Systematic metacognitive reflection helps people discover far-sighted decision strategies: A process-tracing experiment. Judgment and Decision Making, (18):e15--, Cambridge University Press, 2023. [PUMA: planning myown modeling reflection cognition metacognition llis] URL
A geometry model of the porcine stomach featuring mucosa and muscle layer thicknesses. Journal of the Mechnical Behavior of Biomedical Materials, (142)105801June 2023. [PUMA: Stomach organ modeling inhomogeneity asymmetry wall FE-Simulation] URL
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Mental effort: One construct, many faces?. In Stephanie Denison, Michael Mack, Yang Xu, and Blair C. Armstrong (Eds.), Proceedings of the 42nd Annual Conference of the Cognitive Science Society, 1-2, Cognitive Science Society, 2020. [PUMA: myown modeling cognition mental effort] URL
Memory-related cognitive load effects in an interrupted learning task: A model-based explanation. Trends in Neuroscience and Education, 100139, Elsevier, 2020. [PUMA: myown memory modeling instruction cognition load learning]
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A model-based explanation of performance related changes in abstract stimulus-response learning. 52nd Annual Meeting of the Society for Mathematical Psychology. Program and Abstracts, 19--20, Society for Mathematical Psychology, Montreal, QB, 2019. [PUMA: myown modeling ACT-R cognition learning performance]
Cognitive modeling meets instructional design: Exploring Cognitive Load Theory with ACT-R. In Carolin Wienrich, Thorsten O. Zander, and Klaus Gramann (Eds.), Trends in Neuroergonomics. Proceedings of the 11th Berlin Workshop Human-Machine Systems, 190--193, Universitätsverlag der TU Berlin, Berlin, 2015. [PUMA: myown modeling ACT-R instruction cognition load learning]
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"I don’t need it!" – Modeling ad-induced interruption while using a Smartphone-app. CrossWorlds 2014: Theory, Development and Evaluation of Social Technology, 2014. [PUMA: myown modeling smartphone ACT-R interruptions]
Examining load-inducing factors in instructional design: An ACT-R approach. In David Reitter, and Frank Ritter (Eds.), Proceedings of the 14th International Conference on Cognitive Modeling (ICCM 2016), 223--224, University Park, PA, Penn State, 2016. [PUMA: myown modeling ACT-R instruction cognition load]
A dynamic process model for predicting workload in an air traffic controller task. In Glenn Gunzelmann, Andrew Howes, Thora Tenbrink, and Eddy Davelaar (Eds.), Proceedings of the 39th Annual Meeting of the Cognitive Science Society, 1224--1229, Cognitive Science Society, Austin, TX, 2017. [PUMA: myown modeling process workload prediction ATC] URL
"Special offer! Wanna buy a trout?" - Modeling user interruption and resumption strategies with ACT-R. Cognitive Processing, (15(Suppl.1)):S24, Springer Nature, 2014. [PUMA: myown modeling cognition interaction mobile]
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Modeling of Elastic-Flexible Cables with Time-Varying Length for Cable-Driven Parallel Robotsj. In Andreas Pott, and Tobias Bruckmann (Eds.), Proceedings of the Fourth International Conference on Cable-Driven Parallel Robots, Springer Switzerland, 2019. [PUMA: cable-driven modeling dynamics simulation cable-robot kinematics preprint multibody]