引用本文:骆宏伦,邢玛丽,黄雄.带随机量测时滞和随机丢包的改进无迹卡尔曼滤波[J].控制理论与应用,2023,40(5):933~941.[点击复制]
LUO Hong-lun,XING Ma-li,HUANG Xiong.An improved unscented Kalman filter with randomly delayed measurements and randomly missing measurements[J].Control Theory and Technology,2023,40(5):933~941.[点击复制]
带随机量测时滞和随机丢包的改进无迹卡尔曼滤波
An improved unscented Kalman filter with randomly delayed measurements and randomly missing measurements
摘要点击 1180  全文点击 369  投稿时间:2021-05-17  修订日期:2023-02-27
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DOI编号  10.7641/CTA.2021.10417
  2023,40(5):933-941
中文关键词  无迹卡尔曼滤波  正交投影  随机时滞  随机丢包
英文关键词  unscented Kalman filter  orthogonal projections  random delay  random packet losses
基金项目  国家自然科学基金项目(61803098), 广东省基础与应用基础研究基金项目(2021A1515012554), 广东省科学基金创新团队计划项目(2018B0303 12006), 国家重点研究开发项目(2018YFB1700400), 广东省信息物理系统重点实验室项目(2020B1212060069), 智能制造信息物理系统国家与地 方联合工程研究中心项目
作者单位E-mail
骆宏伦 广东工业大学 luo_honglun@163.com 
邢玛丽* 广东工业大学 maryxing90@163.com 
黄雄 广东工业大学 huangxiong_95@163.com 
中文摘要
      经典卡尔曼滤波要求量测值可实时获取, 且仅适用于线性系统. 然而, 在工程实际应用中, 系统多为非线性系统, 量测值也会发生滞后或者丢失等现象, 此时经典卡尔曼滤波已不适用. 因此, 本文针对一类带有随机量测一步时滞和随机丢包的非线性离散系统的状态估计问题, 用两个满足伯努利分布的独立随机变量来描述随机量测一步滞后和随机丢包的现象. 当量测丢失时, 用量测值的一步预测值来代替零输入进行补偿. 在此基础上应用正交投影理论和无迹变换的方法提出了一种改进的无迹卡尔曼滤波算法. 最后, 通过仿真例子验证在考虑随机量测一步时滞和随机丢包的情况下, 所提出的改进算法相比于经典无迹卡尔曼滤波算法具有更高的精度.
英文摘要
      The classical Kalman filter requires that the measurements can be obtained in real time, and it is only suitable for linear systems. However, in practical engineering applications, most of the systems are nonlinear systems, and the measurements are sometimes delayed or lost, the classical Kalman filter is no longer applicable in this case. Therefore, in this paper, the problem of state estimation for nonlinear discrete-time systems with randomly one-step delayed measurements and missing measurements is studied. The phenomena of randomly one-step delayed measurements and missing measurements are described by two independent random variables satisfying the Bernoulli distribution. When the measurement is missing, the one-step prediction value of the measurement is used to replace the zero input for compensation. On this basis, an improved unscented Kalman filter is proposed by using the orthogonal projection theory and unscented transformation method. Finally, a simulation example is given to illustrate that the improved algorithm has higher accuracy than the classical unscented Kalman filter in the case of considering randomly one-step delayed measurements and missing measurements.