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Soft Matter
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November 17, 2017
Shape-dependent effective diffusivity in packings of hard cubes and cuboids compared with spheres and ellipsoids
Magnus Röding
Scientific Reports
|
September 18, 2020
Predicting permeability via statistical learning on higher-order microstructural information
Magnus Röding, Zheng Ma, Salvatore Torquato
Journal of Magnetic Resonance (San Diego, Calif. : 1997)
|
November 3, 2015
Gamma convolution models for self-diffusion coefficient distributions in PGSE NMR
Magnus Röding, Nathan H Williamson, Magnus Nydén
Scientific Reports
|
October 18, 2022
Inverse design of anisotropic spinodoid materials with prescribed diffusivity
Magnus Röding, Victor Wåhlstrand Skärström, Niklas Lorén
Journal of Magnetic Resonance (San Diego, Calif. : 1997)
|
April 27, 2016
The lognormal and gamma distribution models for estimating molecular weight distributions of polymers using PGSE NMR
Nathan H Williamson, Magnus Nydén, Magnus Röding
Ultramicroscopy
|
October 20, 2025
Simulation study of the performance of neural network-enhanced PACBED for characterizing atomic-scale deformations in 2D van der Waals materials
Andrew B Yankovich, Magnus Röding, Eva Olsson
Polymers
|
April 12, 2019
Carbon Nanotube Length Governs the Viscoelasticity and Permeability of Buckypaper
Zhiqiang Shen, Magnus Röding, Martin Kröger, et al.
Physical Review. E, Statistical, Nonlinear, and Soft Matter Physics
|
November 9, 2011
Measuring absolute number concentrations of nanoparticles using single-particle tracking
Magnus Röding, Hendrik Deschout, Kevin Braeckmans, et al.
Physical Review. E
|
July 15, 2016
Approximate Bayesian computation for estimating number concentrations of monodisperse nanoparticles in suspension by optical microscopy
Magnus Röding, Elisa Zagato, Katrien Remaut, et al.
Journal of Microscopy
|
November 28, 2020
DeepFRAP: Fast fluorescence recovery after photobleaching data analysis using deep neural networks
Victor Wåhlstrand Skärström, Annika Krona, Niklas Lorén, et al.
Page
of 4
Search research articles
Search
Showing results (1-10 of 33) with videos related to
Sort By:
Page
of 4
Soft Matter
|
November 17, 2017
Shape-dependent effective diffusivity in packings of hard cubes and cuboids compared with spheres and ellipsoids
Magnus Röding
Scientific Reports
|
September 18, 2020
Predicting permeability via statistical learning on higher-order microstructural information
Magnus Röding, Zheng Ma, Salvatore Torquato
Journal of Magnetic Resonance (San Diego, Calif. : 1997)
|
November 3, 2015
Gamma convolution models for self-diffusion coefficient distributions in PGSE NMR
Magnus Röding, Nathan H Williamson, Magnus Nydén
Scientific Reports
|
October 18, 2022
Inverse design of anisotropic spinodoid materials with prescribed diffusivity
Magnus Röding, Victor Wåhlstrand Skärström, Niklas Lorén
Journal of Magnetic Resonance (San Diego, Calif. : 1997)
|
April 27, 2016
The lognormal and gamma distribution models for estimating molecular weight distributions of polymers using PGSE NMR
Nathan H Williamson, Magnus Nydén, Magnus Röding
Ultramicroscopy
|
October 20, 2025
Simulation study of the performance of neural network-enhanced PACBED for characterizing atomic-scale deformations in 2D van der Waals materials
Andrew B Yankovich, Magnus Röding, Eva Olsson
Polymers
|
April 12, 2019
Carbon Nanotube Length Governs the Viscoelasticity and Permeability of Buckypaper
Zhiqiang Shen, Magnus Röding, Martin Kröger, et al.
Physical Review. E, Statistical, Nonlinear, and Soft Matter Physics
|
November 9, 2011
Measuring absolute number concentrations of nanoparticles using single-particle tracking
Magnus Röding, Hendrik Deschout, Kevin Braeckmans, et al.
Physical Review. E
|
July 15, 2016
Approximate Bayesian computation for estimating number concentrations of monodisperse nanoparticles in suspension by optical microscopy
Magnus Röding, Elisa Zagato, Katrien Remaut, et al.
Journal of Microscopy
|
November 28, 2020
DeepFRAP: Fast fluorescence recovery after photobleaching data analysis using deep neural networks
Victor Wåhlstrand Skärström, Annika Krona, Niklas Lorén, et al.
Page
of 4