2024 article

Machine Learning Models to Predict Early Breakthrough of Recalcitrant Organic Micropollutants in Granular Activated Carbon Adsorbers

Koyama, Y., Fasaee, M. A. K., Berglund, E. Z., & Knappe, D. R. U. (2024, September 13). ENVIRONMENTAL SCIENCE & TECHNOLOGY.

By: Y. Koyama n, M. Fasaee n, E. Berglund n & D. Knappe n

author keywords: unregulated contaminants; per- and polyfluoroalkylsubstances(PFASs); gradient-boosting machine; random forest
Source: Web Of Science
Added: September 23, 2024

Granular activated carbon (GAC) adsorption is frequently used to remove recalcitrant organic micropollutants (MPs) from water. The overarching aim of this research was to develop machine learning (ML) models to predict GAC performance from adsorbent, adsorbate, and background water matrix properties. For model calibration, MP breakthrough curves were compiled and analyzed to determine the bed volumes of water that can be treated until MP breakthrough reaches ten percent of the influent MP concentration (BV10). Over 400 data points were split into training, validation, and testing sets. Seventeen variables describing MP, background water matrix, and GAC properties were explored in ML models to predict log