Title | Droughts Prediction: a Methodology Based on Climate Seasonal Forecasts |
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Publication Type | Articolo su Rivista peer-reviewed |
Year of Publication | 2020 |
Authors | Arnone, E., Cucchi M., Gesso S.D., Petitta Marcello, and Calmanti Sandro |
Journal | Water Resources Management |
ISSN | 09204741 |
Keywords | Atmospheric variables, climate prediction, drought, Forecasting, Mediterranean areas, Mediterranean region, Resource availability, Seasonal forecasts, Statistical approach, Water resources, Water shortages, wind |
Abstract | This study proposes a methodology for the drought assessment based on the seasonal forecasts. These are climate predictions of atmospheric variables, such as precipitation, temperature, wind speed, for upcoming season, up to 7 months. In regions particularly vulnerable to droughts and to changes in climate, such as the Mediterranean areas, predictions of precipitation with months in advance are crucial for understanding the possible shifts, for example, in water resource availability. Over Europe, practical applications of seasonal forecasts are still rare, because of the uncertainties of their skills; however, the predictability varies depending on the season and area of application. In this study, we describe a methodology which integrates, through a statistical approach, seasonal forecast and reanalysis data to assess the climate state, i.e. drought or not, of a region for predefined periods in the next future, at monthly scale. Additionally, the skill of the forecasts and the reliability of the released climate state assessment are estimated in terms of the false rate, i.e. the probability of missing alerts or false alarms. The methodology has been first built for a case study in Zakynthos (Greece) and then validated for a case study in Sicily (Italy). The selected locations represent two areas of the Mediterranean region often suffering from drought and water shortage situations. Results showed promising findings, with satisfying matching between predictions and observations, and false rates ranging from 1 to 50%, depending on the selected forecast period. © 2020, The Author(s). |
Notes | cited By 0 |
URL | https://www.scopus.com/inward/record.uri?eid=2-s2.0-85091270055&doi=10.1007%2fs11269-020-02623-3&partnerID=40&md5=88bdc7bbcf31646e6e9a4b344c29e232 |
DOI | 10.1007/s11269-020-02623-3 |
Citation Key | Arnone2020 |