• Title of article

    Forecasting ambient air pollutants by box-Jenkins stochastic models in Tehran

  • Author/Authors

    Delaram, J Department of Industrial Engineering - Sharif University of Technology - Tehran, Iran , Khedmati, M Department of Industrial Engineering - Sharif University of Technology - Tehran, Iran

  • Pages
    18
  • From page
    3551
  • To page
    3568
  • Abstract
    This paper studies the behavior of six air pollutants (including PM10, PM2:5, O3, SO2, NO2, and CO) in Tehran over a 6-year time span. In this paper, an iterative procedure based on the univariate Box-Jenkins stochastic models is applied to develop the most eective forecasting model for each air pollutant. Applying a number of widely used criteria, the best model for each air pollutant is selected and the results show that the proposed models perform accurately and satisfactorily for both tting and predicting where the tted and predicted values are so close to the true values of the related data. Finally, factor analysis is conducted to investigate the relationships between the air pollutants where the results show that four factors account for 93.2704% of the total variance. In this regard, the factor containing PM10 and PM2:5 and the factor containing CO and NO2 are, respectively, the most and the second most aecting factors with the proportion of 43.2594% and 21.6500% of the total variability. Since both of these factors stem from the large-scale use of fossil-fuel vehicles, reducing the number of vehicles or improving the quality of fossil fuels, may increase air quality by 60%.
  • Keywords
    Air quality , Autoregressive Integrated Moving Average (ARIMA) , Air pollution , Forecasting , Time series analysis
  • Journal title
    Scientia Iranica(Transactions E: Industrial Engineering)
  • Serial Year
    2021
  • Record number

    2681727