A Physics Prior-Guided Dual-Stream Attention Network for Motion Prediction of Elastic Bragg Breakwaters
- URL: http://arxiv.org/abs/2510.14250v1
- Date: Thu, 16 Oct 2025 03:06:44 GMT
- Title: A Physics Prior-Guided Dual-Stream Attention Network for Motion Prediction of Elastic Bragg Breakwaters
- Authors: Lianzi Jiang, Jianxin Zhang, Xinyu Han, Huanhe Dong, Xiangrong Wang,
- Abstract summary: Conventional deep learning models often exhibit limited generalization capabilities when presented with unseen sea states.<n>This study proposes a novel Physics Prior-Guided Dual-Stream Attention Network (PhysAttnNet)<n>Experiments on wave flume datasets demonstrate that PhysAttnNet significantly outperforms mainstream models.
- Score: 7.146484689550911
- License: http://arxiv.org/licenses/nonexclusive-distrib/1.0/
- Abstract: Accurate motion response prediction for elastic Bragg breakwaters is critical for their structural safety and operational integrity in marine environments. However, conventional deep learning models often exhibit limited generalization capabilities when presented with unseen sea states. These deficiencies stem from the neglect of natural decay observed in marine systems and inadequate modeling of wave-structure interaction (WSI). To overcome these challenges, this study proposes a novel Physics Prior-Guided Dual-Stream Attention Network (PhysAttnNet). First, the decay bidirectional self-attention (DBSA) module incorporates a learnable temporal decay to assign higher weights to recent states, aiming to emulate the natural decay phenomenon. Meanwhile, the phase differences guided bidirectional cross-attention (PDG-BCA) module explicitly captures the bidirectional interaction and phase relationship between waves and the structure using a cosine-based bias within a bidirectional cross-computation paradigm. These streams are synergistically integrated through a global context fusion (GCF) module. Finally, PhysAttnNet is trained with a hybrid time-frequency loss that jointly minimizes time-domain prediction errors and frequency-domain spectral discrepancies. Comprehensive experiments on wave flume datasets demonstrate that PhysAttnNet significantly outperforms mainstream models. Furthermore,cross-scenario generalization tests validate the model's robustness and adaptability to unseen environments, highlighting its potential as a framework to develop predictive models for complex systems in ocean engineering.
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