Detail View
Continuous productivity improvement using ioe data for fault monitoring: An automotive parts production line case study
WEB OF SCIENCE
SCOPUS
- Title
- Continuous productivity improvement using ioe data for fault monitoring: An automotive parts production line case study
- DGIST Authors
- Won, Yuchang ; Kim, Seunghyeon ; Park, Kyung-Joon ; Eun, Yongsoon
- Issued Date
- 2021-11
- Citation
- Won, Yuchang. (2021-11). Continuous productivity improvement using ioe data for fault monitoring: An automotive parts production line case study. doi: 10.3390/s21217366
- Type
- Article
- Author Keywords
- Production systems engineering ; Smart factory ; Continuous productivity im-provement ; Fault monitoring data ; Internet of everything
- Keywords
- Manufacture ; Monitoring ; Automotive parts ; Case-studies ; Continuous improvements ; Continuous productivity im-provement ; Fault monitoring ; Fault monitoring data ; Internet of everything ; Production line ; Productivity improvements ; Smart factory ; Productivity
- ISSN
- 1424-8220
- Abstract
-
This paper presents a case study of continuous productivity improvement of an automotive parts production line using Internet of Everything (IoE) data for fault monitoring. Continuous productivity improvement denotes an iterative process of analyzing and updating the production line configuration for productivity improvement based on measured data. Analysis for continuous improvement of a production system requires a set of data (machine uptime, downtime, cycle-time) that are not typically monitored by a conventional fault monitoring system. Although productivity improvement is a critical aspect for a manufacturing site, not many production systems are equipped with a dedicated data recording system towards continuous improvement. In this paper, we study the problem of how to derive the dataset required for continuous improvement from the measurement by a conventional fault monitoring system. In particular, we provide a case study of an automotive parts production line. Based on the data measured by the existing fault monitoring system, we model the production system and derive the dataset required for continuous improvement. Our approach provides the expected amount of improvement to operation managers in a numerical manner to help them make a decision on whether they should modify the line configuration or not. © 2021 by the authors. Licensee MDPI, Basel, Switzerland.
더보기
- Publisher
- MDPI
File Downloads
공유
Related Researcher
- Park, Kyung-Joon박경준
-
Department of Electrical Engineering and Computer Science
Total Views & Downloads
???jsp.display-item.statistics.view???: , ???jsp.display-item.statistics.download???:
