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Prediction of column ozone concentrations using multiple regression analysis and principal component analysis techniques: A case study in peninsular Malaysia

机译:使用多元回归分析和主成分分析技术预测柱状臭氧浓度:马来西亚半岛的一个案例研究

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The aim of this study is to develop new algorithms of the column ozone (O3) in Peninsular Malaysia using statistical methods. Four regression equations, denoted as O3 NEM, O3 SWM, (PCA1) O3 NEM season, and (PCA2) O3 SWM season, were developed. Multiple regression analysis (MRA) and principal component analysis (PCA) methods were utilized to achieve the objectives of the study. MRA was used to generate regression equations for O3 NEM and O3 SWM, whereas a combination of the MRA and PCA methods were used to generate regression equations for PCA1 and PCA2. The results of the best regression equations for the column O3 through MRA by using four of the independent variables were highly correlated (R??=??0.811 for SWM, R??=??0.803 for NEM) for the six-year (2003a??2008) data. However, the result of fitting the best equations for the O3 data using four of the independent variables gave approximately the same R values (a??0.83) for both the NEM and SWM seasons using the combined MRA and PCA methods. The common variables that appeared in both regression equations were H2O vapor and NO2. This result was expected because NO2 is a precursor of O3. The correlation coefficients (R) of the validation for the NEM and SWM seasons were 0.877a??0.888 and 0.837a??0.896, respectively. These statistical values indicated a very good agreement between the monthly predicted and observed O3 for Peninsular Malaysia.
机译:这项研究的目的是使用统计方法开发马来西亚半岛中臭氧(O3)的新算法。建立了四个回归方程,分别表示为O3 NEM,O3 SWM,(PCA1)O3 NEM季节和(PCA2)O3 SWM季节。利用多元回归分析(MRA)和主成分分析(PCA)方法来达到研究目的。 MRA用于生成O3 NEM和O3 SWM的回归方程,而MRA和PCA方法的组合用于生成PCA1和PCA2的回归方程。使用六年中的四个自变量,通过ORA到O3列的最佳回归方程的结果高度相关(SWM的R ?? = 0.811,NEM的R ?? = 0.803)高度相关( 2003a?2008)数据。但是,使用MRA和PCA组合方法对NEM和SWM季节使用四个独立变量拟合O3数据的最佳方程式的结果得出大约相同的R值(a ?? 0.83)。在两个回归方程中出现的共同变量是H2O蒸气和NO2。由于NO2是O3的前体,因此可以预期得到此结果。 NEM和SWM季节验证的相关系数(R)分别为0.877a?0.888和0.837a?0.896。这些统计值表明,马来西亚半岛的每月O3预测值与观测值之间有很好的一致性。

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