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Analysis of fluctuating characteristics of temperature field in the shallow water on multiple temperature and depth sensor

机译:多重温度和深度传感器在浅水中温度场的波动特征分析

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The temperature in the sea is an oceanographic variable that indirectly determines many of the peculiarities of sound transmission in the medium. It varies with depth, the seasons, geographic location, and also time at a fixed location. In order to obtain the temporal and spatial statistical characteristics of temperature, the temperature field in the summer of 2013 was observed continuously at certain shallow water locations in the North China Sea, using vertically distributed multiple temperature and depth sensors. The Self-Organizing Map (SOM) is an unsupervised neural network based on competitive learning, and can solve the problem when the center of clustering is unknown. The SOM's basic theory and algorithm are studied in this paper. A simulation example is given to prove the feasibility of SOM in oceanographic data cluster analysis. At the same time, reliable temperature samples of different depths and time are processed by SOM. Based on the clustering results over a long period or over a large area, multivariate linear regression analysis is carried out, and a mathematic model is established which describes the relationship between depth and temperature in shallow water. Finally, the change of temperature structure and its influence on sonar detection is simulated on the basis of the Fast Field Program (FFP) at some particular frequencies, and this is then discussed in detail. These results are of particular importance for hydrographic statistic characteristics investigation and sonar performance prediction in shallow water.
机译:海洋中的温度是海洋学变量,它间接确定介质中声音传输的许多特殊性。它随深度,季节,地理位置以及固定位置的时间而变化。为了获得温度的时空统计特征,利用垂直分布的多个温度和深度传感器,连续观测了北海某些浅水区域2013年夏季的温度场。自组织图(SOM)是基于竞争性学习的无监督神经网络,可以在聚类中心未知的情况下解决该问题。本文研究了SOM的基本理论和算法。仿真实例证明了SOM在海洋数据聚类分析中的可行性。同时,SOM处理了不同深度和时间的可靠温度样本。基于长期或大面积的聚类结果,进行了多元线性回归分析,建立了描述浅水深度与温度关系的数学模型。最后,基于快速现场程序(FFP)在某些特定频率下模拟了温度结构的变化及其对声纳检测的影响,然后对此进行了详细讨论。这些结果对于浅层水文统计特征调查和声纳性能预测特别重要。

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