Litcius/Paper detail

Assessing uncertainty and heterogeneity in machine learning-based spatiotemporal ozone prediction in Beijing-Tianjin- Hebei region in China

Mei‐Ling Cheng, F. Fang, I. M. Navon, Jie Zheng, Jiang Zhu, Christopher C. Pain

2023The Science of The Total Environment20 citationsDOIOpen Access PDF

Abstract

Accurate prediction of spatiotemporal ozone concentration is of great significance to effectively establish advanced early warning systems and regulate air pollution control. However, the comprehensive assessment of uncertainty and heterogeneity in spatiotemporal ozone prediction remains unknown. Here, we systematically analyze the hourly and daily spatiotemporal predictive performances using convolutional long short term memory (ConvLSTM) and deep convolutional generative adversarial network (DCGAN) models over the Beijing-Tianjin-Hebei region in China from 2013 to 2018. In extensive scenarios, our results show that the machine learning-based (ML-based) models achieve better spatiotemporal ozone concentration prediction performance with multiple meteorological conditions. A further comparison to the air pollution model-Nested Air Quality Prediction Modelling System (NAQPMS) and monitoring observations, the ConvLSTM model demonstrates the practical feasibility of identifying high ozone concentration distribution and capturing spatiotemporal ozone variation patterns at a high spatial resolution (here 15 km × 15 km).

Topics & Concepts

BeijingEnvironmental scienceOzoneAir quality indexMeteorologyAir pollutionPollutionComputer scienceChinaGeographyChemistryArchaeologyOrganic chemistryEcologyBiologyAir Quality Monitoring and ForecastingAir Quality and Health ImpactsAtmospheric chemistry and aerosols