吕志鹏, 隋立芬. 基于非线性高斯-赫尔默特模型的结构总体最小二乘法[J]. 武汉大学学报 ( 信息科学版), 2019, 44(12): 1808-1815. DOI: 10.13203/j.whugis20180104
引用本文: 吕志鹏, 隋立芬. 基于非线性高斯-赫尔默特模型的结构总体最小二乘法[J]. 武汉大学学报 ( 信息科学版), 2019, 44(12): 1808-1815. DOI: 10.13203/j.whugis20180104
LÜ Zhipeng, SUI Lifen. A Structured Total Least Squares Method Based on Nonlinear Gauss-Helmert Model[J]. Geomatics and Information Science of Wuhan University, 2019, 44(12): 1808-1815. DOI: 10.13203/j.whugis20180104
Citation: LÜ Zhipeng, SUI Lifen. A Structured Total Least Squares Method Based on Nonlinear Gauss-Helmert Model[J]. Geomatics and Information Science of Wuhan University, 2019, 44(12): 1808-1815. DOI: 10.13203/j.whugis20180104

基于非线性高斯-赫尔默特模型的结构总体最小二乘法

A Structured Total Least Squares Method Based on Nonlinear Gauss-Helmert Model

  • 摘要: 变量误差(error-in-variables,EIV)模型的系数矩阵存在结构特征的情况,并且这种结构特征可以扩展到观测向量中。首先采用变量投影法将系数矩阵的增广矩阵展开成仿射矩阵形式,提取系数矩阵和观测向量中的随机量,并将EIV模型表示为非线性高斯-赫尔默特模型,然后利用非线性最小二乘原理推导了一种结构总体最小二乘法。该算法统一了普通的结构总体最小二乘法、结构数据最小二乘法以及最小二乘法。将该算法应用到真实算例和模拟算例中,两个算例结果表明,该算法与已有能够解决EIV模型结构特征的结构或加权总体最小二乘法估计结果一致,验证了该算法的有效性。同时,该算法对结构特征的提取方式简单、规律性强且易于编程实现;且在算法设计中,把结构总体最小二乘问题转换为附有参数的条件平差问题,即将其纳入到最小二乘平差理论体系,便于其扩展应用。同时对平面拟合问题的误差估计特性进行了定性分析,由分析可知参数的相对大小对估计误差的一致性有直接影响,这说明EIV模型下系数矩阵和观测向量中随机量的估计误差与真误差的一致性关系相对复杂。

     

    Abstract: The coefficient matrix of errors-in-variables(EIV) model may contain structural features, and this situation can be extended to the observation vector. Here, we define the the augmented matrix of the coefficient matrix that consists of the coefficient matrix and the observation vector. Firstly, we reformulate the EIV model as the nonlinear Gauss-Helmert model. The augmented matrix is expanded as an affine function form, and then the random elements in it are extracted by variable projection method. Finally, we derive a novel algorithm for the structural total least squares (STLS) problem and its first-order approximation precision estimator based on the nonlinear least squares (NLS) theory. The proposed algorithm unifies the general STLS method, the structural data least squares (SDLS) method and the least squares (LS) method. Furthermore, this algorithm is applied to a real example and a simulation example, e. g. straight line fitting and plane fitting. The results of the two examples show that the proposed algorithm is consistent with the existing structural or weighted total least squares methods which can solve the structure problem of the EIV model, thus the results verifies the effectiveness of the proposed algorithm. The method of extracting structural features in this paper is simple in the concept and easy in the implementation. And the STLS problem is transformed into a condition adjustment problem with parameters, which is incorporated into the least squares adjustment theory system to facilitate its extended application. Additionally, the characteristic of the estimated errors of plane fitting is analyzed qualitatively. It can be seen from the analysis that the relative size of the parameters has a direct impact on the consistency of the estimated errors, which indicates that the consistency between the estimated errors and the true errors is relatively complex in the EIV model.

     

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