Abstract

Seasonal climatic prediction studies are a matter of wide debate all over the world. Cuba, a mainly agricultural nation, should greatly benefit from the knowledge, which is available months in advance of the precipitation regime and allows for the proper management of water resources. In this work, a series of six experiments were made with a mesoscale model WRF (Weather Research and Forecasting Model) that produced a 15-month forecast for each month of cumulative precipitation starting at two dates, and for three non-consecutive years with different meteorological characteristics: one dry year (2004), one year that started dry and turned rainy (2005), and one year where several tropical storms occurred (2008). ERA-Interim reanalysis data were used for the initial and border conditions and experiments started 1 month before the beginning of the rainy and the dry seasons, respectively. In a general sense, the experience of using WRF indicated that it was a valid resource for seasonal forecast, since the results obtained were in the same range as those reported by the literature for similar cases. Several limitations were revealed by the results: the forecasts underestimated the monthly cumulative precipitation figures, tropical storms entering through the borders sometimes followed courses different from the real courses inside the working domain, storms that developed inside the domain were not reproduced by WRF, and differences in initial conditions led to significantly different forecasts for the corresponding time steps (nonlinearity). Changing the model parameterizations and initial conditions of the ensemble forecast experiments was recommended.

Highlights

  • Meteorological forecasting is a matter of utmost importance for social development

  • There were two months with remarkable differences between forecasts and TRMM that, as discussed later, corresponded to the presence of tropical storms that were generated within the model domain and were not reproduced

  • Dynamic downscaling based on the use of WRF was a valid resource to achieve seasonal forecasts, since results obtained showed a similar behavior to those from global models over large periods of time

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Summary

Introduction

Meteorological forecasting is a matter of utmost importance for social development. In recent decades, it is associated with the development in computer sciences and technologies, the so-called numerical forecasts always yield more truthful simulations of the atmospheric behavior, ranging from world to mesoscale area coverage, and from very short-term forecasts of a few hours to projections of about one hundred years. Sub-seasonal and seasonal forecasts are a matter of widespread discussion and research is in full development given the great number of factors involved in the performance of forecasting models which can generate uncertainties [1].

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