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Adjustment of Measurements with Multiplicative Errors: Error Analysis, Estimates of the Variance of Unit Weight, and Effect on Volume Estimation from LiDAR-Type Digital Elevation Models

机译:调整具有乘性误差的测量:误差分析,单位重量方差的估计以及LiDAR型数字高程模型对体积估计的影响

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Modern observation technology has verified that measurement errors can be proportional to the true values of measurements such as GPS, VLBI baselines and LiDAR. Observational models of this type are called multiplicative error models. This paper is to extend the work of Xu and Shimada published in 2000 on multiplicative error models to analytical error analysis of quantities of practical interest and estimates of the variance of unit weight. We analytically derive the variance-covariance matrices of the three least squares (LS) adjustments, the adjusted measurements and the corrections of measurements in multiplicative error models. For quality evaluation, we construct five estimators for the variance of unit weight in association of the three LS adjustment methods. Although LiDAR measurements are contaminated with multiplicative random errors, LiDAR-based digital elevation models (DEM) have been constructed as if they were of additive random errors. We will simulate a model landslide, which is assumed to be surveyed with LiDAR, and investigate the effect of LiDAR-type multiplicative error measurements on DEM construction and its effect on the estimate of landslide mass volume from the constructed DEM.
机译:现代观测技术已经证实,测量误差可以与GPS,VLBI基线和LiDAR等测量的真实值成比例。这种类型的观测模型称为乘法误差模型。本文的目的是将Xu和Shimada于2000年发表的关于乘法误差模型的工作扩展到对实际兴趣量的分析误差分析和单位重量方差的估计。我们通过分析得出三个最小二乘(LS)调整,调整后的度量以及乘性误差模型中度量的校正的方差-协方差矩阵。为了进行质量评估,我们结合三种LS调整方法构造了5个估计值,用于单位权重的方差。尽管LiDAR测量结果受到乘法随机误差的污染,但基于LiDAR的数字高程模型(DEM)仍被构建为好像具有附加的随机误差。我们将模拟一个假定要用LiDAR进行调查的滑坡模型,并研究LiDAR型乘法误差测量对DEM构建的影响以及其对从构建的DEM估算滑坡体量的影响。

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