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Mechanical transmission of rotational motion between molecular-scale gears
(Technische Universität Dresden, 2019)
Benchmark analysis of synthetical images - source code and example DEM data
(Institut für GeotechnikTechnische Universität Dresden, 2018)
These files serve as the basis for a benchmark study on the image analysis to extract contact fabric from x-ray tomographies of granular materials.
They are based on the python package "spam": The Software for the Practical ...
Benchmark analysis of synthetical images - (updated) source code and example DEM data
(Technische Universität Dresden, 2019)
These files serve as the basis for a benchmark study on the image analysis to extract contact fabric from x-ray tomographies of granular materials. They are based on the python package "spam": The Software for the Practical ...
Jupyter notebook code and example file for the evaluation of XRR data via FFT
(Technische Universität DresdenIFW Dresden, 2020)
This is supplementary information to the publication: "Fast fourier transform and multi-Gaussian fitting of XRR data to determine the thickness of ALD grown thin films within the initial growth regime"
Computed tomography data of different resolution of expanded polypropylene foams of different density
(Technische Universität DresdenInstitute of Lightweight Engineering and Polymer Technology - ILK, 2022)
In this work, the morphology of three EPP bead foams with closed cells and different densities is studied using x-ray computed tomography. The specimens of 10 mm diameter and 10 mm length were cut from steam-chest-molded ...
Python source code, text corpora and automatically generated datasets for Machine Learning
(Technische Universität Dresden, 2023)
This is supplementary information to the report: "Entwicklung eines Input-Algorithmus zur Erzeugung von Lerndatensätzen für Maschinelles Lernen mittels Natural Language Recognition"