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ICNSC
2007
IEEE

Combined Support Vector Novelty Detection for Multi-channel Combustion Data

13 years 11 months ago
Combined Support Vector Novelty Detection for Multi-channel Combustion Data
— Multi-channel combustion data, consisting of gas pressure and two combustion chamber luminosity measurements, are investigated in the prediction of combustion instability. Wavelet analysis is used for feature extraction. A SVM approach is applied for novelty detection and the construction of a model of normal system operation. Novelty scores generated by classifiers from different channels are combined to give a final decision of data novelty. We compare four novelty score combination mechanisms, and illustrate their complementary relationship in assessing data novelty.
Lei A. Clifton, Hujun Yin, David A. Clifton, Yang
Added 03 Jun 2010
Updated 03 Jun 2010
Type Conference
Year 2007
Where ICNSC
Authors Lei A. Clifton, Hujun Yin, David A. Clifton, Yang Zhang
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