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Predicting tree pollen season start dates using thermal conditions

机译:使用热条件预测树木花粉季节的开始日期

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摘要

Thermal conditions at the beginning of the year determine the timing of pollen seasons of early flowering trees. The aims of this study were to quantify the relationship between the tree pollen season start dates and the thermal conditions just before the beginning of the season and to construct models predicting the start of the pollen season in a given year. The study was performed in Krakow (Southern Poland); the pollen data of Alnus, Corylus and Betula were obtained in 1991–2012 using a volumetric method. The relationship between the tree pollen season start, calculated by the cumulated pollen grain sum method, and a 5-day running means of maximum (for Alnus and Corylus) and mean (for Betula) daily temperature was found and used in the logistic regression models. The estimation of model parameters indicated their statistically significance for all studied taxa; the odds ratio was higher in models for Betula, comparing to Alnus and Corylus. The proposed model makes the accuracy of prediction in 83.58 % of cases for Alnus, in 84.29 % of cases for Corylus and in 90.41 % of cases for Betula. In years of model verification (2011 and 2012), the season start of Alnus and Corylus was predicted more precisely in 2011, while in case of Betula, the model predictions achieved 100 % of accuracy in both years. The correctness of prediction indicated that the data used for the model arrangement fitted the models well and stressed the high efficacy of model prediction estimated using the pollen data in 1991–2010.
机译:年初的热状况决定了早花树木花粉季节的时间。这项研究的目的是量化树木花粉季节开始日期与季节开始之前的热状况之间的关系,并构建预测给定年份花粉季节开始的模型。该研究在波兰南部的克拉科夫进行。 1991年至2012年使用容积法获得了nu木,锦鸡儿和桦的花粉数据。发现通过累积花粉粒总和法计算的树木花粉季节开始与最高温度(对于Alnus和Corylus)和平均温度(对于Betula)的5天运行平均值之间的关系,并将其用于逻辑回归模型。模型参数的估计表明它们对所有研究的分类单元具有统计学意义;与Alnus和Corylus相比,Betula模型的优势比更高。所提出的模型对Alnus的预测准确率为83.58%,对Corylus的预测为84.29%,对Betula的预测为90.41%。在进行模型验证的年份(2011年和2012年)中,对Alnus和Corylus的季节开始时间的预测在2011年更为精确,而对于Betula,模型的预测在两年中均达到了100%的准确性。预测的正确性表明,用于模型布置的数据与模型非常吻合,并强调了使用1991-2010年花粉数据估算的模型预测的高效性。

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