Approaches for the prediction of lead times in an engineer to order environment—A systematic review P Burggräf, J Wagner, B Koke, F Steinberg IEEE Access 8, 142434-142445, 2020 | 31 | 2020 |
Trust in artificial intelligence within production management–an exploration of antecedents T Saßmannshausen, P Burggräf, J Wagner, M Hassenzahl, T Heupel, ... Ergonomics 64 (10), 1333-1350, 2021 | 21 | 2021 |
Predictive analytics in quality assurance for assembly processes: lessons learned from a case study at an industry 4.0 demonstration cell P Burggräf, J Wagner, B Heinbach, F Steinberg, L Schmallenbach, ... Procedia CIRP 104, 641-646, 2021 | 9 | 2021 |
Machine learning-based prediction of missing components for assembly–a case study at an engineer-to-order manufacturer P Burggräf, J Wagner, B Heinbach, F Steinberg IEEE Access, 2021 | 8 | 2021 |
A novel machine learning model for predicting late supplier deliveries of low-volume-high-variety products with application in a German machinery industry F Steinberg, P Burggräf, J Wagner, B Heinbach, T Saßmannshausen, ... Supply Chain Analytics 1, 100003, 2023 | 4 | 2023 |
Life cycle assessment for adaptive remanufacturing: incorporating ecological considerations into the planning of maintenance activities–a case study in the German heavy … P Burggräf, J Wagner, F Steinberg, B Heinbach, M Wigger, ... Procedia CIRP 105, 320-325, 2022 | 4 | 2022 |
Impact of material data in assembly delay prediction—a machine learning-based case study in machinery industry F Steinberg, P Burggaef, J Wagner, B Heinbach The International Journal of Advanced Manufacturing Technology 120 (1), 1333 …, 2022 | 3 | 2022 |
Reinforcement learning for process time optimization in an assembly process utilizing an industry 4.0 demonstration cell P Burggräf, F Steinberg, B Heinbach, M Bamberg Procedia CIRP 107, 1095-1100, 2022 | 3 | 2022 |
Smart Containers—Enabler for More Sustainability in Food Industries? P Burggräf, F Steinberg, T Adlon, P Nettesheim, H Kahmann, L Wu Congress of the German Academic Association for Production Technology, 416-426, 2022 | 2 | 2022 |
Bridging data gaps in the food industry–sensor-equipped metal food containers as an enabler for sustainability P Burggräf, F Steinberg, T Adlon, P Nettesheim, J Salzwedel ESSN: 2701-6277, 687-697, 2023 | 1 | 2023 |
Machine learning implementation in small and medium-sized enterprises: insights and recommendations from a quantitative study P Burggräf, F Steinberg, CR Sauer, P Nettesheim Production Engineering, 1-14, 2024 | | 2024 |
Towards a Sustainable Industrial Society–Critical Capabilities for the Transformation to a Circular Economy in Manufacturing Companies P Burggräf, F Steinberg, A Becher, CR Sauer, M Wigger Congress of the German Academic Association for Production Technology, 304-315, 2024 | | 2024 |
Transforming Food Production: Smart Containers for Sustainable and Transparent Food Supply Chains P Burggräf, T Adlon, F Steinberg, J Salzwedel, P Nettesheim, ... IFIP International Conference on Advances in Production Management Systems …, 2023 | | 2023 |
Deciding on when to change–a benchmark of metaheuristic algorithms for timing engineering changes P Burggräf, F Steinberg, T Weißer, O Radisic-Aberger International Journal of Production Research, 1-21, 2023 | | 2023 |
Boosting the Circular Manufacturing of the Sustainable Paper Industry–A First Approach to Recycle Paper from Unexploited Sources such as Lightweight Packaging, Residual and … P Burggräf, F Steinberg, CR Sauer, P Nettesheim, M Wigger, A Becher, ... Procedia CIRP 120, 505-510, 2023 | | 2023 |
Cyber-Physical Optimization of Production Processes Using Two AIs: A Robot-Guided MAG Welding Use-Case P Burggräf, F Steinberg, P Nettesheim, M Vedder, G Kolter Procedia CIRP 118, 885-889, 2023 | | 2023 |
Machine learning-based prediction of missing components for assembly-a case study at an engineer-to-order manufacturer F Steinberg, P Burggräf, J Wagner, B Heinbach | | 2021 |
Supply Chain Analytics F Steinberg, P Burggräf, J Wagner, B Heinbach, T Saßmannshausen, ... | | |