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논문 기본 정보

자료유형
학술저널
저자정보
Hwa-Cho Yi (Yeungnam University) Jung-Whan Park (Yeungnam University) Myon Woong Park (Korea Institute of Science and Technology) Taek-Jun Nam (Yeungnam University)
저널정보
한국청정기술학회 청정기술 청정기술 제23권 제3호
발행연도
2017.9
수록면
248 - 255 (8page)

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초록· 키워드

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In dismantling factories for recycling, it is important to input actual working data to a personal computer (PC) in order to monitor the work results and related recycling rate of the inputs. This should be performed with a keyboard, a mouse, or other devices. But when a worker is working in the factory, it could be bothersome or time consuming to go to the PC. Especially, workers who works at dismantling factories have a generally low education level are scared to use a PC, which could be used as a pretext for not using the PC. In some cases, data input is performed by a worker after the day’s job. In this case, it could take additional time, the worker can make more mistakes, and the data could be unreliable. In this study, we developed a man-machine interface (MMI) device using a safety helmet. A joystick-like device, pushbuttons, and a radio frequency (RF) device for wireless communication is equipped in a safety helmet. This MMI device has functions similar to a PC mouse, and it has a long communication distance. RF is used because it consumes less battery power than Bluetooth. With this MMI device, workers need not go to a PC to input data or to control the PC, and they can control the PC from a long distance. The efficiency of PCs in a factory could be increased by using the developed MMI system, and workers at the dismantling factories could have less reluctance in using the PC.

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Abstract
1. Introduction
2. Requirements and Functional Analysis
3. System Components
4. System Overview
5. Operational Testing
6. Conclusions
References

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