Improvement of RAMS precipitation forecast at the short-range through lightning data assimilation

This study shows the application of a total lightning data assimilation technique to the RAMS (Regional Atmospheric Modeling System) forecast. The method, which can be used at high horizontal resolution, helps to initiate convection whenever flashes are observed by adding water vapour to the model g...

Full description

Bibliographic Details
Main Authors: S. Federico, M. Petracca, G. Panegrossi, S. Dietrich
Format: Article
Language:English
Published: Copernicus Publications 2017-01-01
Series:Natural Hazards and Earth System Sciences
Online Access:http://www.nat-hazards-earth-syst-sci.net/17/61/2017/nhess-17-61-2017.pdf
_version_ 1818542594146172928
author S. Federico
M. Petracca
G. Panegrossi
S. Dietrich
author_facet S. Federico
M. Petracca
G. Panegrossi
S. Dietrich
author_sort S. Federico
collection DOAJ
description This study shows the application of a total lightning data assimilation technique to the RAMS (Regional Atmospheric Modeling System) forecast. The method, which can be used at high horizontal resolution, helps to initiate convection whenever flashes are observed by adding water vapour to the model grid column. The water vapour is added as a function of the flash rate, local temperature, and graupel mixing ratio. The methodology is set up to improve the short-term (3 h) precipitation forecast and can be used in real-time forecasting applications. However, results are also presented for the daily precipitation for comparison with other studies. <br><br> The methodology is applied to 20 cases that occurred in fall 2012, which were characterized by widespread convection and lightning activity. For these cases a detailed dataset of hourly precipitation containing thousands of rain gauges over Italy, which is the target area of this study, is available through the HyMeX (HYdrological cycle in the Mediterranean Experiment) initiative. This dataset gives the unique opportunity to verify the precipitation forecast at the short range (3 h) and over a wide area (Italy). <br><br> Results for the 27 October case study show how the methodology works and its positive impact on the 3 h precipitation forecast. In particular, the model represents better convection over the sea using the lightning data assimilation and, when convection is advected over the land, the precipitation forecast improves over the land. It is also shown that the precise location of convection by lightning data assimilation improves the precipitation forecast at fine scales (meso-<i>β</i>). <br><br> The application of the methodology to 20 cases gives a statistically robust evaluation of the impact of the total lightning data assimilation on the model performance. Results show an improvement of all statistical scores, with the exception of the bias. The probability of detection (POD) increases by 3&ndash;5 % for the 3 h forecast and by more than 5 % for daily precipitation, depending on the precipitation threshold considered. <br><br> Score differences between simulations with or without data assimilation are significant at 95 % level for most scores and thresholds considered, showing the positive and statistically robust impact of the lightning data assimilation on the precipitation forecast.
first_indexed 2024-12-11T22:24:09Z
format Article
id doaj.art-44490600cbdd45ceaa1f1d10495d9887
institution Directory Open Access Journal
issn 1561-8633
1684-9981
language English
last_indexed 2024-12-11T22:24:09Z
publishDate 2017-01-01
publisher Copernicus Publications
record_format Article
series Natural Hazards and Earth System Sciences
spelling doaj.art-44490600cbdd45ceaa1f1d10495d98872022-12-22T00:48:21ZengCopernicus PublicationsNatural Hazards and Earth System Sciences1561-86331684-99812017-01-01171617610.5194/nhess-17-61-2017Improvement of RAMS precipitation forecast at the short-range through lightning data assimilationS. Federico0M. Petracca1G. Panegrossi2S. Dietrich3ISAC-CNR, UOS of Rome, via del Fosso del Cavaliere 100, 00133 Rome, ItalyISAC-CNR, UOS of Rome, via del Fosso del Cavaliere 100, 00133 Rome, ItalyISAC-CNR, UOS of Rome, via del Fosso del Cavaliere 100, 00133 Rome, ItalyISAC-CNR, UOS of Rome, via del Fosso del Cavaliere 100, 00133 Rome, ItalyThis study shows the application of a total lightning data assimilation technique to the RAMS (Regional Atmospheric Modeling System) forecast. The method, which can be used at high horizontal resolution, helps to initiate convection whenever flashes are observed by adding water vapour to the model grid column. The water vapour is added as a function of the flash rate, local temperature, and graupel mixing ratio. The methodology is set up to improve the short-term (3 h) precipitation forecast and can be used in real-time forecasting applications. However, results are also presented for the daily precipitation for comparison with other studies. <br><br> The methodology is applied to 20 cases that occurred in fall 2012, which were characterized by widespread convection and lightning activity. For these cases a detailed dataset of hourly precipitation containing thousands of rain gauges over Italy, which is the target area of this study, is available through the HyMeX (HYdrological cycle in the Mediterranean Experiment) initiative. This dataset gives the unique opportunity to verify the precipitation forecast at the short range (3 h) and over a wide area (Italy). <br><br> Results for the 27 October case study show how the methodology works and its positive impact on the 3 h precipitation forecast. In particular, the model represents better convection over the sea using the lightning data assimilation and, when convection is advected over the land, the precipitation forecast improves over the land. It is also shown that the precise location of convection by lightning data assimilation improves the precipitation forecast at fine scales (meso-<i>β</i>). <br><br> The application of the methodology to 20 cases gives a statistically robust evaluation of the impact of the total lightning data assimilation on the model performance. Results show an improvement of all statistical scores, with the exception of the bias. The probability of detection (POD) increases by 3&ndash;5 % for the 3 h forecast and by more than 5 % for daily precipitation, depending on the precipitation threshold considered. <br><br> Score differences between simulations with or without data assimilation are significant at 95 % level for most scores and thresholds considered, showing the positive and statistically robust impact of the lightning data assimilation on the precipitation forecast.http://www.nat-hazards-earth-syst-sci.net/17/61/2017/nhess-17-61-2017.pdf
spellingShingle S. Federico
M. Petracca
G. Panegrossi
S. Dietrich
Improvement of RAMS precipitation forecast at the short-range through lightning data assimilation
Natural Hazards and Earth System Sciences
title Improvement of RAMS precipitation forecast at the short-range through lightning data assimilation
title_full Improvement of RAMS precipitation forecast at the short-range through lightning data assimilation
title_fullStr Improvement of RAMS precipitation forecast at the short-range through lightning data assimilation
title_full_unstemmed Improvement of RAMS precipitation forecast at the short-range through lightning data assimilation
title_short Improvement of RAMS precipitation forecast at the short-range through lightning data assimilation
title_sort improvement of rams precipitation forecast at the short range through lightning data assimilation
url http://www.nat-hazards-earth-syst-sci.net/17/61/2017/nhess-17-61-2017.pdf
work_keys_str_mv AT sfederico improvementoframsprecipitationforecastattheshortrangethroughlightningdataassimilation
AT mpetracca improvementoframsprecipitationforecastattheshortrangethroughlightningdataassimilation
AT gpanegrossi improvementoframsprecipitationforecastattheshortrangethroughlightningdataassimilation
AT sdietrich improvementoframsprecipitationforecastattheshortrangethroughlightningdataassimilation