Nations that border the Gulf of Mexico and Caribbean Sea are ideally placed for tracking the effects of global climate change and testing innovative ways to adapt to future changes.
This work presents the first high-resolution reconstruction of rainfall in southwestern Spain during the period 1750–1840. The weather descriptions used are weekly reports describing the most relevant events that occurred in the Duchy of Feria. An index was defined to characterise the weekly rainfall. Monthly indices were obtained by summing the corresponding weekly indices, obtaining cumulative monthly rainfall indices. The reconstruction method consisted of establishing a linear correlation between the monthly rainfall index and monthly instrumental data (1960–1990). The correlation coefficients were greater than 0.80 for all months. The rainfall reconstruction showed major variability similar to natural variability. The reconstructed rainfall series in Zafra was compared with the rainfall series of Cadiz, Gibraltar and Lisbon for the period 1750–1840, with all four series found to have a similar pattern. The influence of the North Atlantic Oscillation (NAO) on the winter rainfall reconstruction was found to behave similarly to that of modern times. Other studies described are of the SLP values over the entire North Atlantic in the months with extreme values of rainfall, and unusual meteorological events (hail, frost, storms and snowfall) in the reports of the Duchy of Feria
Historical importance of wetlands in malaria transmission in southwest of SpainMalaria is a parasitic disease that is currently affecting a good number of countries with approximately one million deaths per year. Traditionally, this pathology has been related to wetlands and other unhealthy water bodies. It disappeared from most of Western Europe after the Second World War; however, its eradication from Spain took place later. In fact, the WHO didn't ofſcially declare malaria in Spain eradicated until 1964, after a gradual controlled process of the illness, through the improvement of health and hygienic conditions in the country, and the ſght against the vectors, the parasite, and its reservoirs. In 1913, the Spanish regions with the largest number of municipalities with autochthonous malaria were, precisely, those containing larger areas covered by unhealthy water bodies (except for Extremadura). Among them, Western Andalusia outstood as the main region with the largest area of unhealthy malaria focuses and with high mortality and morbidity rates. Within Western Andalusia, Huelva -and especially its coastal areas-has been, for centuries, one of the provinces with greater endemicity. After the Spanish Civil War a process of reforestation with fast-growing species took place in the Coastal Aeolian Sheet of the Province of Huelva, which led to an 88 % reduction of the surface covered by ponds in this territory. These lagoons had started a natural regression process by the end of the XIXth Century related to the post-Little Ice Age warming in Andalusia. The parallel evolution of malaria patients and the regression process experienced by these wetlands for the above mentioned reasons have had a determinant inƀuence in the eradication of the disease. All of this leads us to consider the relevant role of wetlands when studying the future risk of malaria reemergence in SW Spain.
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