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基于多模态数据融合的改进中尺度涡检测模型
作者:李忠伟1  刘格格2  李永1  徐斌2  宫凯旋1 
单位:1. 中国石油大学(华东)海洋空间与信息学院, 山东 青岛 266400;
2. 中国石油大学(华东)青岛软件学院, 计算机科学与技术学院, 山东 青岛 266400
关键词:中尺度涡 多模态数据 通道注意力 残差学习单元 深度学习 
分类号:P731.2
出版年·卷·期(页码):2024·41·第二期(53-62)
摘要:
提出一种基于多模态数据融合的改进中尺度涡检测模型。该模型以海平面高度数据为基础,首次将融合表层海温数据扩展为融合多深度层海温数据;将海温数据的深度层作为通道,嵌入通道注意力机制,使得模型能够关注于海水温度数据中最具有区分度的深度层;模型在编码及解码过程中采用残差学习单元,在加深网络深度的同时,更好地拟合激活函数,缓解训练问题,以提高模型的检测准确率。以中国南海部分海域为例开展实验验证,结果表明该中尺度涡检测模型准确率达到93.62 %,模型具备有效性和可靠性。
In this paper, an improved mesoscale eddy detection model based on multimodal data fusion is proposed. On the basis of sea level height data, the model extends the sea surface temperature fusion method into multi-depth ocean temperature fusion method for the first time. Taking the depth layer of ocean temperature data as a channel with channel attention mechanism, the model can focus on the depth layer with the most distinguishing degree in ocean temperature data. Residual learning unit is used in the encoding and decoding processes to improve the detection accuracy of the model, which not only deepen the depth of the network, but also better fit the activation function and alleviate the training problem. Utilizing the model in the South China Sea mesoscale eddy detection shows that the accuracy rate of the mesoscale eddy detection reaches 93.62 %. The effective and reliable results suggest that the model can provide a new and reasonable idea for the research of mesoscale eddy detection.
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