Algorithms and statistical analysis for linear structured weighted total least squares problemOA北大核心
Algorithms and statistical analysis for linear structured weighted total least squares problem
Weighted total least squares(WTLS)have been regarded as the standard tool for the errors-in-variables(EIV)model in which all the elements in the observation vector and the coefficient matrix are contaminated with random errors.However,in many geodetic applications,some elements are error-free and some random observations appear repeatedly in different positions in the augmented coefficient matrix.It is called the linear structured EIV(LSEIV)model.Two kinds of methods are proposed for the LSEIV model from functional and stochastic modifications.On the one hand,the functional part of the LSEIV model is modified into the errors-in-observations(EIO)model.On the other hand,the stochastic model is modified by applying the Moore-Penrose inverse of the cofactor matrix.The algorithms are derived through the Lagrange multipliers method and linear approximation.The estimation principles and iterative formula of the parameters are proven to be consistent.The first-order approximate variance-covariance matrix(VCM)of the parameters is also derived.A numerical example is given to compare the performances of our proposed three algorithms with the STLS approach.Afterwards,the least squares(LS),total least squares(TLS)and linear structured weighted total least squares(LSWTLS)solutions are compared and the accuracy evaluation formula is proven to be feasible and effective.Finally,the LSWTLS is applied to the field of deformation analysis,which yields a better result than the tradi-tional LS and TLS estimations.
Jian Xie;Tianwei Qiu;Cui Zhou;Dongfang Lin;Sichun Long
School of Earth Science and Spatial Information Engineering,Hunan University of Science and Technology,Xiangtan 411201,ChinaCollege of Science,Central South University of Forestry and Technology,Changsha 410018,ChinaNational-Local Joint Engineering Laboratory of Geo-spatial Information Technology,Hunan University of Science and Technology,Xiangtan 411201,China
Linear structured weighted total least squaresErrors-in-variablesErrors-in-observationsFunctional model modificationStochastic model modificationAccuracy evaluation
《大地测量与地球动力学(英文版)》 2024 (002)
177-188 / 12
The authors would like to acknowledge the financial support of the National Natural Science Foundation of China(Grant No.42074016,42104025,42274057and 41704007),Hunan Provincial Natural Science Foundation of China(Grant No.2021JJ30244),Sci-entific Research Fund of Hunan Provincial Education Department(Grant No.22B0496).
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