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Predicting the onset of Betula pendula flowering in Poznan (Poland) using remote sensing thermal data

机译:利用遥感热数据预测波兹南(Betula pendula)开花的开始

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Due to the urban heat island effect, the time of plant pollination might markedly vary within the area of a city. However, existing pollen forecasts do not reflect the spatial variations in the pollen release time within a heterogeneous urban environment. The main objective of this study was to model the spatial pattern of flowering onset (and thus the moment of pollen release) in silver birch (Betula pendula Roth.) in Poznan (Western Poland) using land surface temperature (LST) data and in situ phenological observations.The onset of silver birch flowering was observed at 34 urban and rural sites (973 trees) in Poznan from 2012 to 2014. Forty-four thermal variables were retrieved from MODerate Resolution Imaging Spectroradiometer (MODIS) data. To predict the spatio-temporal distribution of B. pendula flowering onset dates in a city, the ordinary and partial least squares, support vector machine and random forest regression models were applied. The models performance was examined by an internal repeated k-fold cross-validation and external validation with archival phenological data (2010). Birch flowering began significantly earlier in the urban sites compared to the rural sites (from -1.4 days in 2013, to -4.1 days in 2012). The maximum March LST difference between the urban and rural sites reached 2.4 degrees C in 2013 and 4.5 degrees C in 2012. The random forest model performed best at validation stage, i.e. the root mean square error between the predicted and observed onset dates was 1.461 days, and the determination coefficient was 0.829.A calibrated model for predicting the timing of flowering in a heterogeneous city area is an important step in developing a fine-scale forecasting system that can directly estimate pollen exposure in places where allergy sufferers live. Importantly, by incorporating only pre-flowering thermal data into the model, location-specific allergy forecasts can be delivered to the public before the actual flowering time. (C) 2018 Elsevier B.V. All rights reserved.
机译:由于城市热岛效应,植物授粉的时间可能在城市区域内明显不同。但是,现有的花粉预测不能反映异质城市环境中花粉释放时间的空间变化。这项研究的主要目的是利用地表温度(LST)数据和原位对白桦(Betula pendula Roth。)的白桦(Betula pendula Roth。)开花期的空间格局进行建模。从2012年至2014年,在波兹南的34个城市和农村地区(973棵树木)观察到白桦树开花的开始。从MODerate分辨率成像光谱仪(MODIS)数据中检索了44个热变量。为了预测某城市中B. pendula开花开始日期的时空分布,应用了最小二乘方格,支持向量机和随机森林回归模型。通过内部重复k倍交叉验证和带有档案物候数据的外部验证来检查模型的性能(2010年)。与乡村地区相比,桦树开花在城市地区明显开始得更早(从2013年的-1.4天到2012年的-4.1天)。城乡之间三月份的最大LST差异在2013年达到2.4摄氏度,在2012年达到4.5摄氏度。随机森林模型在验证阶段表现最佳,即,预计和观察到的发病日期之间的均方根误差为1.461天,确定系数为0.829。用于预测异类城市地区开花时间的校准模型是开发可直接估算过敏患者居住地花粉暴露量的精细预报系统的重要步骤。重要的是,通过仅将开花前的热数据纳入模型中,可以在实际开花时间之前将针对特定地点的过敏预测发布给公众。 (C)2018 Elsevier B.V.保留所有权利。

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