Data-driven stochastic 3D modeling of the nanoporous binder-conductive additive phase in battery cathodes
Phillip Gr\"afensteiner, Markus Osenberg, Andr\'e Hilger, Nicole Bohn, Joachim R. Binder, Ingo Manke, Volker Schmidt, Matthias Neumann

TL;DR
This paper introduces a stochastic 3D modeling approach for the nanoporous binder-conductive phase in lithium-ion battery cathodes, enabling realistic virtual structures to study their impact on electrochemical performance.
Contribution
The paper presents a novel stochastic geometry-based 3D modeling method for the complex nanoporous phase in battery cathodes, calibrated and validated with experimental imaging data.
Findings
Model accurately reproduces morphological descriptors
Virtual structures reveal structure-property relationships
Graphite particles significantly influence transport properties
Abstract
A stochastic 3D modeling approach for the nanoporous binder-conductive additive phase in hierarchically structured cathodes of lithium-ion batteries is presented. The binder-conductive additive phase of these electrodes consists of carbon black, polyvinylidene difluoride binder and graphite particles. For its stochastic 3D modeling, a three-step procedure based on methods from stochastic geometry is used. First, the graphite particles are described by a Boolean model with ellipsoidal grains. Second, the mixture of carbon black and binder is modeled by an excursion set of a Gaussian random field in the complement of the graphite particles. Third, large pore regions within the mixture of carbon black and binder are described by a Boolean model with spherical grains. The model parameters are calibrated to 3D image data of cathodes in lithium-ion batteries acquired by focused ion beam…
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Taxonomy
TopicsMachine Learning in Materials Science · Electron and X-Ray Spectroscopy Techniques · Recycling and Waste Management Techniques
