期刊文献+

基于期望模式修正的交互式多模型组合导航算法 被引量:4

Interacting multiple model integrated navigation algorithm based on expected-mode augmentation for AUV
下载PDF
导出
摘要 针对复杂环境下自主水下航行器(AUV)组合导航系统中存在的模型不完全确定或者模型参数发生变化的情况,提出一种基于期望模式修正的交互式多模型(EMA-IMM)滤波算法。该算法利用滤波估计过程中所得到的模型概率完成决策。首先对固定结构的基础网格进行滤波,得到细化的修正模型集,接着对修正模型集进行滤波,得到与真实模型最为邻近的若干个修正模型网格共同构成的期望模型集,然后将系统真实的模型覆盖在精简的期望模型集范围之中,最后通过对期望模型集滤波,得到接近真实模型状态变量的估计结果。在AUV组合导航系统中的仿真结果表明,相对于传统Kalman滤波算法,改进的EMA-IMM使AUV的经度估计精度提高了97%,纬度估计精度提高了44%;相对于IMM算法,AUV的经度估计精度提高了22%,纬度估计精度提高了19%;得到的结果验证了提出的EMA-IMM算法的优越性。 An Interactive Multiple Model (IMM) filter algorithm based on Expected-mode Augmenta- tion (EMA) named EMA-IMM algorithm is proposed to overcome the uncertain model and time-varied model parameters of the integrated navigation system for an Autonomous Underwater Vehicle(AUV) in a tough environment. The EMA-IMM algorithm mainly uses the probability of models obtained from the recursive estimate processing for making decision. It filters for the base grids of fixed struc- ture to obtain a fined amendatory model set firstly. Then the amendatory model is filtered to obtain an expected model consisting of a small number of amendatory model grids that are close to the real mod- el. Through a further filtering using the expected model, the suboptimal solution approximate to the real model will be ultimately achieved. Simulation results on the integrated navigation system show that the EMA-IMM algorithm can improve the estimation precisions of longitude and latitude by 97% and 44% respectively as compared with the Kalman filtering algorithm and by 22% and 19% with the IMM algorithm, which proves the superiority of the proposed EMA-IMM algorithm.
作者 王磊 程向红
出处 《光学精密工程》 EI CAS CSCD 北大核心 2014年第3期737-744,共8页 Optics and Precision Engineering
基金 国家自然科学基金资助项目(No.61374215)
关键词 自主水下航行器 组合导航 交互式多模型 期望模式修正 Autonomous Underwater Vehicle(AUV) ;integrated navigation ; interacting multiple mod- el ; expected-mode augmentation
  • 相关文献

参考文献13

  • 1MILLER P A, FARRELL J A, ZHAO Y, et al.. Autonomous underwater vehicle navigation [J].IEEE Journal of Oceanic Engineering, 2010, 35 (3) :663-678.
  • 2HEGRENAES O, HALI.INGSTAD O. Model-ai- ded INS with sea current estimation for robust un- derwater navigation [J]. IEEE Journal of Oceanic Engineering, 2011, 36(2) :316-337.
  • 3白瑜亮,崔乃刚,吕世良.水下运载器纵向轨迹自适应跟踪控制[J].光学精密工程,2013,21(7):1719-1726. 被引量:4
  • 4I.AN J, LI X R, JII.KOV V P, et al. Second order markov chain based multiple-model algorithm for maneuvering target tracking [J]. IEEE Transac- tions on Aerospace and EZectronic Systems, 2013, 49(1) :3 19.
  • 5TOLEDO-MOREO R, ZAMORA-LZQUIERDO M A, UBEDA-MIARRO B, et al.. High integrity IMM-EKF-based road vehicle navigation with low cost GPS/SBAS/INS[J].IEEE Transactions on Intelligent Transportation Systems, 2007, 8 (3) : 491 511.
  • 6赵琳,王小旭,丁继成,曹伟.组合导航系统非线性滤波算法综述[J].中国惯性技术学报,2009,17(1):46-52. 被引量:74
  • 7I3 X R. Multiple model structure. II. Model set estimation with variable adaptation [J]. IEEETransactions on Automatic Control, 2000, 45 (11) :2047 2060.
  • 8QU H Q, PANG L P, LI S H. A novel interacting multiple model algorithm [J]. Signal Processing, 2009, 89(11) :2171-2177.
  • 9LI X R, BAR SHALOM Y. Multiple-model estima tion with variable structure [J]. IEEE Transactions on Automatic Control, 1996, 41(4) :478 493.
  • 10LI X R, JII.KOV V P, RU J. Multiple-model esti mation with variable structure-Part VI: expected- mode augmentation [J].IEEE Transactions on Aerospace Electronic Systems, 2005, 41:853-867.

二级参考文献48

  • 1党玲,许江湖,王永斌.自适应网格交互多模型算法[J].火力与指挥控制,2004,29(4):51-54. 被引量:9
  • 2Mook D J, Junkins J L. Minimum model error estimation for poorly modeled dynamic systems[J]. Journal of Guidance, Control, and Dynamics, 1988, 11(3) : 256 - 261.
  • 3LU P. Optimal predictive control of continuous nonlinear systems[J]. Int. J. Control, 1995,62(3) : 633-649.
  • 4Crassidis J L, Markley F L. Predictive filtering for nonlinear systems[J]. Journal of Guidance, Control, and Dynamics, 1997, 20(3): 566-572.
  • 5Gordon N, Salmond D. Novel approach to non-linear and non-Gaussian Bayesian state estimation[J]. Proc of Institute Electric Engineering, 1993, 140(2):107-113.
  • 6Hammersley J M, Morton K W. Poor man's Monte Carlo[J]. J of the Royal Statistical Society B, 1954,16(1) : 23-38,
  • 7Handschin J E. Monte Carlo techniques for prediction and filtering of nonlinear stochastic processes[J]. Automatica, 1970, 6(3) : 555-563.
  • 8Gustafsson F, Ahlqvist S, Forssell U, Persson N. Sensor fusion for accurate computation of yaw rate and absolute velocity[C]// SAE 2001-01-1064. Detroit, 2001.
  • 9Hall P. A Bayesian approach to map-aided vehicle positioning[D]. Master Thesis LiTH-ISY EX-3104, Dept of Elec. Eng. Linkoping University, Linkoping, Sweden, 2001.
  • 10Bergman N. Recursive Bayesian estimation: Navigation and tracking applications[D]. Dissertation No.579, Linkoping university, Sweden, 1999.

共引文献79

同被引文献16

引证文献4

二级引证文献43

相关作者

内容加载中请稍等...

相关机构

内容加载中请稍等...

相关主题

内容加载中请稍等...

浏览历史

内容加载中请稍等...
;
使用帮助 返回顶部