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Statistical modelling of non-stationary processes of atmospheric pollution from natural sources: example of birch pollen

机译:自然来源的大气污染的非平稳过程的统计模型:桦木花粉示例

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A statistical model for predicting daily mean pollen concentrations during the flowering season is constructed and its parameterization and application to birch pollen in Riga (Latvia) are discussed. The model involves several steps of transformations of both meteorological data and pollen observations, aiming at a normally distributed homogeneous stationary dataset with linearized dependencies between the transformed meteorological predictors and pollen concentrations. The data transformation includes normalization of daily mean birch pollen concentrations, a switch of the independent axis from time to heat sum, a projection of governing parameters to pollen concentrations, and a reduction of non-stationarity via removal of the mean pollen season curve. These transformations resulted in a substantial improvement of statistical features of the data and, consequently, a higher efficiency of statistical procedures and better scores of the model. The transformed datasets are used for the model construction via multi-linear regression. For the application in Riga, the model coefficients were calculated using 9 years of birch pollen observations. The model was evaluated using years withheld from the training dataset. The evaluation showed robust model performance with the overall Model Accuracy exceeding 80% and Odds Ratio = 30. (C) 2016 Elsevier B.V. All rights reserved.
机译:建立了一个预测开花季节每日平均花粉浓度的统计模型,并讨论了其参数化及其在里加(拉脱维亚)桦树花粉中的应用。该模型涉及气象数据和花粉观测值的转换的几个步骤,目标是在转换后的气象预测因子和花粉浓度之间具有线性相关性的正态分布均匀平稳数据集。数据转换包括对每日平均桦树花粉浓度的标准化,独立轴从时间到热量的切换,控制参数向花粉浓度的投影以及通过去除平均花粉季节曲线来减少不平稳性。这些转换大大改善了数据的统计特征,因此,提高了统计程序的效率,并提高了模型的评分。转换后的数据集通过多线性回归用于模型构建。对于在里加的应用,使用9年的桦树花粉观测值计算模型系数。使用从训练数据集中保留的年份评估模型。评估显示出强大的模型性能,整体模型精度超过80%,赔率=30。(C)2016 Elsevier B.V.保留所有权利。

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