3D wave simulation based on a deep learning model for spatiotemporal prediction

Ocean Engineering(2022)

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摘要
Ocean wave simulations must be conducted in real-time and are more complicated than other natural scenery simulations. This study proposes a novel ocean wave simulation method that inputs the spatiotemporal sequences of the wave height field obtained by a wave spectrum formula and the fast Fourier transform (FFT) algorithm into a convolutional long short-term memory (ConvLSTM) training model. The method resolves the problems of poor real-time performance and authenticity in the traditional ocean wave simulation process. The ocean wave simulation method calculates the wave height field rapidly using the ConvLSTM-based model rather than the traditional FFT method. Finally, it accelerates the wave simulation process and predicts the height field at a future time. The model was evaluated in a simulation experiment on two kinds of wave spectra. The experimental results confirmed the realism of the waves simulated by the proposed model. The computational speed of the ConvLSTM model exceeds that of the FFT method, especially as the sample size and length of the prediction sequence increase, indicating the effectiveness and feasibility of the ConvLSTM model in accelerating the FFT algorithm.
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关键词
Real-time wave simulation,ConvLSTM,FFT,Wave spectrum,Deep learning
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