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Volker Schmidt

Researcher at University of Ulm

Publications -  353
Citations -  8559

Volker Schmidt is an academic researcher from University of Ulm. The author has contributed to research in topics: Point process & Stochastic modelling. The author has an hindex of 39, co-authored 331 publications receiving 7281 citations. Previous affiliations of Volker Schmidt include Charles University in Prague.

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Quantification of root growth patterns from the soil perspective via root distance models

TL;DR: For the first time, a parsimonious root distance model is proposed with only four parameters which is able to describe root growth patterns throughout all stages in the first 3 weeks of growth of Vicia faba measured with X-ray computed tomography.
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Human–vegetation interactions during the Holocene in North America

TL;DR: In this paper, the authors estimate the spatial correlation between continental-scale records of fossil pollen and archaeological radiocarbon data, and provide a detailed analysis of the spatiotemporal relationship between palaeo-populations and ten important North American pollen taxa.
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3D connectivity of eutectic Si as a key property defining strength of Al–Si alloys

TL;DR: In this article, the relationship between microstructure and mechanical behavior of the eutectic phase in hypoeutective Al-Si alloys is analyzed empirically using two experimental and thirteen synthetic microstructures.
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Stochastic Aspects of Mass Transport in Gas Diffusion Layers

TL;DR: In this article, a stochastic model describing the microstructure of paper-type GDL is combined with the Lattice-Boltzmann method (LBM) to simulate gas transport within the GDL micro-structure.
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Random geometric graphs for modelling the pore space of fibre-based materials

TL;DR: In this paper, a stochastic network model is developed to describe the 3D morphology of the pore space in fiber-based materials, where the vertex set is modelled by random point processes and the edges are put using tools from graph theory and Markov chain Monte Carlo simulation.