利用回声测深技术探测和预报局部海况

M. Oveisi, F. Popowich, Saida Harle, M. Hoeberechts
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引用次数: 2

摘要

电缆海洋观测站支持连续部署的水下传感器,可以从海洋环境中收集越来越多的近实时、高分辨率数据。这些数据可用于智能系统的设计,以预测和测量海洋环境的特性。一个对海上运输和安全非常重要的环境因素是海况,即海面的“粗糙度”。海况取决于风,但根据各种因素,海况会随着地点和时间的变化而发生显著变化。我们展示了如何使用公开可用的传感器数据来检测和预测当地的海况。为此,我们将讨论各种技术,这些技术可以帮助我们处理大量的回声测深仪数据,并以一种允许基本机器学习技术根据道格拉斯海洋尺度对给定时间的当地海况进行分类的方式进行汇总。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Using Echo Sounder Technology for Detecting and Predicting Local Sea State
Cabled ocean observatories, which support continuously deployed underwater sensors, enable an increasing amount of near real-time, high resolution data to be collected from the marine environment. These data can be used in the design of intelligent systems to predict and measure properties of the marine environment. One environmental factor that is very important to maritime transportation and safety is sea state, that is, the "roughness" of the sea surface. Sea state is dependent on winds, but can vary significantly with location and over time, based on a wide range of factors. We show how publicly available sensor data can be used to detect and predict local sea state. To do this, we will discuss various techniques that can help us deal with a large set of echo sounder data, and aggregate it in a way that allows basic machine learning techniques to categorize the local sea state at a given time according to the Douglas Sea Scale.
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