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Revisiting urban air quality forecasting: a regression approach

机译:重新审视城市空气质量预报:一种回归方法

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We address air quality (AQ) forecasting as a regression problem employing computational intelligence (CI) methods for the Gdańsk Metropolitan Area (GMA) in Poland and the Thessaloniki Metropolitan Area (TMA) in Greece. Linear Regression as well as Artificial Neural Network models are developed, accompanied by Random Forest models, for five locations per study area and for a dataset of limited feature dimensionality. An ensemble approach is also used for generating and testing AQ forecasting models. Results indicate good model performance with a correlation coefficient between forecasts and measurements for the daily mean $$hbox {PM}_{10}$$ PM 10 concentration one day in advance reaching 0.765 for one of the TMA locations and 0.64 for one of the GMA locations. Overall results suggest that the specific modelling approach can support the provision of air quality forecasts on the basis of limited feature space dimensionality and by employing simple linear regression models.
机译:我们针对波兰的格但斯克大都会区(GMA)和希腊的塞萨洛尼基大都会区(TMA),采用计算智能(CI)方法将空气质量(AQ)预报作为回归问题解决。开发了线性回归模型和人工神经网络模型,以及随机森林模型,用于每个研究区域的五个位置和特征维数有限的数据集。集成方法也用于生成和测试AQ预测模型。结果表明,模型性能良好,并且预报和测量值之间的相关系数为每日平均$$ hbox {PM} _ {10} $$ PM 10浓度,一天前,TMA位置之一达到0.765,其中一个位置达到0.64。 GMA位置。总体结果表明,特定的建模方法可以基于有限的特征空间维数并采用简单的线性回归模型来支持提供空气质量预报。

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