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约束UKF初始参数对Bouc-Wen模型参数识别的影响
引用本文:王涛,吴斌,孟丽岩,许国山,张健,尹晓黎.约束UKF初始参数对Bouc-Wen模型参数识别的影响[J].黑龙江科技学院学报,2014,24(6):651-657.
作者姓名:王涛  吴斌  孟丽岩  许国山  张健  尹晓黎
作者单位:1. 黑龙江科技大学建筑工程学院,哈尔滨150022;哈尔滨工业大学土木工程学院,哈尔滨150090
2. 哈尔滨工业大学土木工程学院,哈尔滨,150090
3. 黑龙江科技大学建筑工程学院,哈尔滨,150022
基金项目:黑龙江省教育厅科学技术研究项目
摘    要:为获得约束UKF初始参数对模型参数识别的影响规律,针对Bouc-Wen模型给出基于约束UKF在线参数识别方法,通过数值模拟分析初始状态估计均值与协方差、过程噪声协方差、观测噪声协方差等滤波器初始参数对模型参数识别精度与收敛速度的影响,提出相应的参数取值建议.结果表明:在无模型误差的情况下,约束UKF对初始参数的设置具有较好的鲁棒性;适当地增大初始状态估计协方差,减小过程噪声,采用真实系统观测噪声协方差以及减小初始参数值与真实值的偏差,可以有效提高参数识别收敛速度和精度.该研究为基于约束UKF的非线性结构模型在线参数识别方法提供了参考.

关 键 词:参数识别  UKF  约束  Bouc-Wen模型  初始参数

Effects of initial parameters of constrained UKF on parameter identification for Bouc-Wen model
WANG Tao,WU Bin,MENG Liyan,XU Guoshan,ZHANG Jian,YIN Xiaoli.Effects of initial parameters of constrained UKF on parameter identification for Bouc-Wen model[J].Journal of Heilongjiang Institute of Science and Technology,2014,24(6):651-657.
Authors:WANG Tao  WU Bin  MENG Liyan  XU Guoshan  ZHANG Jian  YIN Xiaoli
Institution:WANG Tao, WU Bin, MENG Liyan , XU Guoshan, ZHANG Jian, YIN Xiaoli (1. School of Civil Engineering, Heilongjiang University of Science & Technology, Harbin 150022, China; 2. School of Civil Engineering, Harbin Institute of Technology, Harbin 150090, China)
Abstract:This paper is specifically devoted to investigating the law underlying the effects of initial parameters of the constrained UKF on model parameter identification.This targeted investigation consists of developing an online parameter identification method based on constrained UKF for Bouc-Wen model;performing numerical simulation to analyze the influence of initial parameters,such as initial state estimation covariance,process noise covariance,measurement noise covariance and initial state estimate mean,on precision and convergence speed of parameter identification; and thereby producing the suggestion related to initial parameters selection.The results show that the constrained UKF offers a better robustness to initial parameters in the absence of model error; improved convergence speed and precision of parameter identification can be effected by increasing the initial state estimation covariance,reducing process noise covariance,observing noise covariance using the real system and reducing the deviation of initial value from the real value of model parameter.The study may provide a reference for nonlinear model parameter identification based on the constrained UKF method.
Keywords:parameter identification  unscented Kalman filter  constraint  Bouc-Wen model  initial parameter
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