31 / 2015-04-26 13:44:20
Prediction & factor analysis for friction and wear performance of brake disk
brake,wear,friction,2624,artificial neural network,principal component analysis
Final Paper
ZHOU BIN / Air Force Engineering University
LI LIN / Air Force Engineering University
CHANG FEI / Air Force Engineering University
YIN JIE / Air Force Engineering University
LI KUN / Air Force Engineering University
In order to obtain friction and wear performance of different brakes in different conditions with less test data, BPANN model has been established by some physical parameters and working conditions to train and predict friction and wear performance of carbon brake disk. The predicted values for training and investigating are accuracy in comparison with the real test data, and factors to influence brake performance have been quantitatively analyzed by PCA. The result shows that heat-sinking capability and working condition might be the primary cause for brake friction and wear difference, and the methods above could be applied to friction and wear performance prediction and factor analysis in engineering practice.
Important Date
  • Conference Date

    Jun 26

    2015

    to

    Jun 27

    2015

  • May 25 2015

    Abstract Submission Deadline

  • May 25 2015

    Early Bird Registration

  • Jun 05 2015

    Draft paper submission deadline

  • Jun 27 2015

    Registration deadline

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