규칙기반과 딥러닝을 동시에 활용한 앙상블 회전체 이상진단Ensemble Method using Rule-based and Deep-learningAlgorithms for Rotating-machine Diagnostics

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Unlike the major equipment used in power plants, auxiliary equipment usually does not possess a real-time system to analyze the machine condition. Therefore, detecting the fault of such auxiliary equipment in advance is difficult. Thus, the diagnosis of auxiliary equipment at a less cost is important for minimizing the downtime due to the fault of the equipment. In this paper, we introduce a diagnosis method for auxiliary equipment in power plants using rule-based and deep-learning algorithms. First, we calculate the probability of cause of a fault from current symptoms by using the rule-based algorithm. The rule used in this algorithm is established based on expert experience. We then conduct orbit detection using a convolution neural network. This algorithm self-learns the filter to classify orbit images as normal, rubbing, and unbalanced. The weakness of the deep-learning algorithm can be compensated by combining the results of the aforementioned methods.
Publisher
한국소음진동공학회
Issue Date
2020-04
Language
Korean
Citation

한국소음진동공학회논문집, v.30, no.2, pp.129 - 135

ISSN
1598-2785
URI
http://hdl.handle.net/10203/312589
Appears in Collection
ME-Journal Papers(저널논문)
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