Structural Parameters Optimization of Waveform Generator Based on LS-SVM and Simulated Annealing Algorithm

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Abstract:

For the structural design problem of waveform generator, selected diameter of rubber block, hardness and thickness of block 1 and block 2 as five design variables. Firstly, adopted orthogonal design method, and built initial sample data. Secondly, adopted LS-SVM to exercise the sample data, and selected regularization parameter and kernel function width of LS-SVM based on QPSO algorithm. Finally, optimized the structural parameters of waveform generator based on simulated annealing algorithm. The research provided a theoretic basis for the design of waveform generator.

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871-874

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December 2012

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© 2013 Trans Tech Publications Ltd. All Rights Reserved

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