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Total least squares adjustment in partial errors-in-variables models: algorithm and statistical analysis

机译:局部变量误差模型中的总最小二乘平差:算法和统计分析

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摘要

The weighted total least squares (TLS) method has been developed to deal with observation equations, which are functions of both unknown parameters of interest and other measured data contaminated with random errors. Such an observation model is well known as an errors-in-variables (EIV) model and almost always solved as a nonlinear equality-constrained adjustment problem. We reformulate it as a nonlinear adjustment model without constraints and further extend it to a partial EIV model, in which not all the elements of the design matrix are random. As a result, the total number of unknowns in the normal equations has been significantly reduced. We derive a set of formulae for algorithmic implementation to numerically estimate the unknown model parameters. Since little statistical results about the TLS estimator in the case of finite samples are available, we investigate the statistical consequences of nonlinearity on the nonlinear TLS estimate, including the first order approximation of accuracy, nonlinear confidence region and bias of the nonlinear TLS estimate, and use the bias-corrected residuals to estimate the variance of unit weight.
机译:已开发出加权总最小二乘(TLS)方法来处理观测方程,该观测方程是感兴趣的未知参数和受随机误差污染的其他测量数据的函数。这样的观测模型是众所周知的变量误差(EIV)模型,几乎总是作为非线性等式约束的调整问题来求解。我们将其重新构造为无约束的非线性调整模型,然后将其扩展为部分EIV模型,在该模型中,设计矩阵的所有元素并非都是随机的。结果,正态方程中未知数的总数已大大减少。我们推导了一组用于算法实现的公式,以数值估算未知模型参数。由于在有限样本的情况下几乎没有关于TLS估计器的统计结果,因此我们研究了非线性对非线性TLS估计的统计结果,包括准确性的一阶近似值,非线性置信区域和非线性TLS估计的偏差,以及使用偏差校正残差来估计单位重量的方差。

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