Tropical cyclone trajectory based on satellite remote sensing prediction and time attention mechanism ConvLSTM model

IF 4.3 3区 材料科学 Q1 ENGINEERING, ELECTRICAL & ELECTRONIC
Tongfei Li , Mingzheng Lai , Shixian Nie , Haifeng Liu , Zhiyao Liang , Wei Lv
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引用次数: 0

Abstract

The accurate and timely prediction of tropical cyclones is of paramount importance in mitigating the impact of these catastrophic meteorological events. Presently, methods for predicting tropical cyclones based on satellite remote sensing images encounter notable challenges, including the inadequate extraction of three-dimensional spatial features and limitations in long-term forecasting. As a response to these challenges, this study introduces the Temporal Attention Mechanism ConvLSTM (TAM-CL) model, designed to conduct thorough spatiotemporal feature extraction on three-dimensional atmospheric reanalysis data of tropical cyclones. By leveraging ConvLSTM with three-dimensional convolution kernels, our model enhances the extraction of three-dimensional spatiotemporal features. Furthermore, an attention mechanism is integrated to bolster long-term prediction accuracy by emphasizing crucial temporal nodes. In the evaluation of tropical cyclone track and intensity forecasts across 24, 48, and 72 h, TAM-CL demonstrates a notable reduction in prediction errors, thereby underscoring its efficacy in forecasting both cyclone tracks and intensities. This contributes to an effective exploration of the application of deep networks in conjunction with atmospheric reanalysis data.

基于卫星遥感预测和时间注意机制 ConvLSTM 模型的热带气旋轨迹
准确及时地预测热带气旋对减轻这些灾难性气象事件的影响至关重要。目前,基于卫星遥感图像的热带气旋预测方法遇到了显著的挑战,包括三维空间特征提取不足和长期预测的局限性。为应对这些挑战,本研究引入了时空注意机制 ConvLSTM(TAM-CL)模型,旨在对热带气旋的三维大气再分析数据进行全面的时空特征提取。通过利用具有三维卷积核的 ConvLSTM,我们的模型增强了对三维时空特征的提取。此外,我们还集成了关注机制,通过强调关键的时间节点来提高长期预测的准确性。在对 24、48 和 72 小时的热带气旋路径和强度预报进行评估时,TAM-CL 明显减少了预报误差,从而突出了其在预报气旋路径和强度方面的功效。这有助于有效探索深度网络与大气再分析数据的结合应用。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
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来源期刊
CiteScore
7.20
自引率
4.30%
发文量
567
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