A fault prediction method based on characteristic quantity optimization and a wavelet kernel function LSSVM
A technology of wavelet kernel function and fault prediction, which is applied in genetic models, character and pattern recognition, instruments, etc., to achieve the effects of improving accuracy, ensuring safe and stable operation, and realizing effectiveness and simplicity
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[0128] This example uses 118 sets of IEC TC 10 fault data for testing, because to some extent the types of transformer faults can be divided into low energy discharge (L-D), high energy discharge (H-D), medium and low temperature overheating (L-T), high temperature overheating (H-T) and Normal state (N-C), the data are shown in Table 1.
[0129] Table 1 Transformer fault samples
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[0131] Due to the increase of aging time of oil-immersed transformers, the transformer insulating oil and insulating paper (board) will decompose and produce gases such as H2, CH4, C2H2, C2H4, C2H6, CO and CO2. DGA with 118 sets of IEC TC 10 fault data is preferred feature quantities, optimize them 100 times, and finally select a set of optimal feature quantities. The concentration ratios of the 28 gases are shown in Table 2.
[0132] Table 2 Dissolved gas ratio in oil
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[0135] The collected 118 sets of DGA data were normalized and preprocessed to obtain the nor...
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