期刊文献+

基于稳态Kalman滤波的相关观测融合方法及其功能等价性 被引量:3

Correlated Measurement Fusion Methods Based on Steady-state Kalman Filtering and Their Functional Equivalence
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摘要 对于带相关观测噪声和带不同观测阵的多传感器线性离散定常随机系统,用加权最小二乘(WLS)法提出了两种加权观测融合稳态Kalman滤波方法,可处理状态、白噪声和信号融合估计。基于稳态信息滤波器证明了它们功能等价于集中式融合稳态Kalman滤波方法,因而具有渐近全局最优性,且可显著减少计算负担。两个跟踪系统数值仿真例子验证了它们的功能等价性。 For the muhisensor linear discrete time-invariant stochastic control systems with correlated measurement noises and with different measurement matrices, two weighted measurement fusion steady-state Kalman filtering methods are presented by using the weighted least squares(WLS) method. Based on the steady-state informa- tion filter, it is proved that they are functionally equivalent to the centralized fusion steady-state Kalman filtering method, so that they have their asymptotic global optimality, and can reduced the computational burden. Two numerical simulation examples for tracking systems verify the functional equivalence.
出处 《科学技术与工程》 2007年第19期4809-4814,共6页 Science Technology and Engineering
基金 国家自然科学基金(60374026) 黑龙江大学自动控制重点实验室基金资助
关键词 多传感器信息融合 加权观测融合 相关观测 稳态Kalman滤波 渐近全局最优性 multisensor information fusion weighted measurement fusion correlated measurements steady state Kalman filtering global optimality
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参考文献11

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二级参考文献13

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共引文献31

同被引文献28

  • 1段战胜,韩崇昭.相关量测噪声情况下多传感器集中式融合跟踪[J].系统工程与电子技术,2005,27(7):1160-1163. 被引量:14
  • 2刘兆磊,许建峰,张光义,郭燕昌.脉冲多普勒雷达距离拖引目标序贯滤波跟踪方法[J].系统工程与电子技术,2005,27(8):1401-1404. 被引量:4
  • 3欧连军,邱红专,张洪钺.多个相关测量的融合算法及其最优性[J].信息与控制,2005,34(6):690-695. 被引量:13
  • 4邓自立.两种最优观测融合方法的功能等价性[J].控制理论与应用,2006,23(2):319-323. 被引量:13
  • 5Gan Q and Harris C J. Comparison of two measurement fusion methods for Kalman filter-based mutisensor data fusion. IEEE Trans. on Aerospace and Electronic Systems, 2001, 37(1): 273-279.
  • 6Roecker J A and McGillen C D. Comparison of two-sensor tracking methods based on state vector fusion and measurement fusion. IEEE Trans. on Aerospace and Electronic Systems, 1988, 21(4): 447-449.
  • 7Li X R, Zhu Y M, and Wang J, et al.. Optimal linear estimation fusion-part I: Unified fusion rules. IEEE Trans. on Information Theory, 2003, 49(9): 2192-2208.
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  • 9Deng Z L. Gao Y, and Mao L, et al.. New approach to information fusion steady-state Kalman filtering. Automatica, 2005, 41(10): 1695-1707.
  • 10Roy S and Iltis R A. Decentralized linear estimation in correlated measurement noise. IEEE Trans. on Aerospace and Electronic System, 1991, 27(6): 939-941.

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二级引证文献10

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