2018
DOI: 10.1021/acs.langmuir.7b03932
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Aggregate Formation of Surface-Modified Nanoparticles in Solvents and Polymer Nanocomposites

Abstract: A new method based on the combination of small-angle scattering, reverse Monte Carlo simulations, and an aggregate recognition algorithm is proposed to characterize the structure of nanoparticle suspensions in solvents and polymer nanocomposites, allowing detailed studies of the impact of different nanoparticle surface modifications. Experimental small-angle scattering is reproduced using simulated annealing of configurations of polydisperse particles in a simulation box compatible with the lowest experimental… Show more

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Cited by 29 publications
(48 citation statements)
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“…The polymer was dissolved in MEK (10%v), then mixed with the NP suspension in MEK at 1%v, followed by solvent casting on a Teflon support for 24 h at 50°C. 52 The final PNC samples have a typical size of 3 cm diameter with a thickness of ca. 100 µm.…”
Section: Experimental and Simulationmentioning
confidence: 99%
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“…The polymer was dissolved in MEK (10%v), then mixed with the NP suspension in MEK at 1%v, followed by solvent casting on a Teflon support for 24 h at 50°C. 52 The final PNC samples have a typical size of 3 cm diameter with a thickness of ca. 100 µm.…”
Section: Experimental and Simulationmentioning
confidence: 99%
“…14, 53-55 simulation, and converted into distribution functions of aggregate mass by an aggregate recognition algorithm. 52 Details and fine-tuning of the latter are given in the results section. The cubic box size with periodic boundary conditions was set by the experimental minimum q-value, L box = 2π/q min , which in turn determines the number of particles given the experimental silica volume fraction, Φ.…”
Section: Reverse Monte Carlo Scattering Analysis Spatial Distributiomentioning
confidence: 99%
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“…11,26 Alternatively, if sufficient knowledge is available on the primary particles, e.g., if it is possible to measure them under dilute conditions in order to describe shape, polydispersity, and surface roughness quantitatively, then reverse Monte Carlo modelling may be used for a quantitative analysis of the particle and aggregate structure. [27][28] This technique provides a series of real space snapshots with particle distributions, which are compatible with the observed scattered intensity. In the present contribution on more or less ill-defined carbon black particles, the above-mentioned multi-scale approach had to be used.…”
Section: Introductionmentioning
confidence: 99%