C. Cacciamani
ARPA-E
Network
Latest external collaboration on country level. Dive into details by clicking on the dots.
Publication
Featured researches published by C. Cacciamani.
Archive | 2007
C. Cacciamani; A. Morgillo; S. Marchesi; V. Pavan
This chapter presents an overview of the occurrences and effects of droughts through a study of the Standard Precipitation Index (SPI) in the Emilia-Romagna region, which is located in the northern-central part of the Italian peninsula. The link between this index and large-scale atmospheric circulation was investigated and the SPI index was also used to predict drought. The study describes the development of a method of forecasting SPI index based on an earlier Interregional project (SEDEMED), involving a statistical downscaling scheme model using as input the large-scale seasonal forecasts obtained from Atmospheric Global Circulation Models. The downscaling scheme, which has already been used with relatively good results to predict surface parameters of temperature and precipitation, is applied to the SPI index, providing a statistical regionalization of this indicator
Natural Hazards | 2014
R. Tomozeiu; G. Agrillo; C. Cacciamani; V. Pavan
Future changes of seasonal minimum and maximum temperature over Northern Italy are assessed for the periods 2021–2050 and 2070–2099 against 1961–1990. A statistical downscaling technique, applied to the ENSEMBLES-Stream1 and CIRCE global simulations (A1B scenario), is used to reach this objective. The statistical scheme consists of a multivariate regression based on Canonical Correlation Analysis. The set-up of the statistical scheme is done using large-scale fields (predictors) derived from ERA40 reanalysis and seasonal mean minimum and maximum temperature (predictands) derived from observational data at around 75 stations, distributed over Northern Italy, over the period 1960–2002. A similar technique is also applied to the number of frost days and ice days at a reduced number of stations in order to construct projections on change of the selected extreme temperature indices for the two future periods. The evaluation of future projections for these extreme indices is relevant due to its impacts on transports, health, and agriculture. The downscaling scheme constructed using observed data is then applied to large-scale fields simulated by global models (A1B scenario), in order to construct scenarios on future change of seasonal temperature, mean and extreme indices, at local scale. The significance of changes is tested from the statistical point of view. The results show that significant increases could be expected to occur under scenario conditions in both minimum and maximum temperature, associated with a decrease in the number of frost and ice days in both periods and more intense to the end of the century.
International Journal of Environment and Pollution | 2001
M.Deserti; E. Savoia; C. Cacciamani; M. Golinelli; A. Kerschbaumer; G. Leoncini; A. Selvini; T. Paccagnella; S. Tibaldi
In the framework of the Integrated Decision Support System for air quality assessment and management operating at the Emilia-Romagna Region Meteorological Service, an appropriate meteorological input is necessary: 1) to provide meteorological information for evaluation of the pollution data observed at the urban monitoring stations; 2) as input data to run daily statistical models for air quality forecasts; 3) as input to run deterministic dispersion models. Thus, a meteorological pre-processor has been implemented operationally. The runs are made on a daily basis in a diagnostic configuration in the whole Po valley basin and for forecasting on selected grid points near the main urban areas of the Emilia-Romagna region.
Tellus A | 2005
V. Pavan; S. Marchesi; A. Morgillo; C. Cacciamani; Francisco J. Doblas-Reyes
A novel method is applied in order to obtain winter predictions over Northern Italy using state-of-the-art multi-model seasonal ensemble hindcasts. The method consists of several stages. In the first stage, the best predictions are computed for a group of eight indices of large-scale circulation variability using the multi-model ensemble data set. The predictions are multiple linear regressions of single-model ensemble mean hindcasts produced within the European project DEMETER using six different coupled models. The regression is obtained using the method of the best linear unbiased estimate (BLUE). In the second stage, a standard statistical downscaling technique of the ‘perfect prog’ kind is applied in order to predict a group of 12 surface predictands starting from a group of predictors selected between the large-scale indices identified during the first stage. The selection of the predictands is carried out empirically, using those which lead to the best final prediction, while the regression coefficients are defined using observational data only, as in a ‘perfect prog’ downscaling technique. All steps of the prediction computation up to this point are performed in cross-validation mode. Finally, the full high-resolution surface winter predictions are reconstructed using an adequate selection of the forecasted predictands. The predictions obtained have a much higher detail than the DEMETER direct model output predictions and, in parts of the domain, they are characterized by substantially significant skill. The improvement of the skill with respect to single-model ensembles is due to the use of the BLUE technique, while the statistical downscaling allows us to increase significantly the detail of the prediction. The study includes a discussion on the sensitivity of the results to both the period in years and the number of models used to produce the forecasts, and a comparison with the results obtained using a simple multi-model forecast in which all models are given the same weight.
Science of The Total Environment | 2015
Renata Vezzoli; Paola Mercogliano; Silvano Pecora; Alessandra Lucia Zollo; C. Cacciamani
The impacts of climate change on Po River discharges are investigated through a set of climate, hydrological, water-balance simulations continuous in space and time. Precipitation and 2m mean temperature fields from climate projections under two different representative concentration pathways, RCP4.5 and RCP8.5, have been used to drive the hydrological model. Climate projections are obtained nesting the regional climate model COSMO-CLM into the global climate model CMCC-CM. The bias in climate projections is corrected applying the distribution derived quantile mapping. The persistence of climate signal in precipitation and temperature after the bias correction is assessed in terms of climate anomaly for 2041-2070 and 2071-2100 periods versus 1982-2011. To account for the overall uncertainty of emission scenarios, climate models and bias correction, the hydrological/water balance simulations are carried out using both raw and bias corrected climate datasets. Results show that under both RCPs, either considering raw and bias corrected climate datasets, temperature is expected to increase on the whole Po River basin and in all the seasons; the most significant changes in precipitation and discharges occur in summer, when the reduction of precipitation leads to an increase in low flow duration and occurrence likelihood, and in autumn and winter where precipitation shows a positive variation increasing the high flows frequency.
Science of The Total Environment | 1992
C. Cacciamani; Sandro Nanni; Francesco Nucciotti; T. Paccagnella
In this paper Adriatic eutrophication is examined with respect to its relationships with meteorological parameters. As regards the eutrophication index, the concentration of chlorophyll a has been taken from measurements performed by the ship «Daphne» (of Emilia Romagna Region) on the Adriatic coast from Porto Garibaldi to Cattolica, 500 m offshore, during the period 1985-1988. For the same period, meteorological data have been examined in respect of mean daily temperature, precipitation, and sea level pressure observed in some synoptic weather stations of the central and south-east Po Valley.
Climate Dynamics | 2018
V. Pavan; Gabriele Antolini; Roberto Barbiero; Nicola Berni; Fabio Brunier; C. Cacciamani; Anselmo Cagnati; Orietta Cazzuli; Andrea Cicogna; Chiara De Luigi; Enzo Di Carlo; Marco Francioni; Luca Maraldo; Gianni Marigo; Stefano Micheletti; Luca Onorato; Elvio Panettieri; Umberto Pellegrini; Renata Pelosini; David Piccinini; Sara Ratto; Christian Ronchi; Luca Rusca; Stefano Sofia; Marco Stelluti; R. Tomozeiu; Tommaso Torrigiani Malaspina
Observational daily precipitation data from a group of 1762 stations over north-central Italy and adjacent areas are used to produce a high resolution daily gridded precipitation analysis covering the period from 1961 to 2015. Input data are checked for quality, time consistency, synchronicity and statistical homogeneity and the final result has been used to describe the spatial and temporal variability of precipitation over the area. Data are interpolated using a modified Shepard scheme and the interpolation errors are compatible with those presented in Isotta et al. (Int J Climatol 34(5):1657–1675, 2014). The analysis is compared with other similar products available over the area considered, and differences and similarities are described, taking into account the impacts of different spatial resolution and time coverage. The data set is used to describe local climate with respect to precipitation, including mean values and seasonality, by using a group of climate annual and seasonal indices: cumulated precipitation, maximum number of consecutive dry days, frequency of wet days, mean precipitation intensity and 50th and 90th percentile of daily precipitation over a season. The linear trends over the full period of these indices are described and compared. It is shown that although the time series of area average total annual precipitation over north-central Italy does not show significant linear trends, these are present locally. In particular, significant negative trends of annual total precipitation are found in central Italy and in the inner part of northern plains, while significant positive linear trends are present in several areas over the Alps and over the Liguria coast. The seasons most affected by changes in precipitation are summer and autumn, which, in most areas, are the driest and wettest seasons. In summer, significant positive trends in total precipitation have been found in areas close to the northern national borders, while significant negative trends are located elsewhere. The number of wet days is significantly decreasing over most of the domain, but the 90th percentile of precipitation is significantly increasing over most of the Alpine area and northern Po Valley. Over the southern part of the Po Valley and central Italy summer precipitation is significantly becoming less frequent and, generally, less intense. In autumn, total precipitation is characterised by significant positive trends over large areas in Northern Italy and by significant negative trends in inner areas of the Central Apennines. The trend patterns present great similarities with those of the 90th percentile of daily precipitation for the same season. The maximum length of dry spell is significantly decreasing in autumn over most areas, including central Italy, while the number of wet days presents negative but mostly non significant trends over the whole domain.
Ingegneria dell'Ambiente | 2016
Stefano Caserini; Paolo Giani; Federico Caspani; Domenico Santoro; C. Cacciamani; Giovanni Lonati
Il lavoro presenta una valutazione delle variazioni della frequenza delle inversioni termiche e degli eventi di stagnazione nel bacino padano nel periodo 1950-2100, unendo l’analisi delle variazioni storiche, ricavate sulla base dei dati osservati nelle stazioni di San Pietro Capofiume e Milano Linate, con i risultati delle proiezioni disponibili per il modello climatico regionale CCLM 4-8-18 sviluppato dal CMCC nell’ambito del progetto Med-CORDEX. La presenza di situazioni di inversione termica dell’atmosfera, particolari condizioni meteorologiche in grado di influenzare pesantemente la capacita dell’atmosfera di disperdere gli inquinanti, e stata valutata con un metodo basato sul confronto tra il gradiente delle temperature fra il suolo e l’altezza geopotenziale a 850hPa ed un coefficiente funzione della pressione superficiale. Il metodo e stato tarato sulla base dei dati dei radiosondaggi della stazione di San Pietro Capofiume nel periodo 1987-2006, e validato su quelli di Milano Linate del periodo 1999-2012. L’analisi ha mostrato un aumento delle inversioni termiche pari a circa 1,2 giorni/anno nella stazione di S.Pietro Capofiume nel periodo 1987-2006 e pari a 1,1 giorni/anno nella stazione di Milano Linate per il periodo 1999-2012. Per il futuro, considerando uno scenario ad emissione medio-basse (scenario RCP4.5) si stima un ulteriore aumento della frequenza delle inversioni termiche nel periodo 2010-2100 con un tasso di crescita pari a +1,2 giorni/decennio. In questo scenario, il decennio 2091-2100 sara caratterizzato da annate con una media di 12 giornate all’anno di inversione termica in piu (circa 10%) rispetto alla media 1986-2005, concentrate in particolar modo nel periodo estivo. Nell’ipotesi di uno scenario ad elevate emissioni (scenario RCP8.5), si stima invece un aumento della frequenza delle inversioni termiche piu contenuto nel periodo 2010-2100, pari a +0,6 giorni/decennio. Le proiezioni modellistiche indicano che anche gli eventi di stagnazione, giornate caratterizzate da venti moderati e assenza di precipitazioni, sono destinati ad aumentare: per il decennio 2091-2100 e previsto un aumento pari a +13 giorni e +11 giorni rispetto alla media 1986-2005 rispettivamente negli scenari RCP4.5 e RCP8.5.
International Journal of Climatology | 2014
Francesco A. Isotta; Christoph Frei; Viktor Weilguni; Melita Perčec Tadić; Pierre Lassègues; Bruno Rudolf; V. Pavan; C. Cacciamani; Gabriele Antolini; Sara Ratto; Michela Munari; Stefano Micheletti; Veronica Bonati; Cristian Lussana; Christian Ronchi; Elvio Panettieri; Gianni Marigo; Gregor Vertačnik
International Journal of Climatology | 2008
A. Busuioc; R. Tomozeiu; C. Cacciamani