Author/Authors :
?zbay، نويسنده , , Bilge and Keskin، نويسنده , , Gül?en Ayd?n and Do?ruparmak، نويسنده , , ?enay Cetin and Ayberk، نويسنده , , Sava?، نويسنده ,
Abstract :
The aim of this study is to apply multivariate statistical methods in predicting ozone (O3) concentrations at the ground level of the troposphere as the function of pollution and meteorological parameters. PM10, SO2, NO, NO2, CO, O3, CH4, NMHC, temperature, rainfall, humidity, pressure, wind direction, wind speed and solar radiation were measured hourly for one year period in order to predict O3 concentrations of 1 h later. In the study, relationships between O3 data and other variables were investigated by bivariate correlation analysis. CH4, NMHC, NO2 exhibited considerable negative correlations with O3 described with the Pearson correlation coefficients of − 0.67, − 0.55, − 0.51, respectively whereas highest positive correlation was noted for temperature with correlation coefficient of 0.60. Multiple regression analysis (MLR) was used for modeling annual and seasonal O3 concentrations. Adjusted R2 values were determined as 0.90, 0.85 and 0.92 respectively for annual period, cooling and warming seasons. In order to decrease the number of input variables principle component analysis (PCA) was applied by using annual data. MLR analysis was repeated using four principle components and new adjusted R2 was calculated as 0.63.
Keywords :
ozone , Statistical analysis , multiple regression analysis , principle component analysis , Kocaeli