引用本文:丁博,杨月全,方华京.基于条件高斯分布的未知输入与状态估计算法[J].控制理论与应用,2022,39(7):1308~1314.[点击复制]
DING Bo,YANG Yue-quan,FANG Hua-jing.Unknown input and state estimation based on conditional Gaussian distribution[J].Control Theory and Technology,2022,39(7):1308~1314.[点击复制]
基于条件高斯分布的未知输入与状态估计算法
Unknown input and state estimation based on conditional Gaussian distribution
摘要点击 1095  全文点击 366  投稿时间:2021-07-13  修订日期:2022-03-24
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DOI编号  10.7641/CTA.2021.10617
  2022,39(7):1308-1314
中文关键词  未知输入估计  状态估计  随机系统  矩阵极限  条件高斯分布
英文关键词  unknown input estimation  state estimation  stochastic systems  matrix limit  conditional Gaussian distribution
基金项目  国家自然科学基金项目(61803330)资助
作者单位E-mail
丁博* 扬州大学 dingbo@yzu.edu.cn 
杨月全 扬州大学  
方华京 华中科技大学  
中文摘要
      针对未知输入同时存在于系统方程和测量方程的直接馈通线性随机系统, 提出了一种同时估计未知输入 和状态的算法. 首先, 通过将未知输入模型描述为有限方差的高斯分布, 利用条件高斯分布的性质, 推导出新的滤波 算法, 以同时得到未知输入估计和状态估计. 其次, 证明了当未知输入的方差趋于无穷大时, 本文提出的算法等价于 已有的递归三步滤波算法. 最后, 分析了本文算法的渐进稳定性条件, 结果表明, 与已有算法相比, 本文的算法适用 范围更广.
英文摘要
      A simultaneous input and state estimation algorithm is proposed for linear stochastic direct feed-through systems, where the unknown input affects both state and measurement equations. First, by using a specific input model where the input is described as a Gaussian distribution with finite covariance, a new filtering formulation is derived to simultaneously obtain the input and state estimation based on the property of the conditional Gaussian distribution. Moreover, it is proved that the proposed algorithm is equivalent to the existing recursive three-step filtering algorithm when the variance of the unknown input tends to infinity. Finally, the asymptotic stability conditions of the proposed filter are discussed. It is shown that the application of this filter has a wider application range than the existing result.