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Fault Diagnosis for Agitator Driving System in a High Temperature Reduction Reactor  

Park Gee Young (Korea Atomic Energy Research Institute)
Hong Dong Hee (Korea Atomic Energy Research Institute)
Jung Jae Hoo (Korea Atomic Energy Research Institute)
Kim Young Hwan (Korea Atomic Energy Research Institute)
Jin Jae Hyun (Korea Atomic Energy Research Institute)
Yoon Ji Sup (Korea Atomic Energy Research Institute)
Publication Information
Nuclear Engineering and Technology / v.35, no.5, 2003 , pp. 454-470 More about this Journal
Abstract
In this paper, a preliminary study for development of a fault diagnosis is presented for monitoring and diagnosing faults in the agitator driving system of a high temperature reduction reactor. In order to identify a fault occurrence and classify the fault cause, vibration signals measured by accelerometers on the outer shroud of the agitator driving system are firstly decomposed by wavelet transform (WT) and the features corresponding to each fault type are extracted. For the diagnosis, the fuzzy ARTMAP is employed and thereby, based on the features extracted from the WT, the robust fault classifier can be implemented with a very short training time - a single training epoch and a single learning iteration is sufficient for training the fault classifier. The test results demonstrate satisfactory classification for the faults pre-categorized from considerations of possible occurrence during experiments on a small-scale reduction reactor.
Keywords
agitator driving system; vibration signals; wavelet transform; feature extraction; fuzzy ARTMAP;
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