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A novel method for improving the accuracy of coordinate transformation in multiple measurement systems

机译:一种提高多重测量系统坐标变换精度的新方法

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摘要

Large-scale dimensional metrology usually requires a combination of multiple measurement systems, such as laser tracking, total station, laser scanning, coordinate measuring arm and video photogrammetry, etc. Often, the results from different measurement systems must be combined to provide useful results. The coordinate transformation is used to unify coordinate frames in combination; however, coordinate transformation uncertainties directly affect the accuracy of the final measurement results. In this paper, a novel method is proposed for improving the accuracy of coordinate transformation, combining the advantages of the best-fit least-square and radial basis function (RBF) neural networks. First of all, the configuration of coordinate transformation is introduced and a transformation matrix containing seven variables is obtained. Second, the 3D uncertainty of the transformation model and the residual error variable vector are established based on the best-fit least-square. Finally, in order to optimize the uncertainty of the developed seven-variable transformation model, we used the RBF neural network to identify the uncertainty of the dynamic, and unstructured, owing to its great ability to approximate any nonlinear function to the designed accuracy. Intensive experimental studies were conducted to check the validity of the theoretical results. The results show that the mean error of coordinate transformation decreased from 0.078 mm to 0.054 mm after using this method in contrast with the GUM method.
机译:大规模的尺寸计量通常需要多个测量系统的组合,例如激光跟踪,全站仪,激光扫描,坐标测量臂和视频摄影测量等。通常,必须组合不同测量系统的结果以提供有用的结果。坐标转换用于统一组合坐标帧;然而,坐标转换不确定性直接影响最终测量结果的准确性。本文提出了一种新的方法,用于提高坐标变换的准确性,结合最佳拟合最小二乘和径向基函数(RBF)神经网络的优点。首先,引入了坐标变换的配置,并且获得了包含七个变量的变换矩阵。其次,基于最佳拟合最小二乘来建立变换模型和残余误差变量向量的3D不确定性。最后,为了优化开发的七变量变换模型的不确定性,我们使用了RBF神经网络来识别动态和非结构化的不确定性,由于其具有近似于设计精度的任何非线性函数的能力。进行了密集的实验研究,以检查理论结果的有效性。结果表明,在使用该方法与GUM方法相比,使用该方法后坐标变换的平均误差从0.078毫米降低至0.054mm。

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