A new spatio-temporal graph neural network method for the analysis of GNSS geodetic data

Mostafa Kiani Shahvandi, Benedikt Soja
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Abstract

Graph neural networks are a newly established category of machine learning algorithms dealing with relational data. They can be used for the analysis of both spatial and/or temporal data. They are capable of modeling how time series of nodes, which are located at different spatial positions, change by the exchange of information between nodes and their neighbors. As a result, time series can be predicted to future epochs.

GNSS networks consist of stations at different locations, each producing time series of geodetic parameters, such as changes in their positions. In order to successfully apply graph neural networks to predict time series from GNSS networks, the physical properties of GNSS time series should be taken into account. Thus, we suggest a new graph neural network algorithm that has both a physical and a mathematical basis. The physical part is based on the fundamental concept of information exchange between nodes and their neighbors. Here, the temporal correlation between the changes of time series of the nodes and their neighbors is considered, which is computed by geophysical loading and/or climatic data. The mathematical part comes from the time series prediction by mathematical models, after the removal of trends and periodic effects using the singular spectrum analysis algorithm. In addition, it plays a role in the computation of the impact of neighboring nodes, based on the spatial correlation computed according to the pair-wise node-neighbor distance. The final prediction is the simple weighted summation of the predicted values of the time series of the node and those of its neighbors, in which weights are the multiplication of the spatial and temporal correlations.

In order to show the efficiency of the proposed algorithm, we considered a global network of more than 18000 GNSS stations and defined the neighbors of each node as stations that are located within the range of 10 km. We performed several different analyses, including the comparison between different machine learning algorithms and statistical methods for the time series prediction part, the impact of the type of data used for the computation of temporal correlation (climatic and/or geophysical loading), and comparison with other state-of-the-art graph neural network algorithms. We demonstrate the superiority of our method to the current graph neural network algorithms when applied to time series of geodetic networks. In addition, we show that the best machine learning algorithm to use within our graph neural network architecture is the multilayer perceptron, which shows an average of 0.34 mm in prediction accuracy. Furthermore, we find that the statistical methods have lower accuracies than machine learning ones, as much as 44 percent.

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一种新的GNSS大地测量数据分析的时空图神经网络方法
图神经网络是一种新兴的处理关系数据的机器学习算法。它们可用于空间和/或时间数据的分析。它们能够模拟位于不同空间位置的节点的时间序列如何通过节点与相邻节点之间的信息交换而变化。因此,时间序列可以预测到未来的时代。全球导航卫星系统网络由不同位置的站点组成,每个站点都会产生大地测量参数的时间序列,例如它们位置的变化。为了成功地将图神经网络应用于GNSS网络的时间序列预测,需要考虑GNSS时间序列的物理性质。因此,我们提出了一种新的具有物理和数学基础的图神经网络算法。物理部分基于节点与相邻节点之间信息交换的基本概念。这里考虑了节点与相邻节点时间序列变化的时间相关性,这是通过地球物理载荷和/或气候数据计算得到的。数学部分来自数学模型对时间序列的预测,在使用奇异谱分析算法去除趋势和周期效应后。此外,基于两两节点-邻居距离计算的空间相关性,它还可以计算相邻节点的影响。最后的预测是节点的时间序列预测值与其相邻时间序列预测值的简单加权求和,其中权重是空间和时间相关性的乘法。为了证明算法的有效性,我们考虑了一个由18000多个GNSS站点组成的全球网络,并将每个节点的邻居定义为位于10 km范围内的站点。我们进行了几种不同的分析,包括时间序列预测部分不同机器学习算法和统计方法之间的比较,用于计算时间相关性(气候和/或地球物理载荷)的数据类型的影响,以及与其他最先进的图形神经网络算法的比较。在应用于时间序列大地测量网络时,我们证明了我们的方法比当前的图神经网络算法的优越性。此外,我们表明,在我们的图神经网络架构中使用的最佳机器学习算法是多层感知器,其预测精度平均为0.34 mm。此外,我们发现统计方法的准确率低于机器学习方法,高达44%。
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