Tracking Dust Plumes and Identifying Source Areas Using Spatiotemporal Clustering of Remote Sensing Data
Abstract
Traditionally, studies on dust relied on polar-orbiting satellites whose limited temporal coverage does not offer a detailed picture of how dust plumes evolve and change over time. To address this, we develop a method to identify and track individual dust plumes via hourly images from the Meteosat Second Generation Spinning Enhanced Visible and Infrared Imager (SEVIRI) instrument on the Eumetsat geostationary orbit satellites. Our framework uses the SEVIRI Dust RGB false color composite to highlight airborne dust in images. We then use the DBSCAN machine learning algorithm to cluster pixels into plumes based on their spatial and temporal connectivity. Through careful analysis and processing, we are able to analyze properties such as the storm's source area, distance traveled, and affected areas. Through our framework, we gain insights into dust storm sources, emission factors such as soil moisture, wind speed, and vegetation, and their seasonal effects, which are key for understanding dust impacts on air quality, health, and the environment.
To illustrate the effectiveness of our methodology, we conduct comprehensive case studies on several prominent dust-emitting regions: the Bodélé Depression, Southern Iraq, the Syrian Desert, and the Sistan basin. These case studies shed light on the complex effects of drought and the interplay between soil moisture and vegetation as well as their effects on plume properties. Providing an understanding of the different variables contributing to dust storm dynamics.
Description
Keywords
Remote Sensing, Dust