Short-term prediction of the significant wave height and average wave period based on the variational mode decomposition–temporal convolutional network–long short-term memory (VMD–TCN–LSTM) algorithm

IF 4.1 3区 地球科学 Q2 METEOROLOGY & ATMOSPHERIC SCIENCES
Qiyan Ji, Lei Han, Lifang Jiang, Yuting Zhang, Minghong Xie, Yu Liu
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引用次数: 0

Abstract

Abstract. The present work proposes a prediction model of significant wave height (SWH) and average wave period (APD) based on variational mode decomposition (VMD), temporal convolutional networks (TCNs), and long short-term memory (LSTM) networks. The wave sequence features were obtained using VMD technology based on the wave data from the National Data Buoy Center. Then the SWH and APD prediction models were established using TCNs, LSTM, and Bayesian hyperparameter optimization. The VMD–TCN–LSTM model was compared with the VMD–LSTM (without TCN cells) and LSTM (without VMD and TCN cells) models. The VMD–TCN–LSTM model has significant superiority and shows robustness and generality in different buoy prediction experiments. In the 3 h wave forecasts, VMD primarily improved the model performance, while the TCN had less of an influence. In the 12, 24, and 48 h wave forecasts, both VMD and TCNs improved the model performance. The contribution of the TCN to the improvement of the prediction result determination coefficient gradually increased as the forecasting length increased. In the 48 h SWH forecasts, the VMD and TCN improved the determination coefficient by 132.5 % and 36.8 %, respectively. In the 48 h APD forecasts, the VMD and TCN improved the determination coefficient by 119.7 % and 40.9 %, respectively.
基于变分模分解-时间卷积网络-长短时记忆(VMD-TCN-LSTM)算法的有效波高和平均波周期短期预测
摘要本文提出了一种基于变分模态分解(VMD)、时间卷积网络(TCNs)和长短期记忆(LSTM)网络的有效波高(SWH)和平均波周期(APD)预测模型。基于国家数据浮标中心的波浪数据,采用VMD技术获得波浪序列特征。然后利用tcn、LSTM和贝叶斯超参数优化建立了SWH和APD预测模型。将VMD - TCN - LSTM模型与不含TCN细胞的VMD - LSTM模型和不含VMD和TCN细胞的LSTM模型进行比较。在不同的浮标预测实验中,VMD-TCN-LSTM模型具有显著的优越性,具有鲁棒性和通用性。在3 h波浪预报中,VMD主要改善了模型的性能,而TCN的影响较小。在12、24和48 h的波浪预报中,VMD和tcn都提高了模型的性能。随着预测长度的增加,TCN对提高预测结果决定系数的贡献逐渐增大。在48 h SWH预报中,VMD和TCN分别提高了132.5%和36.8%的确定系数。在48 h APD预报中,VMD和TCN分别提高了119.7%和40.9%的确定系数。
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来源期刊
Ocean Science
Ocean Science 地学-海洋学
CiteScore
5.90
自引率
6.20%
发文量
78
审稿时长
6-12 weeks
期刊介绍: Ocean Science (OS) is a not-for-profit international open-access scientific journal dedicated to the publication and discussion of research articles, short communications, and review papers on all aspects of ocean science: experimental, theoretical, and laboratory. The primary objective is to publish a very high-quality scientific journal with free Internet-based access for researchers and other interested people throughout the world. Electronic submission of articles is used to keep publication costs to a minimum. The costs will be covered by a moderate per-page charge paid by the authors. The peer-review process also makes use of the Internet. It includes an 8-week online discussion period with the original submitted manuscript and all comments. If accepted, the final revised paper will be published online. Ocean Science covers the following fields: ocean physics (i.e. ocean structure, circulation, tides, and internal waves); ocean chemistry; biological oceanography; air–sea interactions; ocean models – physical, chemical, biological, and biochemical; coastal and shelf edge processes; paleooceanography.
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