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Robustness analysis of geodetic networks.

机译:大地测量网络的稳健性分析。

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After geodetic networks (e.g., horizontal control, levelling, GPS, etc.) are monumented, relevant measurements are made and point coordinates for the control points are estimated by the method of least squares and the 'goodness' of the network is measured by a precision analysis making use of the covariance matrix of the estimated parameters. When such a network is designed, traditionally this again uses measures derived from the covariance matrix of the estimated parameters. This traditional approach is based upon propagation of random errors.Here the consequences of what happens when errors are not detected by Baarda's test are considered. This may happen for two reasons: (i) the observation is not sufficiently checked by other independent observations and, (ii) the test does not recognize the gross error. By how much can these undetected errors influence the network? If the influence of the undetected errors is small the network is called robust, if it is not it is called a weak network.In the approach described in this dissertation, traditional reliability analysis (Baarda's approach) has been augmented with geometrical strength analysis using strain in a technique called robustness analysis. Robustness analysis is a natural merger of reliability and strain and is defined as the ability to resist deformations induced by the maximum undetectable errors as determined from internal reliability analysis.To measure robustness of a network, the deformation of individual points of the network is portrayed by strain. The strain technique reflects only the network geometry and accuracy of the observations. However, to be able to calculate displacements caused by the maximum undetectable errors, the initial conditions have to be determined. Furthermore, threshold values are needed to evaluate the networks. These threshold values are going to enable us to assess the robustness of the network. If the displacements of individual points of the network are worse than the threshold values, we must redesign the network by changing the configuration or improving the measurements until we obtain a network of acceptable robustness.In addition to this precision analysis, reliability (the detection of outliers/gross errors/blunders among the observations) has been measured using a technique pioneered by the geodesist Baarda. In Baarda's method a statistical test (data-snooping) is used to detect outliers. What happens if one or more observations are burdened with an error? It is clear that these errors will affect the observations and may produce incorrect estimates of the parameters. If the errors are detected by the statistical test then those observations are removed, the network is readjusted, and we obtain the final results.The measure of robustness should be independent of the choice of a datum so that the analysis of a network using a different datum will give the same answer. Robustness should be defined in terms of invariants rather than the primitives (the descriptors for deformation, e.g., dilation, differential rotation and shear) since a datum change will change the strain matrix and therefore the primitive values. Since dilation, differential rotation and total shear are invariants in 2D, whatever the choice of the datum is the results for dilation, differential rotation and total shear will be identical. Moreover this should be the case for 3D robustness analysis.Robustness of a network is affected by the design of the network and accuracy of the observations. Therefore the points that lack robustness in the network may be remedied either by increasing the quality of observations and/or by increasing the number of observations in the network. A remedial strategy is likely to be different for different networks since they have different geometry and different observations. There might not be a solution fitting all networks but in this thesis a general strategy is given.In this dissertation first the initial conditions for 2D networks have been formulated then the threshold values for 2D networks have been developed. Application of robustness analysis to 1D networks has been investigated and the limitation of robustness analysis for 1D networks is addressed. The initial condition for 1D networks has also been formulated. Application of robustness analysis to 3D networks has been researched. Moreover, the initial conditions have been formulated. To evaluate 3D networks, the threshold values have been developed. Strain invariants in 3D have been researched. It is proven that dilation and differential rotation are invariants in 3D. It has been discovered that total shear is not invariant in 3D Euclidean space. Therefore the maximum shear strain in eigenspace has been extended into a 3D formulation. The relation between 3D and 2D in terms of invariants has been shown. For the networks which need to be improved, a remedial strategy has been described.
机译:在建立大地测量网络(例如,水平控制,水准仪,GPS等)后,进行相关测量,并通过最小二乘法估算控制点的点坐标,并通过a来测量网络的“良性”利用估计参数的协方差矩阵进行精确度分析。在设计此类网络时,传统上会再次使用从估计参数的协方差矩阵得出的度量。这种传统方法基于随机错误的传播,这里考虑了Baarda检验未检测到错误时发生的后果。发生这种情况可能有两个原因:(i)其他独立观察未对观察进行足够的检查;(ii)测试未识别出重大错误。这些未检测到的错误会在多大程度上影响网络?如果未检测到的错误的影响较小,则将网络称为鲁棒网络;否则将其称为弱网络。在本文描述的方法中,传统的可靠性分析(Baarda方法)已通过使用应变的几何强度分析得到了增强在一种称为稳健性分析的技术中稳健性分析是可靠性和应变的自然结合,定义为抵抗由内部可靠性分析确定的最大不可检测误差引起的变形的能力。为测量网络的稳健性,可通过以下方式描述网络的各个点的变形:应变。应变技术仅反映网络的几何形状和观测结果的准确性。但是,为了能够计算由最大不可检测误差引起的位移,必须确定初始条件。此外,需要阈值来评估网络。这些阈值将使我们能够评估网络的健壮性。如果网络中各个点的位移比阈值差,则必须通过更改配置或改进测量来重新设计网络,直到获得可接受的鲁棒性网络为止。观测值中的离群值/总误差/错误)已使用大地测量学家Baarda率先采用的技术进行了测量。在Baarda的方法中,使用统计测试(数据监听)来检测异常值。如果一个或多个观察结果都充满错误,该怎么办?显然,这些错误会影响观察结果,并可能产生对参数的错误估计。如果通过统计检验检测到错误,则将这些观察结果删除,重新调整网络,然后获得最终结果。稳健性的度量应独立于基准的选择,以便使用不同的网络进行分析数据将给出相同的答案。稳健性应根据不变量而不是基元(变形的描述符,例如膨胀,微分旋转和剪切)来定义,因为基准变化将改变应变矩阵并因此更改基元值。由于膨胀,差分旋转和总剪切在2D中是不变的,因此无论选择基准面是膨胀的结果,差分旋转和总剪切都将是相同的。此外,3D鲁棒性分析也应如此。网络的鲁棒性受网络设计和观测精度的影响。因此,可以通过提高观测质量和/或通过增加网络中观测的数量来弥补网络中缺乏鲁棒性的点。对于不同的网络,补救策略可能会有所不同,因为它们具有不同的几何结构和不同的观察结果。本文可能没有一个适合所有网络的解决方案,但本文提出了一种通用策略。本文首先提出了二维网络的初始条件,然后确定了二维网络的阈值。研究了鲁棒性分析在一维网络中的应用,并解决了一维网络的鲁棒性分析的局限性。一维网络的初始条件也已制定。研究了鲁棒性分析在3D网络中的应用。此外,已经制定了初始条件。为了评估3D网络,已经开发了阈值。已经研究了3D中的应变不变量。事实证明,膨胀和旋转差是3D中的不变性。已经发现,总剪切在3D欧几里得空间中不是不变的。因此,本征空间中的最大剪切应变已扩展为3D公式。已经示出了根据不变性的3D和2D之间的关系。对于需要改进的网络,已经描述了补救策略。

著录项

  • 作者

    Berber, Mustafa.;

  • 作者单位

    University of New Brunswick (Canada).;

  • 授予单位 University of New Brunswick (Canada).;
  • 学科 Geodesy.
  • 学位 Ph.D.
  • 年度 2006
  • 页码 123 p.
  • 总页数 123
  • 原文格式 PDF
  • 正文语种 eng
  • 中图分类
  • 关键词

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