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Learning-based computing techniques in geoid modeling for precise height transformation

机译:大地水准面建模中基于学习的计算技术可实现精确的高度转换

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摘要

Precise determination of local geoid is of particular importance for establishing height control in geodetic GNSS applications, since the classical leveling technique is too laborious. A geoid model can be accurately obtained employing properly distributed benchmarks having GNSS and leveling observations using an appropriate computing algorithm. Besides the classical multivariable polynomial regression equations (MPRE), this study attempts an evaluation of learning based computing algorithms: artificial neural networks (ANNs), adaptive network-based fuzzy inference system (ANFIS) and especially the wavelet neural networks (WNNs) approach in geoid surface approximation. These algorithms were developed parallel to advances in computer technologies and recently have been used for solving complex nonlinear problems of many applications. However, they are rather new in dealing with precise modeling problem of the Earth gravity field. In the scope of the study, these methods were applied to Istanbul GPS Triangulation Network data. The performances of the methods were assessed considering the validation results of the geoid models at the observation points. In conclusion the ANFIS and WNN revealed higher prediction accuracies compared to ANN and MPRE methods. Beside the prediction capabilities, these methods were also compared and discussed from the practical point of view in conclusions.
机译:精确确定本地大地水准面对于在大地测量GNSS应用中建立高度控制尤为重要,因为经典的水准测量技术非常费力。大地水准面模型可以通过使用适当分布的具有GNSS的基准以及使用适当的计算算法进行水准观测的方法来准确获得。除经典的多元多项式回归方程(MPRE)外,本研究还尝试评估基于学习的计算算法:人工神经网络(ANN),基于自适应网络的模糊推理系统(ANFIS),尤其是小波神经网络(WNN)方法。大地水准面近似。这些算法是与计算机技术的进步并行开发的,最近已用于解决许多应用程序中的复杂非线性问题。但是,它们在处理地球重力场的精确建模问题方面相当新。在研究范围内,这些方法已应用于Istanbul GPS Triangulation Network数据。考虑到大地水准面模型在观测点的验证结果,评估了方法的性能。总之,与ANN和MPRE方法相比,ANFIS和WNN具有更高的预测精度。除了预测能力外,还从实际角度对这些方法进行了比较和讨论,得出结论。

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