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  • Search: isPartOf:"Journal of Intelligent Manufacturing"
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Subject
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Machine learning 17 Reinforcement learning 10 Deep learning 7 Industry 4.0 6 Manufacturing 6 Production control 6 Artificial intelligence 5 Digital twin 5 Assembly 4 Process planning 4 Simheuristics 4 Artificial neural networks 3 Automated fiber placement 3 Continual learning 3 Deep reinforcement learning 3 Edge computing 3 Flaw detection 3 Image segmentation 3 Inline inspection 3 Metrics 3 Multi-task learning 3 Ontology 3 Production 3 Selective laser melting 3 Additive Manufacturing (AM) 2 Additive manufacturing 2 Anomaly Detection 2 Anomaly detection 2 Application allocation 2 Automated planning 2 Automatic simulation model generation 2 Automation 2 Business model prototyping 2 Collaboration 2 Computed Tomography (CT) 2 Computer vision 2 Control cabinet 2 Convolutional neural networks (CNN) 2 Crystal plasticity 2 Cutting and packing 2
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Online availability
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Free 87
Type of publication
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Article 87
Type of publication (narrower categories)
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Article 87
Language
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English 87
Author
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Reinhart, Gunther 5 Bergs, Thomas 4 Herrmann, Christoph 4 Iraki, Tarek 4 Kuhlenkötter, Bernd 4 Link, Norbert 4 Weyrich, Michael 4 Brysch, Marco 3 Dornheim, Johannes 3 Franke, Jörg 3 Helm, Dirk 3 Huber, Marco F. 3 Lanza, Gisela 3 Meisen, Tobias 3 Morand, Lukas 3 Niemietz, Philipp 3 Abdou, Kirolos 2 Abrass, Ahmad 2 Alp, Enes 2 Altenburg, Simon J. 2 Baechler, Andreas 2 Bahrami, Maryam 2 Becker, Marco 2 Biegel, Tobias 2 Bipp, Tanja 2 Bock, Frederic E. 2 Bordekar, Harsh 2 Bosse, Jan Philipp 2 Breese, Philipp P. 2 Bründl, Patrick 2 Cersullo, Nicola 2 Cruz Salazar, Luis Alberto 2 De Blasi, Stefano 2 Düe, Tim 2 Engels, Elmar 2 Eskandar, George 2 Fay, Alexander 2 Filz, Marc-André 2 Freitag, Michael 2 Gebauer, Daniel 2
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Published in...
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Journal of Intelligent Manufacturing 87
Source
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EconStor 87
Showing 1 - 10 of 87
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Managing product-inherent constraints with artificial intelligence: production control for time constraints in semiconductor manufacturing
May, Marvin Carl; Oberst, Jan; Lanza, Gisela - In: Journal of Intelligent Manufacturing 35 (2024) 8, pp. 4259-4276
Continuous product individualization and customization led to the advent of lot size one in production and ultimately to product-inherent uniqueness. As complexities in individualization and processes grow, production systems need to adapt to unique, product-inherent constraints by advancing...
Persistent link: https://www.econbiz.de/10015371252
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Case study on delivery time determination using a machine learning approach in small batch production companies
Rokoss, Alexander; Syberg, Marius; Tomidei, Laura; … - In: Journal of Intelligent Manufacturing 35 (2024) 8, pp. 3937-3958
Delivery times represent a key factor influencing the competitive advantage, as manufacturing companies strive for timely and reliable deliveries. As companies face multiple challenges involved with meeting established delivery dates, research on the accurate estimation of delivery dates has...
Persistent link: https://www.econbiz.de/10015371279
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Multi agent reinforcement learning for online layout planning and scheduling in flexible assembly systems
Kaven, Lea; Huke, Philipp; Göppert, Amon; Schmitt, … - In: Journal of Intelligent Manufacturing 35 (2024) 8, pp. 3917-3936
Manufacturing systems are undergoing systematic change facing the trade-off between the customer's needs and the economic and ecological pressure. Especially assembly systems must be more flexible due to many product generations or unpredictable material and demand fluctuations. As a solution...
Persistent link: https://www.econbiz.de/10015371298
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Vision based process monitoring in wire arc additive manufacturing (WAAM)
Franke, Jan; Heinrich, Florian; Reisch, Raven T. - In: Journal of Intelligent Manufacturing 36 (2024) 3, pp. 1711-1721
Abstract A stable welding process is crucial to obtain high quality parts in wire arc additive manufacturing. The complexity of the process makes it inherently unstable, which can cause various defects, resulting in poor geometric accuracy and material properties. This demands for in-process...
Persistent link: https://www.econbiz.de/10015410159
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Synthetic data generation using finite element method to pre-train an image segmentation model for defect detection using infrared thermography
Pareek, Kaushal Arun; May, Daniel; Meszmer, Peter; Ras, … - In: Journal of Intelligent Manufacturing 36 (2024) 3, pp. 1879-1905
Abstract The vision of a deep learning-empowered non-destructive evaluation technique aligns perfectly with the goal of zero-defect manufacturing, enabling manufacturers to detect and repair defects actively. However, the dearth of data in manufacturing is one of the biggest obstacles to...
Persistent link: https://www.econbiz.de/10015410170
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Systematic comparison of software agents and Digital Twins: differences, similarities, and synergies in industrial production
Reinpold, Lasse M.; Wagner, Lukas P.; Gehlhoff, Felix; … - In: Journal of Intelligent Manufacturing 36 (2024) 2, pp. 765-800
To achieve a highly agile and flexible production, a transformational shift is envisioned whereby industrial production systems evolve to be more decentralized, interconnected, and intelligent. Within this vision, production assets collaborate with each other, exhibiting a high degree of...
Persistent link: https://www.econbiz.de/10015408301
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Towards scalability for resource reconfiguration in robotic assembly line balancing problems using a modified genetic algorithm
Albus, Marcel; Hornek, Timothée; Kraus, Werner; Huber, … - In: Journal of Intelligent Manufacturing 36 (2024) 2, pp. 1175-1199
Assembly lines are still one of the most used manufacturing systems in modern-day production. Most research affects the building of new lines and, less frequently, the reconfiguration of existing lines. However, the first is insufficient to meet the reconfigurable production paradigm required by...
Persistent link: https://www.econbiz.de/10015408334
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Automatic model generation for material flow simulations of Third-Party Logistics
Steinbacher, Lennart M.; Düe, Tim; Veigt, Marius; … - In: Journal of Intelligent Manufacturing (2023), pp. 1-18
The use of Third-Party Logistics (TPL) is a common practice among manufacturing companies seeking to increase profitability. However, the tender process in selecting a TPL service provider can be challenging, requiring significant effort from both the tendering company and the service provider....
Persistent link: https://www.econbiz.de/10015191379
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SSMSPC: self-supervised multivariate statistical in-process control in discrete manufacturing processes
Biegel, Tobias; Helm, Patrick; Jourdan, Nicolas; … - In: Journal of Intelligent Manufacturing 35 (2023) 6, pp. 2671-2698
Self-supervised learning has demonstrated state-of-the-art performance on various anomaly detection tasks. Learning effective representations by solving a supervised pretext task with pseudo-labels generated from unlabeled data provides a promising concept for industrial downstream tasks such as...
Persistent link: https://www.econbiz.de/10015191619
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A two-stage RNN-based deep reinforcement learning approach for solving the parallel machine scheduling problem with due dates and family setups
Li, Funing; Lang, Sebastian; Hong, Bingyuan; Reggelin, … - In: Journal of Intelligent Manufacturing 35 (2023) 3, pp. 1107-1140
As an essential scheduling problem with several practical applications, the parallel machine scheduling problem (PMSP) with family setups constraints is difficult to solve and proven to be NP-hard. To this end, we present a deep reinforcement learning (DRL) approach to solve a PMSP considering...
Persistent link: https://www.econbiz.de/10015193603
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