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김남훈

Kim, Namhun
UNIST Computer-Integrated Manufacturing Lab.
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Deep active-learning based model-synchronization of digital manufacturing stations using human-in-the-loop simulation

Author(s)
Steed, Clint AlexKim, Namhun
Issued Date
2023-10
DOI
10.1016/j.jmsy.2023.08.012
URI
https://scholarworks.unist.ac.kr/handle/201301/65293
Citation
JOURNAL OF MANUFACTURING SYSTEMS, v.70, pp.436 - 450
Abstract
The effective and accurate modeling of human performance is one of the key technologies in virtual/smart manufacturing systems. However, a significant challenge lies in acquiring sufficient data for such modeling. Virtual Reality (VR) emerges as a promising solution, making human manufacturing experiments more practical and accessible. In this paper, we present a novel framework that efficiently models human assembly duration by leveraging VR to prototype data-acquisition systems for assembly tasks. Central to the framework is an active learning model, which intelligently selects experimental conditions to yield the most informative results, effectively reducing the number of experiments required. As a result, the system demands fewer experimental trials and operates on an automated basis. In VR experiments involving throughput rate, the active model significantly reduces the data requirement, thereby expediting the experiment and modeling process. While this framework demonstrates remarkable efficiency, it does exhibit sensitivity to non-constant noise and may necessitate prior data from similar assembly tasks to identify high-noise. Notably, this proposed method extends beyond manufacturing, allowing the quick generation of human performance models in virtual systems and enhancing experiment scalability across various fields. With its potential to revolutionize human performance modeling, our framework represents a promising avenue for advancing virtual/smart manufacturing systems and other related applications.
Publisher
Elsevier BV
ISSN
0278-6125
Keyword (Author)
Human-centric manufacturingDigital twinVirtual reality (VR)AI and machine learningVirtual manufacturingDigital transformation
Keyword
VIRTUAL-REALITYFATIGUEPREDICTION

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