基于混合深度学习的红海海温预测方法

M. Hittawe, S. Langodan, Ouadi Beya, I. Hoteit, O. Knio
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引用次数: 2

摘要

由于海温在全球大气环流中的重要作用,海温的预测在区域内外的季节预报中具有重要意义。另一方面,利用历史海洋变量从给定的多变量序列中预测海温对于研究海温物理现象如何产生至关重要。本文旨在通过结合两种机器学习方法:短期记忆网络(LSTM)与高斯过程回归(GPR)相结合,显著改善表面海温(SST)的预测。我们开发了一种基于深度学习和GPR建模的数据驱动方法,以改进基于气象变量的红海海温水平预测,包括每小时风速(WS)、2米气温(T2)和相对湿度(RH)变量。GPR-LSTM耦合模型具有一定的灵活性和特征提取能力,可以更好地描述海表温度时间序列的时间依赖性,提高海表温度的预测精度。需要指出的是,这类基于混合的方法体系结构在海表温度时间序列预测中从未被使用过,因此这是一种处理这类问题的新方法。将该混合模型与LSTM和最常用的集成学习模型进行比较,结果显示了显著的改进。
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Efficient SST prediction in the Red Sea using hybrid deep learning-based approach
Prediction of Surface Sea Temperature (SST) is of great importance in seasonal forecasts in the region and beyond, mainly due to its significant role in global atmospheric circulation. On the other hand, SST predicting from given multivariate sequences using historical ocean variables is vital to investigate how SST physical phenomena generated. This paper seeks to significantly improve the prediction of Surface Sea Temperature (SST) by combining two machine learning methodologies: short-term memory networks (LSTM) added to Gaussian Process Regression (GPR). We developed a data-driven approach based on deep learning and GPR modeling to improve the prediction of SST levels in the red sea based on meteorological variables, including the hourly wind speed (WS), air temperature at 2m (T2), and relative humidity (RH) variables. The coupled GPR-LSTM model may potentially carry both flexibility and feature extraction capacity, which could describe temporal dependencies in SST time-series and improve the prediction accuracy of SST. It is necessary to indicate that these types of hybrid-based approach architectures have not used before in SST time-series prediction, so it is a new approach to deal with these types of problems. The results demonstrate a significant improvement when this hybrid model is compared to LSTM and the most frequently used ensemble learning models.
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