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Operational use of machine learning models for sea-level modeling

机译:用于海平面模型的机器学习模型的操作使用

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摘要

Intense activity offshore warrants a temporal and accurate prediction of sea-level variability. Besides, the sea-level plays an important role in the groundwater level and quality of coastal aquifer. Climate change influences considerable change in all the hydrological parameters and apparently affects sea-level variability. For prediction, highly complex numerical models are usually generated. To address these challenges, the study proposes the use of machine learning (ML) models with the climate change predictands and sea-level predictors. Three ML models are employed in this study, viz., Regression Vector Machine (RVM), Extreme Learning Machine (ELM), and Gaussian Process Regression (GPR). The performance of the developed models is evaluated by visual comparison of predicted and observed datasets. Regression error curve plots, frequency of forecasting errors and Taylor diagram, along with statistical performance metrics were developed. Overall, it is found that the operational use of the selected ML algorithms was quite appealing for modeling studies. Among the three ML models, GPR performed slightly better than ELM and RVM.
机译:激活活动离岸保证对海平面变异性的时间和准确的预测。此外,海平面在地下水位和沿海含水层的品质中起着重要作用。气候变化影响所有水文参数的相当大的变化,显然影响海平面变异性。为了预测,通常产生高度复杂的数值模型。为了解决这些挑战,该研究提出了利用机器学习(ML)模型与气候变化预测和海平预测因子。本研究中使用了三毫升型号,即回归矢量机(RVM),极端学习机(ELM)和高斯过程回归(GPR)。通过预测和观察到的数据集的视觉比较来评估开发模型的性能。开发了回归误差曲线,预测误差和泰勒图的频率以及统计性能指标。总的来说,发现所选ML算法的操作使用对于建模研究非常有吸引力。在三毫升型号中,GPR略好于ELM和RVM进行。

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