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Explicit and implicit description of the factors impact on the NO2 concentration in the traffic corridor

机译:显式和隐含描述因子对交通走廊中的NO2集中的影响

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High concentrations of nitrogen dioxide in the air, particularly in heavily urbanized areas, have an adverse effect on many aspects of residents' health. A method is proposed for modelling daily average, minimal and maximal atmospheric NO2 concentrations in a conurbation, using two types of modelling: multiple linear regression (LR) an advanced data mining technique - Random Forest (RF). It was shown that Random Forest technique can be successfully applied to predict daily NO2 concentration based on data from 2015-2017 years and gives better fit than linear models. The best results were obtained for predicting daily average NO2 values with R-2=0.69 and RMSE=7.47 mu g/m(3). The cost of receiving an explicit, interpretable function is a much worse fit (R-2 from 0.32 to 0.57). Verification of models on independent material from the first half of 2018 showed the correctness of the models with the mean average percentage error equal to 16.5% for RF and 28% for LR modelling daily average concentration. The most important factors were wind conditions and traffic flow. In prediction of maximal daily concentration, air temperature and air humidity take on greater importance. Prevailing westerly and south-westerly winds in Wroclaw effectively implement the idea of ventilating the city within the studied intersection. Summarizing: when modeling natural phenomena, a compromise should be sought between the accuracy of the model and its interpretability.
机译:空气中的高浓度二氧化氮,特别是在城市化地区,对居民健康的许多方面产生不利影响。提出了一种方法,用于使用两种造型中的开箱模型平均,最小和最大大气的NO2浓度的方法:多种线性回归(LR)高级数据挖掘技术 - 随机林(RF)。结果表明,随机森林技术可以成功地应用于根据2015 - 2017年的数据预测每日NO2浓度,并提供比线性模型更好的合适。获得最佳结果,用于预测每日平均NO2值,R-2 = 0.69和RMSE =7.47μg/ m(3)。接收明确的可解释功能的成本是更差的拟合(R-2从0.32到0.57)。从2018年上半年验证独立材料的模型表明,对于每日平均平均浓度的RF,平均平均百分比误差等于16.5%的模型。最重要的因素是风力条件和交通流量。在预测最大每日浓度,空气温度和空气湿度更加重要。在弗罗茨瓦夫的盛行和南风风中有效地实现了在研究中融合了城市的想法。总结:当建模自然现象时,应在模型的准确性与其解释之间寻求妥协。

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