F. Valero
Complutense University of Madrid
Network
Latest external collaboration on country level. Dive into details by clicking on the dots.
Publication
Featured researches published by F. Valero.
Journal of Geophysical Research | 2015
S. Fernández-González; F. Valero; J.L. Sánchez; E. Gascón; L. López; E. García-Ortega; A. Merino
Accurate estimation of snowfall episodes several hours or even days in advance is essential to minimize risks to transport and other human activities. Every year, these episodes cause severe traffic problems on the northwestern Iberian Peninsula. In order to analyze the influence of different parameterization schemes, 15 snowfall days were analyzed with the Weather Research and Forecasting (WRF) model, defining three nested domains with resolutions of 27, 9, and 3 km. We implemented four microphysical parameterizations (WRF Single-Moment 6-class scheme, Goddard, Thompson, and Morrison) and two planetary boundary layer schemes (Yonsei University and Mellor-Yamada-Janjic), yielding eight distinct combinations. To validate model estimates, a network of 97 precipitation gauges was used, together with dichotomous data of snowfall presence/absence from snowplow requests to the emergency service of Spain and observatories of the Spanish Meteorological Agency. The results indicate that the most accurate setting of WRF for the study area was that using the Thompson microphysical parameterization and Mellor-Yamada-Janjic scheme, although the Thompson and Yonsei University combination had greater accuracy in determining the temporal distribution of precipitation over 1 day. Combining the eight deterministic members in an ensemble average improved results considerably. Further, the root mean square difference decreased markedly using a multiple linear regression as postprocessing. In addition, our method was able to provide mean ensemble precipitation and maximum expected precipitation,which can be very useful in the management of water resources. Finally, we developed an application that allows determination of the risk of snowfall above a certain threshold.
Detecting and Modelling Regional Climate Change, 2001, ISBN 9783540422396, págs. 369-376 | 2001
M. Y. Luna; M.L. Martin; F. Valero; Fidel González-Rouco
To isolate the physical mechanism responsible for the relationship between North Atlantic large-scale circulation and precipitation amounts over Western Europe, a singular value decomposition (SVD) has been performed. This analysis is applied to a 30-winter dataset consisting of both monthly mean precipitation anomalies in Iberia and monthly mean 500 hPa geopotential height anomalies over the North Atlantic Ocean. The SVD analysis yields three significant pairs of patterns that account for 93% of the squared covariance between the two fields. This great amount of covariance indicates the strong coupling between large-scale circulation described by the 500 hPa height anomalies and the regional precipitation in the Iberian Peninsula.
Journal of Geophysical Research | 2015
S. Fernández-González; F. Valero; J.L. Sánchez; E. Gascón; L. López; E. García-Ortega; A. Merino
Surface icing can cause dramatic consequences on human activities. What is more, numerical weather prediction models are not very accurate in determining freezing drizzle, which creates uncertainty when forecasting this type of weather phenomenon. Therefore, it is essential to improve the forecast accuracy of these models for such phenomena to mitigate risks caused by unforeseen freezing drizzle events. On 5 February 2012, an episode of freezing drizzle took place in the Guadarrama Mountains, at the center of the Iberian Peninsula. This episode was preceded by weak snowfall. After the freezing drizzle, moderate snowfall was recorded in the study area. This event was simulated using the Weather Research and Forecasting model. Through this analysis, we identified the meteorological factors at both synoptic scale and mesoscale that caused this episode. Wind perpendicular to an orographic barrier-generated updrafts and retention of moisture upwind, which caused orographic clouds to appear on the north side of the Guadarrama Mountains. Atmospheric stability prevented cloud formation at midlevels at the time of the freezing drizzle, which maintained cloud top temperatures warmer than −15°C during the episode. The entrance of moisture and instability at midlevels caused cloud top temperatures substantially colder than −15°C, which coincided with snow in the mountain range. Cloud top temperature and thickness control the efficiency of the glaciation process, thereby determining the type of precipitation at the surface. Freezing drizzle risk and in-cloud icing algorithms were developed with the aim of predicting similar events in the study area, which could mitigate impacts on human activities.
Journal of Geophysical Research | 2017
S. Fernández-González; María Luisa Novo Martín; A. Merino; J.L. Sánchez; F. Valero
During recent decades, the use of probabilistic forecasting methods has increased markedly. However, these predictions still need improvement in uncertainty quantification and predictability analysis. For this reason, the main aim of this paper is to develop tools for quantifying uncertainty and predictability of wind speed over the Iberian Peninsula. To achieve this goal, several spread indexes extracted from an ensemble prediction system are defined in this paper. Subsequently, these indexes were evaluated with the aim of selecting the most appropriate for the characterization of uncertainty associated to the forecasting. Selection is based on comparison of the average magnitude of ensemble spread (ES) and mean absolute percentage error (MAPE). MAPE is estimated by comparing the ensemble mean with wind speed values from different databases. Later, correlation between MAPE and ES was evaluated. Furthermore, probability distribution functions (PDFs) of spread indexes are analyzed to select the index with greater similarity to MAPE PDFs. Then, the spread index selected as optimal is used to carry out a spatiotemporal analysis of model uncertainty in wind forecasting. The results indicate that mountainous regions and the Mediterranean coast are characterized by strong uncertainty, and the spread increases more rapidly in areas affected by strong winds. Finally, a predictability index is proposed for obtaining a tool capable of providing information on whether the predictability is higher or lower than average. The applications developed may be useful in the forecasting of wind potential several days in advance, with substantial importance for estimating wind energy production.
international conference on intelligent system applications to power systems | 2011
A. Pascual; F. Valero; M.L. Martín; J. Sanz; M.Y. Luna; Ana Morata
The present study is focused on the analysis of the relationships between weather patterns and wind speeds over Iberia. A weather pattern classification is made by applying a multivariate methodology based on principal components to the Atlantic geopotential height field. From such classification, a set of composite plots are illustrated, showing how the different obtained atmospheric patterns have influence over the wind speed behaviour and the wind speed values. Moreover, the relationships between the obtained principal components and the observational local wind speeds are also provided in terms of the wind speed cumulated probability values and the associated curve area values related to the highest and lowest scores of the components time series.
Theoretical and Applied Climatology | 2006
A. Morata; M.L. Martín; M. Y. Luna; F. Valero
International Journal of Climatology | 2009
F. Valero; M.L. Martín; M. G. Sotillo; A. Morata; M. Y. Luna
Atmospheric Research | 2006
M.L. Martín; D. Santos-Muñoz; A. Morata; M. Y. Luna; F. Valero
Advances in Geosciences | 2008
A. Morata; M. Y. Luna; M.L. Martín; M. G. Sotillo; F. Valero
Atmospheric Research | 2014
S. Fernández-González; F. Valero; J.L. Sánchez; E. Gascón; L. López; E. García-Ortega; A. Merino