Hybridization of neural network models for the prediction of Extreme Significant Wave Height segments

A. M. Durán-Rosal, J. C. Fernández, Pedro Antonio Gutiérrez, C. Hervás‐Martínez
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引用次数: 2

Abstract

This work proposes a hybrid methodology for the detection and prediction of Extreme Significant Wave Height (ESWH) periods in oceans. In a first step, wave height time series is approximated by a labeled sequence of segments, which is obtained using a genetic algorithm in combination with a likelihood-based segmentation (GA+LS). Then, an artificial neural network classifier with hybrid basis functions is trained with a multiobjetive evolutionary algorithm (MOEA) in order to predict the occurrence of future ESWH segments based on past values. The methodology is applied to a buoy in the Gulf of Alaska and another one in Puerto Rico. The results show that the GA+LS is able to segment and group the ESWH values, and the neural network models, obtained by the MOEA, make good predictions maintaining a balance between global accuracy and minimum sensitivity for the detection of ESWH events. Moreover, hybrid neural networks are shown to lead to better results than pure models.
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极端有效波高段预测的杂交神经网络模型
本工作提出了一种用于海洋极端有效波高(ESWH)周期检测和预测的混合方法。首先,利用遗传算法和基于似然的分割(GA+LS)相结合得到的标记片段序列来逼近波高时间序列。然后,利用多目标进化算法(MOEA)训练具有混合基函数的人工神经网络分类器,以预测基于过去值的未来ESWH片段的发生。该方法应用于阿拉斯加湾的一个浮标和波多黎各的另一个浮标。结果表明,GA+LS能够对ESWH值进行分割和分组,MOEA获得的神经网络模型能够很好地预测ESWH事件的全局精度和最小灵敏度之间的平衡。此外,混合神经网络显示出比纯模型更好的结果。
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