2019
DOI: 10.1007/978-3-030-38364-0_27
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Improvement of Production Layout in the Furniture Industry in Indonesia with the Concept of Group Technology

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Cited by 2 publications
(1 citation statement)
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“…Güven and Şimsir (2021) utilized fuzzy clustering and rank order clustering methods to create the part-machine matrix according to the production flow technique and grouped the parts and machines, which improved the productivity and reduced the cost. To optimize the production layout, Dianita et al (2020) applied the rank order clustering (ROC) and Hollier method to classify the machinery and process in the production layout, successfully reducing the total travel time and distance. The classification of solid wood furniture parts is complex, and the factors that affect their production and processing include the craft, size, tongue and groove structure, and bending degree.…”
Section: Application Of Multi-attribute Clustering Algorithmmentioning
confidence: 99%
“…Güven and Şimsir (2021) utilized fuzzy clustering and rank order clustering methods to create the part-machine matrix according to the production flow technique and grouped the parts and machines, which improved the productivity and reduced the cost. To optimize the production layout, Dianita et al (2020) applied the rank order clustering (ROC) and Hollier method to classify the machinery and process in the production layout, successfully reducing the total travel time and distance. The classification of solid wood furniture parts is complex, and the factors that affect their production and processing include the craft, size, tongue and groove structure, and bending degree.…”
Section: Application Of Multi-attribute Clustering Algorithmmentioning
confidence: 99%