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http://dx.doi.org/10.17661/jkiiect.2022.15.1.69

Power Plant Turbine Blade Anomaly Detection using Deep Neural Network-based Object Detection  

Yu, Jongmin (KAIST Institute for IT Convergence)
Lee, Jangwon (KAIST Institute for IT Convergence)
Oh, Hyeontaek (KAIST Institute for IT Convergence)
Park, Sang-Ki (PowerIns. Inc. Corp.)
Yang, Jinhong (Department of Healthcare IT, INJE Univ. & KAIST Institute for IT Convergence)
Publication Information
The Journal of Korea Institute of Information, Electronics, and Communication Technology / v.15, no.1, 2022 , pp. 69-75 More about this Journal
Abstract
Due to the increase in the demand for anomaly detection according to the ageing of power generation facilities, the need for developing an anomaly detection method that can provide high-reliability turbine blade anomaly detection performance has been continuously raised. Additionally, the false detection results caused by a human error accelerates the increase of the need. In this paper, we propose an anomaly detection technique for turbine blades in power plants using deep neural networks. Experimental results prove that the proposed technique achieves stable anomaly detection performance while minimizing human factor intervention.
Keywords
Power plant; turbine blade anomaly detection; deep neural network; object detection;
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