An automated nowcasting model of significant instability events in the flight terminal area of Rio de Janeiro, Brazil

This paper presents a novel model, based on neural network techniques, to produce short-term and local-specific forecasts of significant instability for flights in the terminal area of Galeão Airport, Rio de Janeiro, Brazil. Twelve years of data were used for neural network training/validation and t...

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Main Authors: G. B. França, M. V. de Almeida, A. C. Rosette
Format: Article
Language:English
Published: Copernicus Publications 2016-05-01
Series:Atmospheric Measurement Techniques
Online Access:http://www.atmos-meas-tech.net/9/2335/2016/amt-9-2335-2016.pdf
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spelling doaj-bcab9ab0cec5480ea72c808f7a879d702020-11-25T00:39:09ZengCopernicus PublicationsAtmospheric Measurement Techniques1867-13811867-85482016-05-01952335234410.5194/amt-9-2335-2016An automated nowcasting model of significant instability events in the flight terminal area of Rio de Janeiro, BrazilG. B. França0M. V. de Almeida1A. C. Rosette2Federal University of Rio de Janeiro (UFRJ), Rio de Janeiro, BrazilFederal University of Rio de Janeiro (UFRJ), Rio de Janeiro, BrazilFederal University of Rio de Janeiro (UFRJ), Rio de Janeiro, BrazilThis paper presents a novel model, based on neural network techniques, to produce short-term and local-specific forecasts of significant instability for flights in the terminal area of Galeão Airport, Rio de Janeiro, Brazil. Twelve years of data were used for neural network training/validation and test. Data are originally from four sources: (1) hourly meteorological observations from surface meteorological stations at five airports distributed around the study area; (2) atmospheric profiles collected twice a day at the meteorological station at Galeão Airport; (3) rain rate data collected from a network of 29 rain gauges in the study area; and (4) lightning data regularly collected by national detection networks. An investigation was undertaken regarding the capability of a neural network to produce early warning signs – or as a nowcasting tool – for significant instability events in the study area. The automated nowcasting model was tested using results from five categorical statistics, indicated in parentheses in forecasts of the first, second, and third hours, respectively, namely proportion correct (0.99, 0.97, and 0.94), BIAS (1.10, 1.42, and 2.31), the probability of detection (0.79, 0.78, and 0.67), false-alarm ratio (0.28, 0.45, and 0.73), and threat score (0.61, 0.47, and 0.25). Possible sources of error related to the test procedure are presented and discussed. The test showed that the proposed model (or neural network) can grab the physical content inside the data set, and its performance is quite encouraging for the first and second hours to nowcast significant instability events in the study area.http://www.atmos-meas-tech.net/9/2335/2016/amt-9-2335-2016.pdf
collection DOAJ
language English
format Article
sources DOAJ
author G. B. França
M. V. de Almeida
A. C. Rosette
spellingShingle G. B. França
M. V. de Almeida
A. C. Rosette
An automated nowcasting model of significant instability events in the flight terminal area of Rio de Janeiro, Brazil
Atmospheric Measurement Techniques
author_facet G. B. França
M. V. de Almeida
A. C. Rosette
author_sort G. B. França
title An automated nowcasting model of significant instability events in the flight terminal area of Rio de Janeiro, Brazil
title_short An automated nowcasting model of significant instability events in the flight terminal area of Rio de Janeiro, Brazil
title_full An automated nowcasting model of significant instability events in the flight terminal area of Rio de Janeiro, Brazil
title_fullStr An automated nowcasting model of significant instability events in the flight terminal area of Rio de Janeiro, Brazil
title_full_unstemmed An automated nowcasting model of significant instability events in the flight terminal area of Rio de Janeiro, Brazil
title_sort automated nowcasting model of significant instability events in the flight terminal area of rio de janeiro, brazil
publisher Copernicus Publications
series Atmospheric Measurement Techniques
issn 1867-1381
1867-8548
publishDate 2016-05-01
description This paper presents a novel model, based on neural network techniques, to produce short-term and local-specific forecasts of significant instability for flights in the terminal area of Galeão Airport, Rio de Janeiro, Brazil. Twelve years of data were used for neural network training/validation and test. Data are originally from four sources: (1) hourly meteorological observations from surface meteorological stations at five airports distributed around the study area; (2) atmospheric profiles collected twice a day at the meteorological station at Galeão Airport; (3) rain rate data collected from a network of 29 rain gauges in the study area; and (4) lightning data regularly collected by national detection networks. An investigation was undertaken regarding the capability of a neural network to produce early warning signs – or as a nowcasting tool – for significant instability events in the study area. The automated nowcasting model was tested using results from five categorical statistics, indicated in parentheses in forecasts of the first, second, and third hours, respectively, namely proportion correct (0.99, 0.97, and 0.94), BIAS (1.10, 1.42, and 2.31), the probability of detection (0.79, 0.78, and 0.67), false-alarm ratio (0.28, 0.45, and 0.73), and threat score (0.61, 0.47, and 0.25). Possible sources of error related to the test procedure are presented and discussed. The test showed that the proposed model (or neural network) can grab the physical content inside the data set, and its performance is quite encouraging for the first and second hours to nowcast significant instability events in the study area.
url http://www.atmos-meas-tech.net/9/2335/2016/amt-9-2335-2016.pdf
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