Nonlinear relationships between atmospheric aerosol and its gaseous precursors: Analysis of long-term air quality monitoring data by means of neural networks
Igor B. Konovalov

TL;DR
This paper uses neural networks to analyze long-term air quality data, revealing nonlinear relationships between aerosols, VOC, and NOx, with implications for understanding atmospheric chemistry and pollution control.
Contribution
It introduces neural network-based empirical models to capture nonlinear PM-NOx-VOC relationships in urban air quality data, demonstrating their effectiveness across different environments.
Findings
Decrease in NOx or VOC can increase aerosol levels under certain conditions
Models reveal nonlinear dependence of hydroxyl radicals on VOC and NOx
Common qualitative features found across different monitoring sites
Abstract
The nonlinear features of the relationships between concentrations of aerosol and volatile organic compounds (VOC) and oxides of nitrogen (NOx) in urban environments are derived directly from data of long-term routine measurements of NOx, VOC, and total suspended particulate matter (PM). The main idea of the method used for the analysis is creation of special empirical models based on artificial neural networks. These models which are in essence the nonlinear extension of commonly used linear statistical models are believed to provide the best fit for the real (nonlinear) PM-NOx-VOC relationships under different atmospheric conditions. It is believed that such models may be useful in context of various scientific and practical problems concerning atmospheric aerosols. The method is demonstrated by the example of two empirical models created with independent data-sets collected at two…
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Taxonomy
TopicsAtmospheric chemistry and aerosols · Air Quality Monitoring and Forecasting · Air Quality and Health Impacts
