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水下组合导航UKF/PF自适应滤波算法
引用本文:傅军,张晓锋,方晓晻,覃方君,许江宁.水下组合导航UKF/PF自适应滤波算法[J].武汉理工大学学报(交通科学与工程版),2008,32(6).
作者姓名:傅军  张晓锋  方晓晻  覃方君  许江宁
作者单位:1. 海军工程大学电气与信息工程学院,武汉,430033
2. 梧州四四九厂军事代表室,梧州,543004
基金项目:国家自然科学基金项目资助  
摘    要:为了避免粒子滤波(PF)可能存在的粒子退化问题,提出了一种Unscented卡尔曼滤波(UKF)和PF的混合滤波算法.将PF的所有粒子分为随机性粒子和确定性粒子两部分,利用UKF状态估计为PF确定重要性函数,并从重要性函数中抽取随机粒子,而确定性粒子则由UKF的Sigma点构成.利用标准粒子滤波的退化程度指标构造自适应权函数,根据权函数权值大小的变化,UKF/PF混合滤波算法自适应地进化为PF滤波算法或退化为UKF滤波算法.仿真结果验证了UKF/PF混合滤波算法用于DR/INS组合滤波器设计的有效性.

关 键 词:无色卡尔曼滤波  粒子滤波  组合导航  舰位推算

Adaptive UKF/PF-based Filtering Algorithm for Underwater Integrated Navigation
Fu Jun,Zhang Xiaofeng,Fang Xiaomin,Qing Fangjun,Xu Jiangning.Adaptive UKF/PF-based Filtering Algorithm for Underwater Integrated Navigation[J].journal of wuhan university of technology(transportation science&engineering),2008,32(6).
Authors:Fu Jun  Zhang Xiaofeng  Fang Xiaomin  Qing Fangjun  Xu Jiangning
Institution:College of Electrical Engineering and Information Engineering;Naval University of Engineering;Wuhan 430033;Military Representative Office of Wuzhou 449 Factory;Wuzhou 543004
Abstract:UKF/PF-based filtering algorithm is proposed to avoid the particle degradation of the particle filter.The particles are divided into random particles and determined particles.Using state estimation of UKF constructs importance function.The random particles are extracted from importance function.The determined particles are composed of sigma points of UKF.An adaptive proportion function is constructed to reflect the degradation of standard particle filter,and the proposed UKF/PF filtering algorithm can evolv...
Keywords:unscented Kalman filter  particle filter  integrated navigation system  dead reckoning  
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