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Using an artificial neural network to improve the transformation of coordinates between classical geodetic reference frames

机译:使用人工神经网络改善经典大地参考系之间坐标的转换

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摘要

Advances in technology have allowed for the improvement of geodetic reference systems (GRSs). Relating different GRSs can be done by employing transformation parameters which may not, however, be satisfactory in certain applications due to the heterogeneous and local character of deformations caused by the procedures adopted in classical networks. Classical networks were established basically by procedures of triangulation and traverse survey, and the existence of these deformations justifies the search for new transformation methodologies. This study evaluated artificial neural networks (ANNs) as a tool for the transformation between GRSs. Frames points with known geodetic coordinates (latitude and longitude) in the South American Datum of 1969 (SAD69) system and in the older Corrego Alegre system, both still in use in Brazil, were chosen for this study. The SAD69 coordinates of the frame points were transformed into Corrego Alegre coordinates and then the computed coordinates were compared with known ones. Four tests were carried out in order to transform the coordinates. The first test involved the use of official transformation parameters and the formulas of Molodensky. In the second test, new transformation parameters were employed. In the third test new regional transformation parameters were determined, while the fourth test employed an ANN to predict the Corrego Alegre coordinates of the check points. Results indicated that the employment of an ANN transformed the coordinates most accurately, and indicated that they can be useful in modeling deformations in classical networks.
机译:技术的进步使得大地参考系统(GRS)得以改进。可以通过使用变换参数来完成不同GRS的关联,但是由于在经典网络中采用的过程导致的变形的异质性和局部性,在某些应用中可能无法令人满意。古典网络基本上是通过三角测量和遍历测量的过程建立的,这些变形的存在证明了寻找新的变换方法的合理性。这项研究评估了人工神经网络(ANN)作为GRS之间转换的工具。本研究选择了在1969年南美基准面(SAD69)系统和较旧的Corrego Alegre系统中都具有已知大地坐标(纬度和经度)的框架点,它们均仍在巴西使用。将帧点的SAD69坐标转换为Corrego Alegre坐标,然后将计算出的坐标与已知坐标进行比较。为了变换坐标进行了四个测试。第一次测试涉及使用官方转换参数和Molodensky公式。在第二个测试中,使用了新的转换参数。在第三项测试中,确定了新的区域变换参数,而第四项测试则使用了ANN来预测检查点的Corrego Alegre坐标。结果表明,使用ANN可以最准确地转换坐标,并表明它们可以用于建模经典网络中的变形。

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