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Ali Riza Durmaz
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A deep learning approach for complex microstructure inference
AR Durmaz, M Müller, B Lei, A Thomas, D Britz, EA Holm, C Eberl, ...
Nature communications 12 (1), 6272, 2021
482021
Automated quantitative analyses of fatigue-induced surface damage by deep learning
A Thomas, AR Durmaz, T Straub, C Eberl
Materials 13 (15), 3298, 2020
202020
Addressing materials’ microstructure diversity using transfer learning
A Goetz, AR Durmaz, M Müller, A Thomas, D Britz, P Kerfriden, C Eberl
npj Computational Materials 8 (1), 27, 2022
152022
Fatigue lifetime prediction with a validated micromechanical short crack model for the ferritic steel EN 1.4003
E Natkowski, AR Durmaz, P Sonnweber-Ribic, S Münstermann
International Journal of Fatigue 152, 106418, 2021
142021
Efficient experimental and data-centered workflow for microstructure-based fatigue data: towards a data basis for predictive AI models
AR Durmaz, N Hadzic, T Straub, C Eberl, P Gumbsch
Experimental Mechanics 61, 1489-1502, 2021
112021
Micromechanical fatigue experiments for validation of microstructure-sensitive fatigue simulation models
AR Durmaz, E Natkowski, N Arnaudov, P Sonnweber-Ribic, S Weihe, ...
International Journal of Fatigue 160, 106824, 2022
92022
Optically pumped magnetometer measuring fatigue-induced damage in steel
PA Koss, AR Durmaz, A Blug, G Laskin, OS Pawar, K Thiemann, A Bertz, ...
Applied Sciences 12 (3), 1329, 2022
92022
Addressing materials’ microstructure diversity using transfer learning. npj Comput
A Goetz, AR Durmaz, M Muller, A Thomas, D Britz, P Kerfriden
Mater 8 (1), 27, 2022
72022
Materials fatigue prediction using graph neural networks on microstructure representations
A Thomas, AR Durmaz, M Alam, P Gumbsch, H Sack, C Eberl
Scientific Reports 13 (1), 12562, 2023
52023
Efficient reconstruction of prior austenite grains in steel from etched light optical micrographs using deep learning and annotations from correlative microscopy
BI Bachmann, M Müller, D Britz, AR Durmaz, M Ackermann, O Shchyglo, ...
Frontiers in Materials 9, 1033505, 2022
52022
Using optically pumped magnetometers to identify initial damage in bulk material during fatigue testing
K Thiemann, A Blug, P Koss, A Durmaz, G Laskin, A Bertz, F Kühnemann, ...
Quantum Technologies 2022 12133, 83-89, 2022
32022
Thermal characterization of epitaxial grown polycrystalline silicon
R Liebchen, O Breitschädel, AR Durmaz, A Griesinger
Thin Solid Films 606, 99-105, 2016
22016
Microstructure quality control of steels using deep learning
AR Durmaz, ST Potu, D Romich, JJ Möller, R Nützel
Frontiers in Materials 10, 1222456, 2023
12023
Microstructural damage dataset (pytorch geometric dataset)
AR Durmaz, A Thomas
12023
Measuring magneto-mechanical hysteresis during fatigue testing using optically pumped magnetometers
A Blug, PA Koss, AR Durmaz, G Laskin, A Bertz, F Kühnemann, T Straub
12021
Experimental and Computational Micromechanical Fatigue Damage Initiation Data
AR Durmaz, E Natkowski
12021
MaterioMiner-An ontology-based text mining dataset for extraction of process-structure-property entities
AR Durmaz, A Thomas, L Mishra, R Niranjan Murthy, T Straub
2024
Influence of Transformation Temperature on the High‐Cycle Fatigue Performance of Carbide‐Bearing and Carbide‐Free Bainite
O Gulbay, M Ackermann, A Gramlich, AR Durmaz, I Steinbach, U Krupp
steel research international 94 (12), 2300238, 2023
2023
Author Correction: Materials fatigue prediction using graph neural networks on microstructure representations
A Thomas, AR Durmaz, M Alam, P Gumbsch, H Sack, C Eberl
Scientific Reports 13 (1), 13598, 2023
2023
A6. 4-Diamond-Based Magnetic Widefield-Microscopy of Domain Patterns in Electric Steel
S Philipp, M Feuerhelm, A Durmaz, T Straub, N Mathes, X Vidal, S Deldar, ...
Lectures, 75-76, 2023
2023
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Articles 1–20