Mohammadi Farzaneh, Teiri Hakimeh, Hajizadeh Yaghoub, Abdolahnejad Ali, Ebrahimi Afshin
Department of Environmental Health Engineering, Faculty of Health, Isfahan University of Medical Sciences, Isfahan, Iran.
Environment Research Center, Research Institute for Primordial Prevention of Non-Communicable Diseases, Isfahan University of Medical Sciences, Hezar Jerib Street, Isfahan, 8174673461, Iran.
Sci Rep. 2024 Jan 24;14(1):2109. doi: 10.1038/s41598-024-52617-z.
With increasing levels of air pollution, air quality prediction has attracted more attention. Mathematical models are being developed by researchers to achieve precise predictions. Monitoring and prediction of atmospheric PM levels, as a predominant pollutant, is essential in emission mitigation programs. In this study, meteorological datasets from 9 years in Isfahan city, a large metropolis of Iran, were applied to predict the PM levels, using four machine learning algorithms including Artificial Neural |Networks (ANNs), K-Nearest-Neighbors (KNN), Support Vector |Machines (SVMs) and ensembles of classification trees Random Forest (RF). The data from 7 air quality monitoring stations located in Isfahan City were taken into consideration. The Confusion Matrix and Cross-Entropy Loss were used to analyze the performance of classification models. Several parameters, including sensitivity, specificity, accuracy, F1 score, precision, and the area under the curve (AUC), are computed to assess model performance. Finally, by introducing the predicted data for 2020 into ArcGIS software and using the IDW (Inverse Distance Weighting) method, interpolation was conducted for the area of Isfahan city and the pollution map was illustrated for each month of the year. The results showed that, based on the accuracy percentage, the ANN model has a better performance (90.1%) in predicting PM grades compared to the other models for the applied meteorological dataset, followed by RF (86.1%), SVM (84.6%) and KNN (82.2%) models, respectively. Therefore, ANN modelling provides a feasible procedure for the managerial planning of air pollution control.
随着空气污染程度的不断增加,空气质量预测受到了更多关注。研究人员正在开发数学模型以实现精确预测。作为主要污染物的大气颗粒物(PM)水平的监测和预测在减排计划中至关重要。在本研究中,利用包括人工神经网络(ANN)、K近邻(KNN)、支持向量机(SVM)和分类树集成随机森林(RF)在内的四种机器学习算法,应用了伊朗大都市伊斯法罕市9年的气象数据集来预测PM水平。考虑了位于伊斯法罕市的7个空气质量监测站的数据。使用混淆矩阵和交叉熵损失来分析分类模型的性能。计算了包括灵敏度、特异性、准确率、F1分数、精确率和曲线下面积(AUC)在内的几个参数来评估模型性能。最后,将2020年的预测数据引入ArcGIS软件,并使用反距离加权(IDW)方法对伊斯法罕市区域进行插值,绘制了该年每个月的污染地图。结果表明,基于准确率,对于所应用的气象数据集,ANN模型在预测PM等级方面比其他模型具有更好的性能(90.1%),其次分别是RF(86.1%)、SVM(84.6%)和KNN(82.2%)模型。因此,ANN建模为空气污染控制的管理规划提供了一种可行的方法。