IMPROVING LONG-TERM WAVE FORECASTING THROUGH SEASONAL ADJUSTMENT BASED ON SEASONAL TREND DECOMPOSITION LOESS AND CNN-GRU NETWORK

ABDUL REHMAN KHAN, MOHD SHAHRIZAL AB RAZAK, MOHAMAD NOORASIAH
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Abstract

Most numerical models used to forecast wave parameters are time-consuming and computationally expensive. Currently, advanced machine learning techniques, such as Artificial Neural Networks (ANN), provide a better alternative as they are substantially faster, more cost-efficient and more effective in handling non-linearity. In recent years, many ANN models have been developed to achieve satisfactory wave forecasting results. However, most of the research is limited to wave height forecasting and rarely any method that highlights the issue of seasonal fluctuation, which exists in time series data, is proposed. Keeping this in mind, this study proposes a hybrid Convolutional Neural Network-Gated Recurrent Network (CNN-GRU) model with a combination of seasonal adjustment based on Seasonal Trend Decomposition Loess (STDL) for wave parameters forecasting, including wave height and period. To evaluate model performance, error criteria methods, such as index of agreement (d), correlation coefficient (R) and root mean square error, were used. The results indicate that the proposed method outperformed every forecast horizon when compared with the model without seasonal adjustment with a degree of improvement ranging between 4% to 16% for wave height and 8% to 24% for wave period. Furthermore, the add-and-repeat prediction method is proposed in the study, where, after each prediction, the output of the model is added to the training set to produce a further prediction. The results from the proposed method indicate that predicted values follow the general trend to a great extent and there is a very small loss of accuracy between the first and final predictions with the R-value reducing from 0.73 to 0.69 for wave height, and 0.63 to 0.61 for wave period.
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基于季节趋势分解黄土和cnn-gru网络的季节调整改进长期波浪预报
大多数用于预测波浪参数的数值模型耗时长,计算量大。目前,先进的机器学习技术,如人工神经网络(ANN),提供了一个更好的选择,因为它们在处理非线性方面更快,更具成本效益和更有效。近年来,人们开发了许多人工神经网络模型,取得了令人满意的海浪预报效果。然而,大多数研究都局限于波高预测,很少有方法能够突出时间序列数据中存在的季节波动问题。基于此,本文提出了一种基于季节趋势分解黄土(STDL)结合季节调整的卷积神经网络-门控循环网络(CNN-GRU)混合模型,用于预测波高和周期等波浪参数。为了评估模型的性能,使用了误差标准方法,如一致性指数(d)、相关系数(R)和均方根误差。结果表明,与未进行季节调整的模型相比,该方法在各预测层位上的精度都有所提高,波高的精度提高了4% ~ 16%,波周期的精度提高了8% ~ 24%。进一步,本研究提出了添加-重复预测方法,即在每次预测后,将模型的输出添加到训练集中,产生进一步的预测。结果表明,该方法的预测值在很大程度上符合总体趋势,首次预测值与最终预测值之间的精度损失很小,波高r值从0.73降至0.69,波周期r值从0.63降至0.61。
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来源期刊
JOURNAL OF SUSTAINABILITY SCIENCE AND MANAGEMENT
JOURNAL OF SUSTAINABILITY SCIENCE AND MANAGEMENT Social Sciences-Geography, Planning and Development
CiteScore
1.40
自引率
0.00%
发文量
163
期刊介绍: The Journal of Sustainability Science and Management is an Open-Access and peer-reviewed journal aims to publish scientific articles related to sustainable science; i.e. an interaction between natural sciences, social science, technologies and management for sustainable development and wise use of resources. We particularly encourage manuscripts that discuss contemporary research that can be used directly or indirectly in addressing critical issues and sharing of advanced knowledge and best practices in sustainable development.
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