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Conference Paper Ensemble Learning Algorithm-Based Air Leakage Detection Technology in Pneumatic Machines
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Authors
Donghyeok Kim, Jangkyum Kim, Yoon-Sik Yoo, Il-Woo Lee, Woo Yeon So, Ji Hoo Lee, Do yeon Kim
Issue Date
2024-11
Citation
International Conference on Consumer Electronics (ICCE) 2024 : Asia, pp.790-793
Language
English
Type
Conference Paper
DOI
https://dx.doi.org/10.1109/ICCE-Asia63397.2024.10773628
Abstract
The issue of air leakage in machines has occurred for a long time due to imbalances in compressed air supply and instability of pneumatic machines. As a solution to this problem, real-time monitoring and control methods have been proposed to address the air leakage issue. However, such solutions result in monetary loss due to the need to stop equipment operation. In addition, conventional solutions focus on post-processing, which has the limitation of not being able to maintain the operational efficiency of the system. To solve the air leakage issue without decreasing machine efficiency, this paper proposes a method to detect air leakage several minutes in advance using various IoT sensor data collected from the machine. Using the proposed method, it is confirmed that it is possible to detect air leakage several minutes in advance with at least 90% accuracy.
KSP Keywords
Air leakage, Air supply, Data collected, Detection technology, Ensemble learning algorithm, Leakage detection, Long time, Monetary loss, Monitoring and Control, Operational efficiency, Post-Processing