Marine Litter Stormy Wash-Outs: Developing the Neural Network to Predict Them

S. Fetisov, I. Chubarenko
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引用次数: 4

Abstract

Observations show that after stormy events, anthropogenic litter is washed ashore for short periods of time, providing the opportunity to collect and remove it from the environment. However, water dynamics in sea coastal zones during and after storms are very complicated, and the transport properties of litter items are very diverse; thus, predicting litter wash-outs using classical numerical models is challenging. We analyze meteorological and hydrophysical conditions in the Baltic Sea coastal zone to further use the obtained data as a training sequence for an artificial neural network (ANN). Analysis of the physical processes behind large litter wash-outs links open-source meteorological (wind speed and direction) and hydrodynamic reanalysis (surface wave parameters) data to the time and location of these wash-outs. A detailed analysis of 25 cases of wash-outs observed at the shore of the Sambian Peninsula was performed. The importance of the duration of the storm and its subsiding phase was revealed. An ANN structure is proposed for forecasting marine debris wash-outs as the first step in the creation of a neural network-based tool for managers and beach cleaners, helping to plan effective measures to remove plastics and other anthropogenic contaminants from the marine environment.
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海洋垃圾风暴冲刷:开发神经网络来预测它们
观察表明,在暴风雨事件发生后,人为的垃圾会在短时间内被冲上岸,为收集和从环境中清除垃圾提供了机会。然而,海岸带风暴期间和风暴后的水动力非常复杂,凋落物的输运性质也非常多样化;因此,使用经典数值模型预测凋落物冲刷是具有挑战性的。我们分析了波罗的海沿岸地区的气象和水物理条件,进一步将获得的数据用作人工神经网络(ANN)的训练序列。对大型凋落物冲刷背后的物理过程的分析,将开源气象(风速和风向)和水动力再分析(表面波参数)数据与这些冲刷的时间和地点联系起来。对在桑比亚半岛海岸观察到的25例冲蚀进行了详细分析。揭示了风暴持续时间及其消退阶段的重要性。作为为管理者和海滩清洁工创建基于神经网络的工具的第一步,提出了一种用于预测海洋垃圾冲蚀的人工神经网络结构,这有助于制定有效措施,从海洋环境中清除塑料和其他人为污染物。
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