MULTI-CLASS FAULT DIAGNOSIS BASED ON SUPPORT VECTOR MACHINES WITH SEQUENCED BINARY TREE ARCHTECTURE

YUAN Sheng-fa CHU Fu-lei

Journal of Vibration and Shock ›› 2009, Vol. 28 ›› Issue (3) : 51-54.

PDF(1364 KB)
PDF(1364 KB)
Journal of Vibration and Shock ›› 2009, Vol. 28 ›› Issue (3) : 51-54.
论文

MULTI-CLASS FAULT DIAGNOSIS BASED ON SUPPORT VECTOR MACHINES WITH SEQUENCED BINARY TREE ARCHTECTURE

  • YUAN Sheng-fa1 CHU Fu-lei2
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Abstract

If the classifiers of support vector machines with binary tree architecture are arrayed randomly in the binary tree, their performance is not the best. A sequenced method in consideration of the sample range is proposed to rationally array the classifiers of support vector machines with binary tree architecture. A sample distribution radius and a sample distribution distance are introduced to estimate the sample range of all classes in the high-dimension characteristic space. The classes with bigger sample range are classified earlier in the higher nodal point of the binary tree architecture, and are given wider classificatory areas in the characteristic space. The experiment of multi-class faults diagnosis of the rotor shows that the method distinctly improves the fault recognition accuracy, the diagnosis speed and the generalization, and it is more suitable for practical application of multi-class fault diagnosis.

Key words

faults diagnosis / support vector machines / multi-class support vector machines / binary tree

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YUAN Sheng-fa CHU Fu-lei. MULTI-CLASS FAULT DIAGNOSIS BASED ON SUPPORT VECTOR MACHINES WITH SEQUENCED BINARY TREE ARCHTECTURE[J]. Journal of Vibration and Shock, 2009, 28(3): 51-54
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