%0 Journal Article %T A Hybrid Model Evaluation Based on PCA Regression Schemes Applied to Seasonal Precipitation Forecast %A Pedro M. Gonzá %A lez-Jardines %A Aleida Rosquete-Esté %A vez %A Maibys Sierra-Lorenzo %A Arnoldo Bezanilla-Morlot %J Atmospheric and Climate Sciences %P 328-353 %@ 2160-0422 %D 2024 %I Scientific Research Publishing %R 10.4236/acs.2024.143021 %X Possible changes in the structure and seasonal variability of the subtropical ridge may lead to changes in the rainfall’s variability modes over Caribbean region. This generates additional difficulties around water resource planning, therefore, obtaining seasonal prediction models that allow these variations to be characterized in detail, it’s a concern, specially for island states. This research proposes the construction of statistical-dynamic models based on PCA regression methods. It is used as predictand the monthly precipitation accumulated, while the predictors (6) are extracted from the ECMWF-SEAS5 ensemble mean forecasts with a lag of one month with respect to the target month. In the construction of the models, two sequential training schemes are evaluated, obtaining that only the shorter preserves the seasonal characteristics of the predictand. The evaluation metrics used, where cell-point and dichotomous methodologies are combined, suggest that the predictors related to sea surface temperatures do not adequately represent the seasonal variability of the predictand, however, others such as the temperature at 850 hPa and the Outgoing Longwave Radiation are represented with a good approximation regardless of the model chosen. In this sense, the models built with the nearest neighbor methodology were the most efficient. Using the individual models with the best results, an ensemble is built that allows improving the individual skill of the models selected as members by correcting the underestimation of precipitation in the dynamic model during the wet season, although problems of overestimation persist for thresholds lower than 50 mm. %K Seasonal Forecast %K Principal Component Regression %K Statistical-Dynamic Models %U http://www.scirp.org/journal/PaperInformation.aspx?PaperID=134746