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Total least-squares EIO model,algorithms and applications

Total least-squares EIO model,algorithms and applications
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摘要 A functional model named EIO(Errors-In-Observations) is proposed for general TLS(total least-squares)adjustment. The EIO model only considers the correction of the observation vector, but doesn't consider to correct all elements in the design matrix as the EIV(Errors-In-Variables) model does, furthermore, the dimension of cofactor matrix is much smaller. Iterative algorithms for the parameter estimation and their precise covariance matrix are derived rigorously, and the computation steps are also presented. The proposed approach considers the correction of the observations in the coefficient matrix, and ensures their agreements in every matrix elements. Parameters and corrections can be solved at the same time.An approximate solution and a precise solution of the covariance matrix can be achieved by corresponding algorithms. Applications of EIO model and the proposed algorithms are demonstrated with several examples. The results and comparative studies show that the proposed EIO model and algorithms are feasible and reliable for general adjustment problems. A functional model named EIO(Errors-In-Observations) is proposed for general TLS(total least-squares)adjustment. The EIO model only considers the correction of the observation vector, but doesn't consider to correct all elements in the design matrix as the EIV(Errors-In-Variables) model does, furthermore, the dimension of cofactor matrix is much smaller. Iterative algorithms for the parameter estimation and their precise covariance matrix are derived rigorously, and the computation steps are also presented. The proposed approach considers the correction of the observations in the coefficient matrix, and ensures their agreements in every matrix elements. Parameters and corrections can be solved at the same time.An approximate solution and a precise solution of the covariance matrix can be achieved by corresponding algorithms. Applications of EIO model and the proposed algorithms are demonstrated with several examples. The results and comparative studies show that the proposed EIO model and algorithms are feasible and reliable for general adjustment problems.
出处 《Geodesy and Geodynamics》 2019年第1期17-25,共9页 大地测量与地球动力学(英文版)
基金 supported by the Open Fund of Engineering laboratory of Spatial Information Technology of Highway Geological Disaster Early Warning in Hunan Province(Changsha University of Science & Technology, Grant No:KFJ150602) Hunan Province Science and Technology Program Funded Projects, China (Grant No:2015NK3035)
关键词 ERRORS-IN-VARIABLES Errors-In-Observations WEIGHTED total least SQUARE Parameter estimation ITERATIVE COVARIANCE solution Errors-In-Variables Errors-In-Observations Weighted total least square Parameter estimation Iterative covariance solution
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  • 1袁庆,楼立志,陈玮娴.加权总体最小二乘在三维基准转换中的应用[J].测绘学报,2011,40(S1):115-119. 被引量:45
  • 2FANG Xing. Weighted Total Least Squares Solution for Application in Geodesy[D]. Hanover: Leibniz Universityo: Hanover, 2011.
  • 3HUFFEL S V, VANDEWALLE J.The Total LeasVsquares Problem: Computational Aspects and Analysis [M] Philadelphia: Society for Industrial and Applied Mathe- matics, 1991.
  • 4FANG Xing. A Structured and Constrained Total Least- squares Solution with Cross-covariances [J]. Studia Geophysica et Geodaetiea, 2014, 58 (l): 116.
  • 5BLEICH P, ILLNER M. Strenge L0sung der R/iumlichen Koordinatentransformation Durch Iiterative Berechnung[J]. Allgemdne Vermessungs Nachrichten, 1989,96 (4) : 13a 144.
  • 6POPE A. Some Pitfalls to be Avoided in the Iterative Adjustment of Nonlinear Problems[C] // Proceedings of the 38th Annual Meeting of American Society Photogrammetry. Washington DC: [s.n.], 1972: 449-473.
  • 7ACAR A, OYLUDEMIR MT, AKYILMAZ O, et al. Deformation Analysis with Total Least Squares [ J ]. Natural Hazards and Earth System Sciences, 2006, 6: 663-669.
  • 8FELUS F, BURTCH R. On Symmetrical Three dimen- sional Datum Conversion[J]. GPS Solutions, 2009, 13 (1) :65- 74.
  • 9AKYILMAZ O. Solution of the Heteroscedastic Datum Transformation Problem [R] . Munich: International Association of Geodesy, 2012.
  • 10LU Jue, CHEN Yi, FANG Xing, et al. Performing 3 D Similarity Transformation Using the Weighted Total Least-squares Method [R] Munich: International Association of Geodesy, 2012.

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