Crashworthiness design and optimization of bamboo-inspired tube with gradient multi-cells

Jin Xing, Jieliang Zhao*, Qun Niu, Tianyu Zhang, Chenyang Zhang, Yuling Zhang, Wenzhong Wang, Shaoze Yan, Xiaonan Liu

*Corresponding author for this work

Research output: Contribution to journalArticlepeer-review

16 Citations (Scopus)

Abstract

This study seeks to understand how bamboo maintains its stability while being lightweight and flexible in strong winds, with the aim of applying the findings to develop an engineering tube that mimics bamboo's unique structural properties. Initially, image processing revealed convex distribution along the radial direction of the fiber sheath area between bamboo nodes, which was further analyzed to examine its impact on the bending properties of bamboo. Subsequently, a new bionic tube with gradient multi-cells (BTGCs) was introduced, and its crashworthiness was investigated using the Simplified Super Folding Element (SSFE) theory to establish a theoretical model. Additionally, the influence of the structural parameters of BTGCs on its crashworthiness under different loading angles was investigated in silico. The optimal basic design parameters were selected by using the complex proportional evaluation (COPRAS) method, and a Pareto front set of bionic design parameters and impact angles was obtained using artificial neural network (ANN) and non-dominated sorting genetic algorithm (NSGA-II). The results indicated that the optimized BTGCs demonstrated superior crashworthiness compared to conventional circular and bi-layer tubes with an equal mass. This study can serve as a reference for designing highly-efficient bionic tubes.

Original languageEnglish
Article number111034
JournalThin-Walled Structures
Volume191
DOIs
Publication statusPublished - Oct 2023

Keywords

  • Bamboo-inspired tube
  • Crashworthiness
  • Gradient multi-cells
  • Numerical simulations
  • Parameter optimization
  • Theoretical model

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