0
Article ? AI-assigned paper type based on the abstract. Classification may not be perfect — flag errors using the feedback button. Tier 2 ? Original research — experimental, observational, or case-control study. Direct primary evidence. Environmental Sources Policy & Risk Sign in to save

Assessment of environmental and socioeconomic drivers of urban stormwater microplastics using machine learning

Scientific Reports 2025 11 citations ? Citation count from OpenAlex, updated daily. May differ slightly from the publisher's own count. Score: 68 ? 0–100 AI score estimating relevance to the microplastics field. Papers below 30 are filtered from public browse.
Mir Amir Mohammad Reshadi, Mir Amir Mohammad Reshadi, Mir Amir Mohammad Reshadi, Mir Amir Mohammad Reshadi, Fereidoun Rezanezhad, Fereidoun Rezanezhad, Fereidoun Rezanezhad, Ali Reza Shahvaran, Sarah Kaykhosravi, Fereidoun Rezanezhad, Fereidoun Rezanezhad, Stephanie Slowinski, Ali Reza Shahvaran, Fereidoun Rezanezhad, Philippe Van Cappellen Stephanie Slowinski, Stephanie Slowinski, Fereidoun Rezanezhad, Amirhossein Ghajari, Philippe Van Cappellen Amirhossein Ghajari, Philippe Van Cappellen Stephanie Slowinski, Stephanie Slowinski, Sarah Kaykhosravi, Philippe Van Cappellen Stephanie Slowinski, Fereidoun Rezanezhad, Stephanie Slowinski, Ali Reza Shahvaran, Fereidoun Rezanezhad, Stephanie Slowinski, Fereidoun Rezanezhad, Philippe Van Cappellen Philippe Van Cappellen Philippe Van Cappellen Philippe Van Cappellen Philippe Van Cappellen Philippe Van Cappellen Fereidoun Rezanezhad, Philippe Van Cappellen

Summary

Using machine learning on data from 107 urban areas worldwide, researchers identified the key factors driving microplastic levels in stormwater runoff, including weather patterns, land use, and waste management practices. The study found that inconsistent definitions of what counts as a "microplastic" across different studies is a major barrier to comparing contamination levels between cities.

Microplastics (MPs) are ubiquitous environmental contaminants with urban landscapes as major source areas of MPs and stormwater runoff as an important transport pathway to receiving aquatic environments. To better delineate the drivers of urban stormwater MP loads, we created a global dataset of stormwater MP concentrations extracted from 107 stormwater catchments (SWCs). Using this dataset, we trained and tested three optimized gradient boosting Machine Learning (ML) models. Twenty hydrometeorological and socioeconomic variables, as well as the MP size definitions considered in the individual SWCs, were included as potential predictors of the observed MP concentrations. CatBoost emerged as the best-performing ML model. Shapley additive explanations revealed that features related to hydrometeorological conditions, watershed characteristics and human activity, and plastic waste management practices contributed 34, 25, and 4.8%, respectively, to the model's predictive performance. The MP size definition, that is, the lower size limit and the width of the size range, accounted for the remaining 36% variability in the predicted MP concentrations. The lack of a consistent definition of the MP size range among studies therefore represents a major source of uncertainty in the comparative analysis of urban stormwater MP concentrations. The proposed ML modeling approach can generate first estimates of MP concentrations in urban stormwater when data are sparse and serve as a quantitative tool for benchmarking the added value of including further data layers and applying uniform definitions of size classes of environmental MPs.

Sign in to start a discussion.

Share this paper