Sensors (Jun 2020)

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

  • Petros Karvelis,
  • Daniele Mazzei,
  • Matteo Biviano,
  • Chrysostomos Stylios

DOI
https://doi.org/10.3390/s20113181
Journal volume & issue
Vol. 20, no. 11
p. 3181

Abstract

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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.

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