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PortWeather: A Lightweight Onboard Solution for Real-Time Weather Prediction

机译:PortWeather:一种用于实时天气预报的轻量级机载解决方案

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摘要

Maritime journeys significantly depend on weather conditions, and so meteorology has always had a key role in maritime businesses. Nowadays, the new era of innovative machine learning approaches along with the availability of a wide range of sensors and microcontrollers creates increasing perspectives for providing on-board reliable short-range forecasting of main meteorological variables. The main goal of this study is to propose a lightweight on-board solution for real-time weather prediction. The system is composed of a commercial weather station integrated with an industrial IOT-edge data processing module that computes the wind direction and speed forecasts without the need of an Internet connection. A regression machine learning algorithm was chosen so as to require the smallest amount of resources (memory, CPU) and be able to run in a microcontroller. The algorithm has been designed and coded following specific conditions and specifications. The system has been tested on real weather data gathered from static weather stations and onboard during a test trip. The efficiency of the system has been proven through various error metrics.
机译:海上旅行很大程度上取决于天气情况,因此,气象学一直在海上业务中发挥关键作用。如今,创新机器学习方法的新纪元以及广泛的传感器和微控制器的可用性为为机载主要气象变量提供可靠的短程预报创造了越来越多的前景。这项研究的主要目的是提出一种用于实时天气预报的轻型车载解决方案。该系统由与商业IOT边缘数据处理模块集成的商业气象站组成,该模块可在无需Internet连接的情况下计算风向和速度预报。选择了回归机器学习算法,以便需要最少的资源(内存,CPU)并能够在微控制器中运行。该算法已根据特定条件和规范进行了设计和编码。该系统已在测试旅行期间根据从静态气象站收集的真实天气数据进行了测试。系统的效率已通过各种错误度量标准得到证明。

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