: Magnetic clay-based composites are promising materials for pollutant remediation due to their tunable surface chemistry, ion-exchange capacity and facile magnetic recovery. However, their practical deployment remains limited by poor scalability and the lack of a predictive framework linking physicochemical properties to adsorption performance. Here, we address both challenges by combining scalable spray-drying fabrication with colloidally driven design and data-driven modelling, establishing a predictive approach to multifunctional adsorption. We developed a scalable strategy to integrate Fe3O4 nanoparticles into oppositely charged clay matrices via heterocoagulation or coprecipitation, followed by one-step spray-drying to produce mechanically robust micrometre-sized granules. The resulting composites retained the intrinsic magnetic behaviour of Fe3O4 (M-H up to 1.5 T) while exhibiting strong and selective uptake across multiple pollutant classes, including heavy-metal ions (Cu2+ and Fe3+ > 15 mg g-1), oppositely charged dyes (rhodamine B ∼20 mg g-1; methylene blue and methyl orange ∼7 mg g-1) and phenols (30-40 µg g-1). The co-aggregates were highly reusable, with < 10% efficiency loss after four reuse cycles. Notably, in all cases, chemisorption governed the overall uptake, primarily driven by ion-exchange interactions with aqueous species. A machine-learning model (R 2 = 0.91) correlated adsorption capacity with material descriptors, identifying zeta potential, isoelectric point and hydrodynamic size as the dominant factors controlling performance. Together, these results moved beyond empirical material design by providing a scalable and predictive structure-property framework for magnetic clay composites, enabling their rational optimisation and practical implementation in water treatment.

Data-driven insights into the performance of scalable magnetic clay-based composites for pollutant removal

Vespignani M.;Ortelli S.
;
Blosi M.
;
Zanoni I.;Albertini F.;Furxhi I.;Costa A. L.
2026

Abstract

: Magnetic clay-based composites are promising materials for pollutant remediation due to their tunable surface chemistry, ion-exchange capacity and facile magnetic recovery. However, their practical deployment remains limited by poor scalability and the lack of a predictive framework linking physicochemical properties to adsorption performance. Here, we address both challenges by combining scalable spray-drying fabrication with colloidally driven design and data-driven modelling, establishing a predictive approach to multifunctional adsorption. We developed a scalable strategy to integrate Fe3O4 nanoparticles into oppositely charged clay matrices via heterocoagulation or coprecipitation, followed by one-step spray-drying to produce mechanically robust micrometre-sized granules. The resulting composites retained the intrinsic magnetic behaviour of Fe3O4 (M-H up to 1.5 T) while exhibiting strong and selective uptake across multiple pollutant classes, including heavy-metal ions (Cu2+ and Fe3+ > 15 mg g-1), oppositely charged dyes (rhodamine B ∼20 mg g-1; methylene blue and methyl orange ∼7 mg g-1) and phenols (30-40 µg g-1). The co-aggregates were highly reusable, with < 10% efficiency loss after four reuse cycles. Notably, in all cases, chemisorption governed the overall uptake, primarily driven by ion-exchange interactions with aqueous species. A machine-learning model (R 2 = 0.91) correlated adsorption capacity with material descriptors, identifying zeta potential, isoelectric point and hydrodynamic size as the dominant factors controlling performance. Together, these results moved beyond empirical material design by providing a scalable and predictive structure-property framework for magnetic clay composites, enabling their rational optimisation and practical implementation in water treatment.
2026
Istituto di Scienza, Tecnologia e Sostenibilità per lo Sviluppo dei Materiali Ceramici - ISSMC (ex ISTEC)
Istituto dei Materiali per l'Elettronica ed il Magnetismo - IMEM
Magnetic clay composites; Spray-drying; Heterocoagulation; Water purification; Machine learning; Heavy metal and dye removal
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Utilizza questo identificativo per citare o creare un link a questo documento: https://hdl.handle.net/20.500.14243/583823
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