1. Statistical analysis of factors driving surface ozone variability over continental South Africa
- Author
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Miroslav Josipovic, Markku Kulmala, Tracey L. Laban, Santtu Mikkonen, Ville Vakkari, Pieter G. van Zyl, Johan P. Beukes, Leonard Santana, Anne M. Thompson, Lauri Laakso, 10092390 - Beukes, Johan Paul, 22648143 - Josipovic, Miroslav, 10710361 - Van Zyl, Pieter Gideon, 23327278 - Laban, Tracey Leah, 11803371 - Santana, Leonard, Institute for Atmospheric and Earth System Research (INAR), and Department of Physics
- Subjects
multiple linear regression ,PARAMETERIZATION ,010504 meteorology & atmospheric sciences ,Ground Level Ozone ,principal component analysis ,MODELS ,Principal component analysis ,UNITED-STATES ,Tropospheric ozone (O-3) ,welgegund ,010501 environmental sciences ,Atmospheric sciences ,01 natural sciences ,114 Physical sciences ,Generalized additive models ,generalized additive models ,Surface ozone ,Tropospheric ozone (O3) ,parasitic diseases ,Linear regression ,REGRESSION ,PARTICLES ,Statistical analysis ,GE1-350 ,TEMPERATURE ,Multiple linear regression ,0105 earth and related environmental sciences ,General Environmental Science ,Renewable Energy, Sustainability and the Environment ,Generalized additive model ,Public Health, Environmental and Occupational Health ,GROUND-LEVEL OZONE ,Regression ,tropospheric ozone (o3) ,Environmental sciences ,13. Climate action ,URBAN AREAS ,PATTERNS ,Environmental science ,Welgegund ,METEOROLOGICAL CONDITIONS - Abstract
Statistical relationships between surface ozone (O-3) concentration, precursor species and meteorological conditions in continental South Africa were examined from data obtained from measurement stations in north-eastern South Africa. Three multivariate statistical methods were applied in the investigation, i.e. multiple linear regression (MLR), principal component analysis (PCA) and -regression (PCR), and generalised additive model (GAM) analysis. The daily maximum 8-h moving average O-3 concentrations were considered in these statistical models (dependent variable). MLR models indicated that meteorology and precursor species concentrations are able to explain similar to 50% of the variability in daily maximum O-3 levels. MLR analysis revealed that atmospheric carbon monoxide (CO), temperature and relative humidity were the strongest factors affecting the daily O-3 variability. In summer, daily O-3 variances were mostly associated with relative humidity, while winter O-3 levels were mostly linked to temperature and CO. PCA indicated that CO, temperature and relative humidity were not strongly collinear. GAM also identified CO, temperature and relative humidity as the strongest factors affecting the daily variation of O-3. Partial residual plots found that temperature, radiation and nitrogen oxides most likely have a non-linear relationship with O-3,while the relationship with relative humidity and CO is probably linear. An inter-comparison between O-3 levels modelled with the three statistical models compared to measured O-3 concentrations showed that the GAM model offered a slight improvement over the MLR model. These findings emphasise the critical role of regional-scale O-3 precursors coupled with meteorological conditions in daily variances of O-3 levels in continental South Africa.
- Published
- 2020