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地壳形变分析的抗差最小二乘配置迭代解法
引用本文:王乐洋,陈汉清.地壳形变分析的抗差最小二乘配置迭代解法[J].地球物理学报,2017,60(8):3062-3071.
作者姓名:王乐洋  陈汉清
作者单位:1. 东华理工大学测绘工程学院, 南昌 330013;2. 流域生态与地理环境监测国家测绘地理信息局重点实验室, 南昌 330013;3. 江西省数字国土重点实验室, 南昌 330013
基金项目:国家自然科学基金(41664001,41204003)、江西省杰出青年人才资助计划项目(20162BCB23050)、国家重点研发计划(2016YFB0501405)、江西省教育厅科技项目(GJJ150595)和江西省数字国土重点实验室开放研究基金资助项目(DLLJ201705)联合资助.
摘    要:利用最小二乘配置进行地壳形变分析,其结果的合理性关键在于经验协方差函数的拟合.考虑到观测数据存在粗差的情况,提出基于观测值中位数初值的抗差最小二乘配置方法和基于中位参数法的抗差最小二乘配置方法.两种方法首先分别利用观测值中位数给出观测值初始权阵以及利用中位参数法给出最小二乘配置初始解,然后均在给定协方差函数参数初始值的情况下,应用合适的等价权进行抗差估计并通过迭代计算,最终获得稳健的协方差函数参数估值及最小二乘配置解.利用本文提出的两种方法以及传统方法分别对庐山地震的GPS垂直位移数据和意大利L'Aquila地震的InSAR同震位移数据进行处理分析.结果表明:相对传统方法,基于观测值中位数初值的抗差最小二乘配置方法效果更好,更具稳健性.

关 键 词:协方差函数  抗差拟合  中位数  中位参数  最小二乘配置  粗差  
收稿时间:2016-07-05

Analysis of crustal deformation based on iterative solutions of Robust Least Squares Collocation
WANG Le-Yang,CHEN Han-Qing.Analysis of crustal deformation based on iterative solutions of Robust Least Squares Collocation[J].Chinese Journal of Geophysics,2017,60(8):3062-3071.
Authors:WANG Le-Yang  CHEN Han-Qing
Institution:1. Faculty of Geomatics, East China University of Technology, Nanchang 330013, China;2. Key Laboratory of Watershed Ecology and Geographical Environment Monitoring, NASG, Nanchang 330013, China;3. Key Laboratory for Digital Land and Resources of Jiangxi Province, Nanchang 330013, China
Abstract:The rationality of the results obtained by the least squares collocation(LSC) method in analysis of crustal deformation depends on the fitting of the empirical covariance function. The Robust Least Square Collocation method based on Observation Initial Median Values (RLSC-OIMV) and the Robust Least Square Collocation method based on Median Parameter (RLSC-MP) are proposed consdiering the observation data contains outliers. Firstly, the observation median value is used to obtain the initial weight matrix of observation data and the median parameters method is used to obtain the initial solution of least squares collocation in RLSC-OIMV and RLSC-MP, respectively. With the initial parameters of covariance function, the equivalent weight scheme is then applied to obtain the robust parameters estimation of covariance function and least squares collocation solutions through iteration. We apply the two proposed methods and the traditional methods to analyze GPS vertical displacement data of the Lushan earthquake and the InSAR coseismic displacement data of the L'Aquila earthquake in Italy. The results show that the RLSC-OIMV is better and more robust than other methods.
Keywords:Covariance function  Robust fitting  Median  Median parameter  Least squares collocation  Outliers
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