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Data Snooping for the Equality Constrained Nonlinear Gauss-Helmert Model Using Sensitivity Analysis

机译:使用敏感性分析的平等约束非线性高斯 - 蠕虫模型的数据窥探

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摘要

To develop a universal-outliers processing algorithm under the conditions with equality constraints, the equality-constrained nonlinear Gauss-Helmert (GH) model, which contains the equality-constrained Gauss-Markov (GM) and errors-in-variables (EIV) models as special cases, is selected as the research object in this paper. The least squares solution for the nonlinear GH model with equality constraints is obtained using the Euler-Lagrange approach, and then, it is equivalently formulated as the standard constrained least squares (CLS) problem. To construct the test statistics for the outliers detection, a distinctive sensitivity analysis approach is introduced into this CLS problem. The local sensitivity of the weighted sum of squared residuals to the perturbations of observations in the CLS problem is discussed, and then, the local test statistics are constructed based on these sensitivity indicators. To verify the performance of the sensitivity-based test statistics, the proposed data-snooping algorithm for the equality-constrained nonlinear GH model is applied to a three-dimensional (3D) symmetric similarity transformation. The computational results of the simulated and real examples manifest that the proposed data-snooping algorithm using the sensitivity-based test statistics can effectually decrease the negative impact of the outliers and derive reliable parameters. It should be pointed out that the new algorithm is applicable in various kinds of equality-constrained least squares and total least squares problems.
机译:在具有平等约束的条件下开发通用异语处理算法,相等约束的非线性高斯-Helmert(GH)模型,其中包含相等约束的Gauss-Markov(GM)和变量误差(EIV)模型作为特殊情况,被选为本文中的研究对象。使用Euler-Lagrange方法获得具有平等约束的非线性GH模型的最小二乘解,然后,等效地配制为标准约束最小二乘(CLS)问题。为了构建异常值检测的测试统计数据,将一个独特的敏感性分析方法引入了该CLS问题。讨论了平方残差的局部敏感性对CLS问题中的观察结果的扰动,然后,基于这些灵敏度指示器构建局部测试统计。为了验证基于灵敏度的测试统计的性能,所提出的相邻约束非线性GH模型的数据侦听算法应用于三维(3D)对称相似度转换。模拟和实际示例的计算结果表明,使用基于灵敏度的测试统计数据的建议的数据侦听算法可以有效地降低异常值的负面影响并导出可靠的参数。应该指出的是,新算法适用于各种平等约束的最小二乘和总至少方格问题。

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