Dipolar interaction and demagnetizing effects in magnetic nanoparticle dispersions: introducing the Mean Field Interacting Superparamagnet Model (MFISP Model)
F.H. S\'anchez, P. Mendoza Z\'elis, M.L. Arciniegas, G.A. Pasquevich,, and M.B. Fern\'andez van Raap

TL;DR
This paper introduces the MFISP model, a theoretical framework that combines dipolar interactions and demagnetizing effects to analyze magnetic nanoparticle dispersions, enabling extraction of intrinsic properties and structural information from experimental data.
Contribution
The MFISP model is a novel analytical approach that accounts for non-uniform nanoparticle distributions and interactions, allowing detailed characterization of magnetic properties and spatial arrangements.
Findings
Model accurately retrieves intrinsic magnetic properties.
Estimates interparticle and intercluster distances.
Matches experimental data with FESEM images.
Abstract
A model is developed with the aim of analyzing interacting superparamagnets. Model is built from magnetic dipolar interaction and demagnetizing mean field concepts. A useful expression for effective demagnetizing factors is achieved, which allows for the analysis of non uniform spatial distributions of nanoparticles. This expression is a function of demagnetizing factors associated with specimen and clusters shapes, and of the mean distances between near neighbor nanoparticles and between clusters, relative to the characteristic sizes of each of these two types of objects, respectively. It explains effects of magnetic dipolar interactions such as the observation of apparent nanoparticle magnetic-moments smaller than real ones. It is shown that by performing a minimum set of experimental determinations, model application allows retrieval of intrinsic properties, like magnetic moment and…
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