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A novel data preprocessing method to estimate the air pollution (SO_2): neighbor-based feature scaling (NBFS)

机译:一种估计空气污染(SO_2)的新型数据预处理方法:基于邻居的特征缩放(NBFS)

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The forecasting of air pollution is important for living environment and public health. The prediction of SO_2 (sulfur dioxide), which is one of the indicators of air pollution, is a significant part of steps to be done in order to decrease the air pollution. In this study, a novel feature scaling method called neighbor-based feature scaling (NBFS) has been proposed and combined with artificial neural network (ANN) and adaptive network-based fuzzy inference system (ANFIS) prediction algorithms in order to predict the SO_2 concentration value is from air quality metrics belonging to Konya province in Turkey. This work consists of two stages. In the first stage, SO_2 concentration dataset has been scaled using neighbor-based feature scaling. In the second stage, ANN and ANFIS prediction algorithms have been used to forecast the SO_2 value of scaled SO_2 concentration dataset. SO_2 concentration data-set was obtained from Air Quality Statistics database of Turkish Statistical Institute. To constitute dataset, the mean values belonging to seasons of winter period have been used with the aim of watching the air pollution changes between dates of December, 1, 2003 and December, 30, 2005. In order to evaluate the performance of the proposed method, the performance measures including mean absolute error (MAE), mean square error (MSE), root mean square error (RMSE), and IA (Index of Agreement) values have been used. After NBFS method applied to SO_2 concentration dataset, the obtained RMSE and IA values are 83.87-0.27 (IA) and 93-0.33 (IA) using ANN and ANFIS, respectively. Without NBFS, the obtained RMSE and IA values are 85.31-0.25 (IA) and 117.71-0.29 (IA) using ANN and ANFIS, respectively. The obtained results have demonstrated that the proposed feature scaling method has been obtained very promising results in the prediction of SO_2 concentration values.
机译:空气污染的预测对生活环境和公共健康至关重要。 SO_2(二氧化硫)的预测是空气污染的指标之一,是减少空气污染的重要步骤。在这项研究中,提出了一种新的特征缩放方法,称为基于邻居的特征缩放(NBFS),并将其与人工神经网络(ANN)和基于自适应网络的模糊推理系统(ANFIS)预测算法相结合,以预测SO_2浓度该值来自土耳其科尼亚省的空气质量指标。这项工作包括两个阶段。在第一阶段,已使用基于邻居的特征缩放对SO_2浓度数据集进行了缩放。在第二阶段,已使用ANN和ANFIS预测算法来预测缩放后的SO_2浓度数据集的SO_2值。从土耳其统计研究所的空气质量统计数据库获得了SO_2浓度数据集。为了构成数据集,我们使用了属于冬季季节的平均值,目的是观察2003年12月1日至2005年12月30日之间的空气污染变化。为了评估该方法的性能, ,已使用包括平均绝对误差(MAE),均方误差(MSE),均方根误差(RMSE)和IA(协议索引)值的性能指标。将NBFS方法应用于SO_2浓度数据集后,使用ANN和ANFIS获得的RMSE和IA值分别为83.87-0.27(IA)和93-0.33(IA)。如果没有NBFS,则使用ANN和ANFIS获得的RMSE和IA值分别为85.31-0.25(IA)和117.71-0.29(IA)。获得的结果表明,所提出的特征缩放方法已经在预测SO_2浓度值方面获得了非常有希望的结果。

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