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Nonlinear Inertia Classification Model and Application

Author

Listed:
  • Mei Wang
  • Pai Wang
  • Jzau-Sheng Lin
  • Xiaowei Li
  • Xuebin Qin

Abstract

Classification model of support vector machine (SVM) overcomes the problem of a big number of samples. But the kernel parameter and the punishment factor have great influence on the quality of SVM model. Particle swarm optimization (PSO) is an evolutionary search algorithm based on the swarm intelligence, which is suitable for parameter optimization. Accordingly, a nonlinear inertia convergence classification model (NICCM) is proposed after the nonlinear inertia convergence (NICPSO) is developed in this paper. The velocity of NICPSO is firstly defined as the weighted velocity of the inertia PSO, and the inertia factor is selected to be a nonlinear function. NICPSO is used to optimize the kernel parameter and a punishment factor of SVM. Then, NICCM classifier is trained by using the optical punishment factor and the optical kernel parameter that comes from the optimal particle. Finally, NICCM is applied to the classification of the normal state and fault states of online power cable. It is experimentally proved that the iteration number for the proposed NICPSO to reach the optimal position decreases from 15 to 5 compared with PSO; the training duration is decreased by 0.0052 s and the recognition precision is increased by 4.12% compared with SVM.

Suggested Citation

  • Mei Wang & Pai Wang & Jzau-Sheng Lin & Xiaowei Li & Xuebin Qin, 2014. "Nonlinear Inertia Classification Model and Application," Mathematical Problems in Engineering, Hindawi, vol. 2014, pages 1-9, May.
  • Handle: RePEc:hin:jnlmpe:987686
    DOI: 10.1155/2014/987686
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