Image Classification by Deep Neural Network of Event-Type Anomalies in The Southwestern Baltic Sea

E. Shchekinova
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引用次数: 0

Abstract

In the paper we propose a binary classification method to identify episodes of anomalies in physicochemical parameters related to mixing and exchange of water masses. For training and validation of classifier we use high resolution time series from the Boknis Eck monitoring station in the southwestern Baltic Sea. To study the role of air ocean coupling, in addition to ocean parameters, we use high resolution wind speed observations from the Kiel lighthouse weather station. The detection accuracy of anomalies relies upon training of deep neural network on image data generated from historical data interval of ocean parameters. Our data driven analysis suggests strong causality between variations in atmospheric wind and ocean physiochemistry that underlies short term ocean exchange processes in the study area.
波罗的海西南部事件型异常的深度神经网络图像分类
本文提出了一种二元分类方法来识别与水团混合和交换有关的物理化学参数异常事件。为了训练和验证分类器,我们使用了波罗的海西南部Boknis Eck监测站的高分辨率时间序列。为了研究气海耦合的作用,除了海洋参数外,我们还使用了基尔灯塔气象站的高分辨率风速观测数据。异常的检测精度依赖于对海洋参数历史数据区间生成的图像数据进行深度神经网络训练。我们的数据驱动分析表明,大气风和海洋物理化学变化之间存在很强的因果关系,这是研究区域短期海洋交换过程的基础。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
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