2019
DOI: 10.1002/qj.3679
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Reflectivity and velocity radar data assimilation for two flash flood events in central Italy: A comparison between 3D and 4D variational methods

Abstract: The aim of this study is to provide an evaluation of the impact of two largely used data assimilation techniques, namely three‐ and four‐dimensional variational data assimilation systems (3D‐Var and 4D‐Var), on the forecasting of heavy precipitation events using the Weather Research and Forecasting (WRF) model. For this purpose, two flash flood events in central Italy are analysed. The first occurred on September 14, 2012 during an Intensive Observation Period of the Hydrological cycle in the Mediterranean exp… Show more

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Cited by 17 publications
(15 citation statements)
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References 68 publications
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“…The quality of the background error covariance matrix is crucial in a 3D-Var assimilation step [40], because its statistics determine how the observations spread in the model space and how each model grid point contains dynamically balanced increments. We claim that this represents a consistent improvement with respect to previous studies, which computed the background error covariance matrix for a shorter time period (less than three months [39,40,45,49,50]) or used the default matrix provided by the software developers [42]. Finally, to evaluate the results obtained when assimilating observations from weather stations and radars and compare such results with those obtained without assimilation, we developed an object-oriented verification method, aimed at evaluating both the intensity and position errors of rainfall predictions.…”
Section: Introductionsupporting
confidence: 85%
See 1 more Smart Citation
“…The quality of the background error covariance matrix is crucial in a 3D-Var assimilation step [40], because its statistics determine how the observations spread in the model space and how each model grid point contains dynamically balanced increments. We claim that this represents a consistent improvement with respect to previous studies, which computed the background error covariance matrix for a shorter time period (less than three months [39,40,45,49,50]) or used the default matrix provided by the software developers [42]. Finally, to evaluate the results obtained when assimilating observations from weather stations and radars and compare such results with those obtained without assimilation, we developed an object-oriented verification method, aimed at evaluating both the intensity and position errors of rainfall predictions.…”
Section: Introductionsupporting
confidence: 85%
“…This is a remarkable improvement with respect to previous similar studies; to mention a few works, Refs. [39,43] employed a 1-week and a 1-month period, respectively, to compute the B matrix, whereas [45,50] applied the NMC method during the Hydrological cycle in the Mediterranean Experiment-First Special Observing Period (HyMeX-SOP1, which lasted for about two months in 2012, see [20]). It is also worth mentioning [42] who used the default matrix provided by the WRFDA system, which is produced with global data and its use for regional cases is sometimes discouraged [65].…”
Section: Discussionmentioning
confidence: 99%
“…Lightning data have been widely used in the past two decades and have some advantages compared to other sources of data [17,18]. For example, an important source of data to improve effectively the precipitation forecast at short range is given by radars (reflectivity and radial winds) [19][20][21][22]. However, compared to lightning data assimilation (LDA), the assimilation of radar data is achieved through more sophisticated and computationally expensive techniques, such as three-dimensional variational assimilation (3DVAR) [23,24] and the ensemble Kalman filter [20,25,26].…”
Section: Introductionmentioning
confidence: 99%
“…This is a remarkable improvement with respect to previous similar studies; to mention a few works [34] and [36] employed a 1-week and a 1-month period, respectively, to compute the B matrix, [39] and [87] applied the NMC method during the Hydrological cycle in the Mediterranean Experiment -First Special Observing Period (HyMeX-SOP1, which lasted for about two months in 2012, see [20] ),…”
Section: Discussionmentioning
confidence: 87%