近自适应滤波在捷联惯导系统初始对准中的应用[J].传感技术学报,2011,24(7):1007-1010.
作者姓名:柏猛  李敏花
作者单位:山东科技大学济南校区电气信息系,济南,250031
基金项目:山东科技大学“春蕾”计划项目
摘    要:对于测量噪声方差未知的捷联惯导系统(SINS),采用常规Kalman滤波进行初始对准会造成较大状态估计误差,甚至使滤波器发散。为了解决系统测量噪声方差未知或不确切知道时SINS的误差估计问题,提出一种基于随机逼近的自适应滤波方法。该方法将Robbins-Monro算法与Kalman滤波相结合,通过简化求逆运算,解决了系统观测噪声特性未知情况下SINS的误差估计问题,并提高了算法的数值稳定性。仿真结果表明,该方法能在系统测量噪声方差未知情况下有效实现SINS初始对准。

关 键 词:捷联惯导系统  初始对准  随机逼近  自适应滤波  测量噪声

An Adaptive Filter Based on Stochastic Approximation for Strapdown Inertial Navigation System Alignment
BAI Meng,LI Minhua.An Adaptive Filter Based on Stochastic Approximation for Strapdown Inertial Navigation System Alignment[J].Journal of Transduction Technology,2011,24(7):1007-1010.
Authors:BAI Meng  LI Minhua
Affiliation:BAI Meng,LI Minhua(Department of Electrical and Information Engineering,Shandong University of Science and Technology Jinan,Jinan 250031,China)
Abstract:For the strapdown inertial navigation system(SINS)with unknown measurement noise covariance,applying conventional Kalman filter to initial alignment will lead to a large state estimation error or even filter divergence.To estimate SINS errors with unknown measurement noise covariance,an adaptive filter based on stochastic approximation is presented.In the filter,the Robbins-Monro scheme is applied to Kalman filter to solve the problem of SINS errors estimation with unknown measurement noise covariance,and t...
Keywords:strapdown inertial navigation system  initial alignment  stochastic approximation  adaptive filter  measurement noise  
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