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高速列车非线性模型的极大似然辨识
引用本文:衷路生,李兵,龚锦红,张永贤,祝振敏.高速列车非线性模型的极大似然辨识[J].自动化学报,2014,40(12):2950-2958.
作者姓名:衷路生  李兵  龚锦红  张永贤  祝振敏
作者单位:1.华东交通大学电气与电子工程学院 南昌 330013
基金项目:国家自然科学基金(61263010,60904049),江西省青年科学基金(20114BAB211014),江西省教育厅研究项目(GJJ14399),国家留学基金(2011836118)资助
摘    要:提出高速列车非线性模型的极大似然(Maximum likelihood, ML)辨识方法,适合于高速列车在非高斯噪声干扰下的非线性模型的参数估计.首先,构建了描述高速列车单质点力学行为的随机离散非线性状态空间模型,并将高速列车参数的极大似然(ML)估计问题转化为期望极大(Expectation maximization, EM)的优化问题; 然后,给出高速列车状态估计的粒子滤波器和粒子平滑器的设计方法,据此构造列车的条件数学期望,并给出最大化该数学期望的梯度搜索方法,进而得到列车参数的辨识算法,分析了算法的收敛速度; 最后,进行了高速列车阻力系数估计的数值对比实验. 结果表明, 所提出的辨识方法的有效性.

关 键 词:高速列车    系统辨识    极大似然    平滑滤波器    梯度搜索
收稿时间:2013-10-10

Maximum Likelihood Identification of Nonlinear Model for High-speed Train
ZHONG Lu-Sheng,LI Bing,GONG Jin-Hong,ZHANG Yong-Xian,ZHU Zhen-Min.Maximum Likelihood Identification of Nonlinear Model for High-speed Train[J].Acta Automatica Sinica,2014,40(12):2950-2958.
Authors:ZHONG Lu-Sheng  LI Bing  GONG Jin-Hong  ZHANG Yong-Xian  ZHU Zhen-Min
Affiliation:1.School of Electrical and Electronic Engineering, East China Jiaotong University, Nanchang 330013
Abstract:A maximum likelihood (ML) system identification method is proposed for parameter estimation of nonlinear dynamic high-speed train model subject to non-gaussian noise. Firstly, a stochastic nonlinear discrete state-space model is established to describe the dynamic behavior of high-speed train as a single-point-mass object. The expectation-maximization (EM) approach is employed to compute the ML parameter estimates. In addition, the techniques of particle filtering and particle smoothing are given to estimate the nonlinear state of high-speed train, which is used to compute approximation of the conditional expectation. Furthermore, gradient-based search method is presented to maximize the conditional expectation. And the identification algorithm is given for parameter estimation of high-speed train. The convergence rate of the identification algorithm is also discussed in detail. Finally, numerical simulation study of parameter estimation for high-speed train is implemented and the results show the effectiveness of the proposed ML identification method.
Keywords:High-speed train  system identification  maximum likelihood (ML)  smoothing filters  gradient-based search
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