Abstract

This paper presents a neural network approach for weather forecast improvement. Predicted parameters, such as air temperature or precipitation, play a crucial role not only in the transportation sector but they also influence people’s everyday activities. Numerical weather models require real measured data for the correct forecast run. This data is obtained from automatic weather stations by intelligent sensors. Sensor data collection and its processing is a necessity for finding the optimal weather conditions estimation. The European Centre for Medium-Range Weather Forecasts (ECMWF) model serves as the main base for medium-range predictions among the European countries. This model is capable of providing forecast up to 10 days with horizontal resolution of 9 km. Although ECMWF is currently the global weather system with the highest horizontal resolution, this resolution is still two times worse than the one offered by limited area (regional) numeric models (e.g., ALADIN that is used in many European and north African countries). They use global forecasting model and sensor-based weather monitoring network as the input parameters (global atmospheric situation at regional model geographic boundaries, description of atmospheric condition in numerical form), and because the analysed area is much smaller (typically one country), computing power allows them to use even higher resolution for key meteorological parameters prediction. However, the forecast data obtained from regional models are available only for a specific country, and end-users cannot find them all in one place. Furthermore, not all members provide open access to these data. Since the ECMWF model is commercial, several web services offer it free of charge. Additionally, because this model delivers forecast prediction for the whole of Europe (and for the whole world, too), this attitude is more user-friendly and attractive for potential customers. Therefore, the proposed novel hybrid method based on machine learning is capable of increasing ECMWF forecast outputs accuracy to the same level as limited area models provide, and it can deliver a more accurate forecast in real-time.

Highlights

  • Background and MotivationClimate change and global warming have been becoming global issues since the last decade.Weather modelling and prediction are essential especially for aviation services, region/city crisisSensors 2019, 19, 5144; doi:10.3390/s19235144 www.mdpi.com/journal/sensors

  • There is no simple between theThis weights and the compares total precipitation and air temperature with the measured values obtained from weather function being approximated

  • Obtained results pointed to an interesting fact that global numerical forecast model European Centre for Medium-Range Weather Forecasts (ECMWF) and its derivation yr.no can be a successful competitor to local models such as ALADIN

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Summary

Introduction

Background and MotivationClimate change and global warming have been becoming global issues since the last decade.Weather modelling and prediction are essential especially for aviation services, region/city crisisSensors 2019, 19, 5144; doi:10.3390/s19235144 www.mdpi.com/journal/sensors. Weather modelling and prediction are essential especially for aviation services, region/city crisis. Weather modelling and prediction are essential especially for aviation services, region/city crisis management, or agricultural sector. Forecasting services may soon start adding information about the effects of climate change to sector. The aim is to provide information about how extreme management, or agricultural. Forecasting services may soon start adding information about weather events relate tochange climatetochange. Numerical prediction (NWP) model has been designated to estimate the future weather eventsweather relate to climate change. Model has been designated to principles estimate the future data collected from meteorological and stations. Investigated areaphysics is transformed intoby atmospheric behaviour based on theaerological current state and The mathematical and principles a grid with horizontal resolution (geographical distance between two predicted points) shifting from using data collected from meteorological and aerological stations. 10into kmafor global models to resolution less than 5(geographical km for regional models

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