INVESTIGATION OF REACTOR CONDITION MONITORING AND SINGULARITY DETECTION VIA WAVELET TRANSFORM AND DE-NOISING

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Wavelet theory was applied to detect a singularity in a reactor power signal. Compared to Fourier transform, wavelet transform has localization properties in space and frequency. Therefore, using wavelet transform after de-noising, singular points can easily be found. To test this theory, reactor power signals were generated using the HANARO (a Korean multi-purpose research reactor) dynamics model consisting of 39 nonlinear differential equations contaminated with Gaussian noise. Wavelet transform decomposition and de-noising procedures were applied to these signals. It was possible to detect singular events such as a sudden reactivity change and abrupt intrinsic property changes. Thus, this method could be profitably utilized in a real-time system for automatic event recognition (e.g., reactor condition monitoring).
Publisher
Korean Nuclear Society
Issue Date
2007-06
Keywords

De-noising by Thresholding Algorithm; Singularity Detection; Wavelet Transform; HANARO Research Reactor

Citation

Nuclear Engineering and Technology, Vol.39, No.3, pp.221-230

ISSN
1738-5733
URI
http://hdl.handle.net/10203/7165
Link
http://img.kisti.re.kr/view.jsp?db=JAKO&cn=JAKO200724737439357
Appears in Collection
NE-Journal Papers(저널논문)
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