Abstract

We present an application of self-organizing maps (SOMs) for analysing multi-model ensemble seasonal forecasts from the DEMETER project in the tropical area of Northern Peru. The SOM is an automatic data-mining clustering technique, which allows us to summarize a high-dimensional data space in terms of a set of reference vectors (cluster centroids). Moreover, it has outstanding analysis and visualization properties, because the reference vectors can be projected into a two-dimensional lattice, preserving their high-dimensional topology.In the first part of the paper, the SOM is applied to analyse both atmospheric patterns over Peru and local precipitation observations at two nearby stations. First, the method is applied to cluster the ERA40 reanalysis patterns on the area of study (Northern Peru), obtaining a two-dimensional lattice which represents the climatology. Then, each particular phenomenon or event (e.g. El Niño or La Niña) is shown to define a probability density function (PDF) on the lattice, which represents its characteristic ‘location’ within the climatology. On the other hand, the climatological lattice is also used to represent the local precipitation regime associated with a given station. For instance, we show that the precipitation regime is strongly associated with El Niño events for one station, whereas it is more uniform for the other.The second part of the paper is devoted to downscaling seasonal ensemble forecasts from the multi-model DEMETER ensemble to local stations. To this aim, the PDF generated on the lattice by the patterns predicted for a particular season is combined with the local precipitation lattice for a given station. Thus, a probabilistic or numeric local forecast is easily obtained from the resulting PDF. Moreover, a measure of predictability for the downscaled forecast can be computed in terms of the entropy of the ensemble PDF.We present some evidence that accurate local predictions for accumulated seasonal precipitation can be obtained some months in advance for strong El Niño episodes. Finally, we compare the multi-model ensemble with single-model ensembles, and show that the best results correspond to different models for different years; however, the best global performance over the whole period corresponds to the multi-model ensemble.

Highlights

  • The advances made in ensemble techniques during the last decade have led to a great improvement of seasonal forecast

  • We show that the similarity between an ensemble prediction and the climatology, or between the predictions of different models, can be quantitatively measured using the relative entropy of the corresponding probability density function (PDF)

  • In the previous section we have described the application of selforganizing map (SOM) for representing a set of atmospheric patterns by means of the PDF, or histogram, defined on the lattice of a SOM

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Summary

Introduction

The advances made in ensemble techniques during the last decade have led to a great improvement of seasonal forecast. In the first part of the paper, we apply this technique for clustering and analysing a space of daily atmospheric patterns over Peru, characterizing the climatology. Different downscaling techniques (analogue methods and weather generators) have been applied to DEMETER data in mid-latitudes, and the results are presented in this volume (see, for example, Dıez et al, 2005; Feddersen and Andersen, 2005). The graphical visualization capabilities of the SOM make the whole process intuitive and visually appealing This technique is applied to Northern Peru, obtaining promising results during the strong El Nino periods of 1982/1983 and 1997/1998 (with lead times ranging from one to six months).

Data and area of study
10 S 80 W
Self-organizing maps for data analysis
Characterizing distributions of seasons and events
Entropy and relative entropy
Analysing DEMETER seasonal forecasts
Downscaling method
Seasonal downscaling
Conclusions and further remarks
Full Text
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