Using statistical and machine learning approaches to describe estuarine tidal dynamics

Franziska Lauer, Frank Kösters
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Abstract

Estuaries are ecologically valuable regions where tidal forces move large volumes of water. To understand the ongoing physical processes in such dynamic systems, a series of estuarine monitoring stations is required. Based on the measurements, estuarine dynamics can be described by key values, so-called tidal characteristics. The reconstruction and prediction of tidal characteristics by suitable approaches is essential to discover natural or anthropogenic changes. Therefore, it is of interest to inter- and extrapolate measured values in time and to investigate the spatial relationship between different stations. Normally, such system analyses are performed by deterministic numerical models. However, to facilitate long-term investigations also, statistical and machine learning approaches are good options. For a Weser estuary case study, we implemented three approaches (linear, non-linear, and artificial neural network regression) with the same database to enable the prediction of tidal extrema. Thereby we achieve an accuracy of 0.4–2.5% derivation (based on the RMSEs) while approximating measured values over 19 years. This proves that the approaches can be used for hindcast studies as well as for future analysis of system changes. Our work can be understood as a proof of concept for the practical potential of neural networks in estuarine system analysis.
使用统计和机器学习方法描述河口潮汐动态
河口是具有生态价值的地区,潮汐力量在此推动大量水流。为了了解这种动态系统中正在进行的物理过程,需要建立一系列河口监测站。根据测量结果,可以用关键值(即所谓的潮汐特征)来描述河口动态。采用适当的方法重建和预测潮汐特征对于发现自然或人为变化至关重要。因此,对测量值进行时间上的相互推断和外推,并研究不同站点之间的空间关系,是非常有意义的。通常,这种系统分析是通过确定性数值模型进行的。不过,为了便于长期研究,统计和机器学习方法也是不错的选择。在威悉河口案例研究中,我们使用同一个数据库,采用了三种方法(线性、非线性和人工神经网络回归)来预测潮汐极值。因此,在近似 19 年的测量值的同时,我们实现了 0.4-2.5% 的推导精度(基于均方根误差)。这证明这些方法可用于后报研究以及未来的系统变化分析。我们的工作可以理解为神经网络在河口系统分析中的实用潜力的概念验证。
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