Prediction of CO and PM10 in Cold and Warm Seasons and Survey of the Effect of Instability Indices on Contaminants Using Artificial Neural Network: A Case Study in Tehran City

R. Farhadi, M. Hadavifar, M. Moeinaddini, M. Amintoosi
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Abstract

Today, air pollution in urban areas is a major issue that have been affecting human health and the environment. Over the years artificial neural network methods has been used for prediction of pollutants concentration in many metropolitans. In the present study data were obtained from department of environment and air quality controlling stations in city of Tehran from March 2012 to October 2013. Prediction of CO and PM10 contaminations during cold and warm seasons under the influence of instability indices and meteorological parameters was done using the artificial neural network. Results of the modeling process showed that the highest correlation coefficient was obtained 0.84 for PM10 in warm season. On the contrary, the highest correlation coefficient of CO in cold season was 0.78. Also, the effect of instability indices on air pollution was investigated. The highest CO concentration occurred during cold seasons (R2= 0.81), while the lowest concentration was in warm season (R2= 0.72). In case of PM, the highest concentration occurred during warm seasons (R2= 0.84), while the lowest concentration was in cold season (R2=0.75). doi: 10.5829/ijee.2022.13.01.08
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冷暖季节CO和PM10的人工神经网络预测及不稳定性指标对污染物的影响——以德黑兰市为例
今天,城市地区的空气污染是影响人类健康和环境的一个主要问题。多年来,人工神经网络方法已被广泛应用于城市污染物浓度的预测。在本研究中,数据来自2012年3月至2013年10月德黑兰市环境和空气质量控制站。利用人工神经网络对寒暖季CO和PM10污染进行了不稳定指数和气象参数影响下的预测。模拟结果表明,暖季PM10的相关系数最高,为0.84。相反,在寒冷季节,CO的相关系数最高,为0.78。研究了不稳定指数对大气污染的影响。冷季CO浓度最高(R2= 0.81),暖季CO浓度最低(R2= 0.72)。暖季PM浓度最高(R2= 0.84),寒季PM浓度最低(R2=0.75)。doi: 10.5829 / ijee.2022.13.01.08
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