浅海内波环境下声速剖面的深度迁移时序预测
Time-series prediction of shallow water sound speed profiles in the presence of internal waves based on deep transfer learning
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摘要: 海水声速随时空起伏变化, 水文资料稀缺海域声速剖面时序预测困难, 为此构建了基于迁移学习的长短时记忆神经网络模型, 并利用中国南海海域实测的两条温度链长时序观测数据对其进行验证。针对有无孤立子内波存在的两种场景, 基于迁移学习对预训练网络模型进行微调, 分析不同训练样本量下迁移网络的有效性。实验结果表明, 迁移网络在有无孤立子内波存在的两种场景下均可实现高精度高效声速剖面预测, 且预测性能明显优于未迁移的处理方法。Abstract: Due to the inhomogeneous and dynamic characteristics such as flows and internal waves, the sound speed field presents complex spatial-temporal fluctuations, making it difficult to predict the sound speed profile (SSP) time series without sufficient training data. A long short-term memory (LSTM) model based on transfer learning is constructed, and temperature profiles recorded by two thermistor chains in the South China Sea are used to validate the performance of the model. For the two scenarios with and without internal solitary waves, the pre-trained model is finetuned based on transfer learning, and the performance and effectiveness of the deep transfer networks under different amounts of training samples are analyzed. The experimental results show that the deep transfer network can simultaneously meet the requirements of high precision and high efficiency, and the prediction performance is significantly better than that of the non-transfer treatment.