Research Approach

From 2020 to 2023, the project designed and developed a set of advanced machine learning (ML)-based algorithms and models that link ground-based in situ and space-based remote sensing observations of major air quality components with the aim to (a) identify and classify patterns in urban air quality, (b) enable the deduction and forecast of air pollution events related to PM2.5 and ozone from space-based observations, and ultimately (c) identify similarities in air quality regimes between megacities around the globe for improved air pollution mitigation strategies.


Year One


Year Two


The PWWB team continues to analyze publicly available data from various sources: