Nixdorf, S., Zhang, M., Ansari, F., & Grosse, E. H. (2022). Reciprocal Learning in Production and Logistics. In 10th IFAC Conference on Manufacturing Modelling, Management and Control MIM 2022 (pp. 854–859). International Federation of Automatic Control ; Elsevier. https://doi.org/10.1016/j.ifacol.2022.09.519
E330-02-1 - Forschungsgruppe Smart and Knowledge Based Maintenance
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Published in:
10th IFAC Conference on Manufacturing Modelling, Management and Control MIM 2022
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Volume:
55
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Date (published):
2022
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Event name:
10th IFAC Conference on Manufacturing Modelling, Management and Control MIM 2022
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Event date:
22-Jun-2022 - 24-Jun-2022
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Event place:
Nantes, France
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Number of Pages:
6
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Publisher:
International Federation of Automatic Control ; Elsevier
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Peer reviewed:
Yes
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Keywords:
Human-Machine Symbiosis; Industry 4.0; Reciprocal Learning; Work-Based Learning
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Abstract:
Integration of AI technologies and learnable systems in production and logistics transforms the concepts of work organization and task assignments to human and machine agents. Thus, the question arises of what intelligent machines and human workers may be able to achieve as teammates. One answer may be guiding and training the workforce at the workplace to cope with emerging skill mismatches, emphasized by concepts of work-based learning. The extension of cyber-physical production systems towards becoming human-centered and social systems enabling human-machine interaction, creates opportunities for human-machine symbiosis by complementing each other's strengths. In this way, the concept of “Reciprocal Learning” (RL) between humans and intelligent machines has emerged, which is still rather ambiguous and lacks a profound knowledge base. Especially in production and logistics, literature is fragmented. Hence, the objective of this paper is to conduct a systematic literature review to elicit and cluster the knowledge base in RL represented by adjacent interdisciplinary fields of research, such as social and computer sciences. This work contributes to the literature by developing a comprehensive knowledge base on the concept of RL enabling to pursue future research directions towards the realization of human-machine symbiosis through RL in production and logistics.