Volume 34 Issue 02
Feb.  2008
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Chen Weiwei, Sun Lingyu, Zhang Guangyue, et al. Optimization of energy absorption in high speed fluid-driven mechanism[J]. Journal of Beijing University of Aeronautics and Astronautics, 2008, 34(02): 206-209. (in Chinese)
Citation: Chen Weiwei, Sun Lingyu, Zhang Guangyue, et al. Optimization of energy absorption in high speed fluid-driven mechanism[J]. Journal of Beijing University of Aeronautics and Astronautics, 2008, 34(02): 206-209. (in Chinese)

Optimization of energy absorption in high speed fluid-driven mechanism

  • Received Date: 01 Mar 2007
  • Publish Date: 29 Feb 2008
  • For a high speed moving mechanism driven by fluid, abrupt stop resulted from barriers will lead to its large deformation, even fracture. To achieve optimum structural style and parametric matching of buffer members, nine test samples were selected out of twenty-seven design styles through orthogonal experiment method in advance. Their high-speed moving and impacting process were simulated by nonlinear finite element method(FEM) considering fluid structure interaction. On the basis of the above results, a modified error back-propagation(BP) network method was applied to train these samples, and obtained the nonlinear mapping relation between parameters of tubes for energy absorption and strain energy of crucial parts. The optimum structural parameters of buffer tube were determined, at the same time, the efficiency of schemes selection was improved obviously.

     

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