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ZHANG Ying-feng, MA Biao, FANG Jing, ZHANG Hai-ling, FAN Yu-heng. Fault diagnosis of power-shift steering transmission based on multiple outputs least squares support vector regression[J]. JOURNAL OF BEIJING INSTITUTE OF TECHNOLOGY, 2011, 20(2): 199-204.
Citation: ZHANG Ying-feng, MA Biao, FANG Jing, ZHANG Hai-ling, FAN Yu-heng. Fault diagnosis of power-shift steering transmission based on multiple outputs least squares support vector regression[J].JOURNAL OF BEIJING INSTITUTE OF TECHNOLOGY, 2011, 20(2): 199-204.

Fault diagnosis of power-shift steering transmission based on multiple outputs least squares support vector regression

  • Received Date:2010-06-29
  • A method of multiple outputs least squares support vector regression (LS-SVR) was developed and described in detail, with the radial basis function (RBF) as the kernel function. The method was applied to predict the future state of the power-shift steering transmission (PSST). A prediction model of PSST was gotten with multiple outputs LS-SVR. The model performance was greatly influenced by the penalty parameter γ and kernel parameter σ 2which were optimized using cross validation method. The training and prediction of the model were done with spectrometric oil analysis data. The predictive and actual values were compared and a fault in the second PSST was found. The research proved that this method had good accuracy in PSST fault prediction, and any possible problem in PSST could be found through a comparative analysis.
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