4.7 Article

Multi-Scale Modelling of Aggregation of TiO2 Nanoparticle Suspensions in Water

Journal

NANOMATERIALS
Volume 12, Issue 2, Pages -

Publisher

MDPI
DOI: 10.3390/nano12020217

Keywords

Density Functional Theory; Molecular Dynamics; Umbrella Sampling; Brownian dynamics; multiscale; nanoparticle; aggregation; clustering

Funding

  1. European Union [814426]
  2. Italian National Project PRIN Heat transfer and Thermal Energy Storage Enhancement by Foams and Nanoparticles [2017F7KZWS]

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This study investigates the aggregation of titanium dioxide nanoparticles using a multi-scale technique and discovers three new molecular descriptors that can predict the toxicity of materials, enabling safe design strategies.
Titanium dioxide nanoparticles have risen concerns about their possible toxicity and the European Food Safety Authority recently banned the use of TiO2 nano-additive in food products. Following the intent of relating nanomaterials atomic structure with their toxicity without having to conduct large-scale experiments on living organisms, we investigate the aggregation of titanium dioxide nanoparticles using a multi-scale technique: starting from ab initio Density Functional Theory to get an accurate determination of the energetics and electronic structure, we switch to classical Molecular Dynamics simulations to calculate the Potential of Mean Force for the connection of two identical nanoparticles in water; the fitting of the latter by a set of mathematical equations is the key for the upscale. Lastly, we perform Brownian Dynamics simulations where each nanoparticle is a spherical bead. This coarsening strategy allows studying the aggregation of a few thousand nanoparticles. Applying this novel procedure, we find three new molecular descriptors, namely, the aggregation free energy and two numerical parameters used to correct the observed deviation from the aggregation kinetics described by the Smoluchowski theory. Ultimately, molecular descriptors can be fed into QSAR models to predict the toxicity of a material knowing its physicochemical properties, enabling safe design strategies.

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