2016
DOI: 10.5194/amt-9-2335-2016
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An automated nowcasting model of significant instability events in the flight terminal area of Rio de Janeiro, Brazil

Abstract: Abstract. 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 collecte… Show more

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Cited by 13 publications
(1 citation statement)
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“…Wind divergence at 300 hPa, speci c humidity at 850 hPa, total severe storm energy at 500 hPa, and precipitable water were found to be the best indicators. França et al (2016) investigated the ability of a neural network to predict CME in an attempt to develop a very short-term forecasting system for the area corresponding to aircraft approaches to Rio de Janeiro airports (TMA-Rio). Data from surface and altitude meteorological stations, as well as AD, were collected over a period of twelve years.…”
Section: Introductionmentioning
confidence: 99%
“…Wind divergence at 300 hPa, speci c humidity at 850 hPa, total severe storm energy at 500 hPa, and precipitable water were found to be the best indicators. França et al (2016) investigated the ability of a neural network to predict CME in an attempt to develop a very short-term forecasting system for the area corresponding to aircraft approaches to Rio de Janeiro airports (TMA-Rio). Data from surface and altitude meteorological stations, as well as AD, were collected over a period of twelve years.…”
Section: Introductionmentioning
confidence: 99%