Predicting sea surface salinity in a tidal estuary with machine learning

IF 2.6 3区 地球科学 Q2 OCEANOGRAPHY
Nicolas Guillou , Georges Chapalain , Sébastien Petton
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引用次数: 2

Abstract

As an indicator of exchanges between watersheds, rivers and coastal seas, salinity may provide valuable information about the exposure, ecological health and robustness of marine ecosystems, including especially estuaries. The temporal variations of salinity are traditionally approached with numerical models based on a physical description of hydrodynamic and hydrological processes. However, as these models require large computational resources, such an approach is, in practice, rarely considered for rapid turnaround predictions as requested by engineering and operational applications dealing with the ecological monitoring of estuaries. As an alternative efficient and rapid solution, we investigated here the potential of machine learning algorithms to mimic the non-linear complex relationships between salinity and a series of input parameters (such as tide-induced free-surface elevation, river discharges and wind velocity). Beyond regression methods, the attention was dedicated to popular machine learning approaches including MultiLayer Perceptron, Support Vector Regression and Random Forest. These algorithms were applied to six-year observations of sea surface salinity at the mouth of the Elorn estuary (bay of Brest, western Brittany, France) and compared to predictions from an advanced ecological numerical model. In spite of simple input data, machine learning algorithms reproduced the seasonal and semi-diurnal variations of sea surface salinity characterised by noticeable tide-induced modulations and low-salinity events during the winter period. Support Vector Regression provided the best estimations of surface salinity, improving especially predictions from the advanced numerical model during low-salinity events. This promotes the exploitation of machine learning algorithms as a complementary tool to process-based physical models.

用机器学习预测潮汐河口的海面盐度
作为流域、河流和沿海海洋之间交流的一项指标,盐度可提供有关海洋生态系统(特别是河口)的暴露、生态健康和稳定期的宝贵信息。盐度的时间变化传统上是用基于水动力和水文过程的物理描述的数值模型来研究的。然而,由于这些模型需要大量的计算资源,这种方法在实践中很少被考虑用于处理河口生态监测的工程和操作应用程序所要求的快速周转预测。作为一种高效、快速的替代解决方案,我们研究了机器学习算法的潜力,以模拟盐度与一系列输入参数(如潮汐诱导的自由水面高程、河流流量和风速)之间的非线性复杂关系。除了回归方法,人们还关注了流行的机器学习方法,包括多层感知器、支持向量回归和随机森林。这些算法被应用于埃洛恩河口(法国布列塔尼西部布雷斯特湾)6年的海面盐度观测,并与一个先进的生态数值模型的预测结果进行了比较。尽管输入数据简单,但机器学习算法再现了海面盐度的季节性和半日变化,其特征是冬季期间明显的潮汐引起的调制和低盐度事件。支持向量回归提供了最佳的地表盐度估计,特别是在低盐度事件期间改进了高级数值模型的预测。这促进了机器学习算法作为基于过程的物理模型的补充工具的开发。
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来源期刊
Oceanologia
Oceanologia 地学-海洋学
CiteScore
5.30
自引率
6.90%
发文量
63
审稿时长
146 days
期刊介绍: Oceanologia is an international journal that publishes results of original research in the field of marine sciences with emphasis on the European seas.
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