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Forecasting olive crop yields based on long-term aerobiological data series and bioclimatic conditions for the southern Iberian Peninsula

机译:基于长期健美性数据系列和南部伊比利亚半岛的生物素质条件预测橄榄作物产量

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摘要

In the present study, bio-meteorological models for predicting olive-crop production in the southern Iberian Peninsula were developed. These covered a 16-year period: 1994-2009. The forecasting models were constructed using the partial least-squares regression method, taking the annual olive yield as the dependent variable, and both aerobiological and meteorological parameters as the independent variables. Two regression models were built for the prediction of crop production prior to the final harvest at two different times of the year: July and November. The percentage variance explained by the models was between 83% and 93%. Through these forecasting models, the main factors that influence olive-crop yield were identified. Pollen index and accumulated precipitation, especially as rain recorded during the pre-flowering months, were the most important parameters for providing an explanation of fluctuations in fruit production. The temperature recorded during the two months preceding budburst was another important variable, which showed positive effects on the final yield. The July model that provides accurate predictions of fruit production eight months prior to the final harvest is proposed as an optimal model to forecast fruit produced by olive trees in western Mediterranean areas.
机译:在本研究中,开发了用于预测南部伊比利亚半岛橄榄作生产的生物气象学模型。这些涵盖了16年的时间:1994-2009。使用部分最小二乘回归方法构建预测模型,以年橄榄产率作为从属变量,以及适气和气象参数作为自动变量。建立了两种回归模型,用于在一年中的两次不同时间之前预测作物生产:7月和11月。模型解释的百分比差异在83%和93%之间。通过这些预测模型,确定了影响橄榄作物产量的主要因素。花粉指数和累积降水,特别是在开花月份记录的雨量是最重要的参数,用于提供水果生产中波动的解释。在先前布伯斯特之前的两个月内记录的温度是另一个重要变量,对最终产量显示出积极影响。 7月模型,提供了在最终收获前八个月的精确预测,以最终收获前8个月是最佳模型,以预测橄榄树在西部地中海地区产生的水果。

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