引用本文:靳其兵,梁柱,权玲.具有不稳定初始状态的连续时间系统辨识[J].控制理论与应用,2011,28(1):125~130.[点击复制]
JIN Qi-bing,LIANG Zhu,QUAN Ling.Identification of continuous-time systems with unsteady initial conditions[J].Control Theory and Technology,2011,28(1):125~130.[点击复制]
具有不稳定初始状态的连续时间系统辨识
Identification of continuous-time systems with unsteady initial conditions
摘要点击 2209  全文点击 2037  投稿时间:2009-11-16  修订日期:2010-03-15
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DOI编号  10.7641/j.issn.1000-8152.2011.1.CCTA091457
  2011,28(1):125-130
中文关键词  不稳定初始状态  连续时间系统  状态估计辨识法  粒子群优化
英文关键词  unsteady initial conditions  continuous-time systems  state estimation identification method  particle swarm optimization
基金项目  国家“863”计划资助项目(2008AA042131); 国家“973”计划资助项目(2007CB714300).
作者单位E-mail
靳其兵 北京化工大学 信息科学与技术学院  
梁柱* 北京化工大学 信息科学与技术学院 zliang001@163.com 
权玲 北京化工大学 信息科学与技术学院  
中文摘要
      针对传统辨识方法不适用于具有不稳定初始状态的连续时间系统的问题, 提出一种全新的状态估计辨识法. 首先, 用状态空间模型中状态变量的初始值表征系统初始状态, 并将状态变量的初始值看作待辨识参数的一部分. 然后, 用粒子群优化算法获得所有参数的最优估计. 该方法在测试开始前不需要任何过程数据, 对测试信号无任何要求, 可直接用于闭环辨识. 仿真实验证明该算法是有效的.
英文摘要
      A new state estimation identification method is proposed for the identification of the continuous-time systems with non-zero unsteady initial conditions, to which the traditional identification methods cannot be applied. Initial values of state variables representing the initial conditions of the systems are considered a part of the parameters to be estimated. The particle swarm optimization is then used to obtain the optimal estimations of all parameters. This method needs no process data before the test starts and has no requirement for the test signal. Moreover, it can be applied to closed-loop identification directly. Its effectiveness is demonstrated through simulations.