...
首页> 外文期刊>Materials science & engineering >Optimization of 3D network topology for bioinspired design of stiff and lightweight bone-like structures
【24h】

Optimization of 3D network topology for bioinspired design of stiff and lightweight bone-like structures

机译:优化刚性轻质骨质结构的生物悬浮设计3D网络拓扑结构

获取原文
获取原文并翻译 | 示例
   

获取外文期刊封面封底 >>

       

摘要

A truly bioinspired approach to design optimization should follow the energetically favorable natural paradigm of ?minimum inventory with maximum diversity?. This study was inspired by constructive regression of trabecular bone ? a natural process of network connectivity optimization occurring early in skeletal development. During trabecular network optimization, the original excessively connected network undergoes incremental pruning of redundant elements, resulting in a functional and adaptable structure operating at lowest metabolic cost. We have recapitulated this biological network topology optimization algorithm by first designing in silico an excessively connected network in which elements are dimension-independent linear connections among nodes. Based on bioinspired regression principles, least-loaded connections were iteratively pruned upon simulated loading. Evolved networks were produced along this optimization trajectory when pre-set convergence criteria were met. These biomimetic networks were compared to each other, and to the reference network derived from mature trabecular bone. Our results replicated the natural network optimization algorithm in uniaxial compressive loading. However, following triaxial loading, the optimization algorithm resulted in lattice networks that were more stretch-dominated than the reference network, and more capable of uniform load distribution. As assessed by 3D printing and mechanical testing, our heuristic network optimization procedure opens new possibilities for parametric design.
机译:真正的BioInspired设计优化方法应遵循能量有利的自然范式?最小库存的最大库存最大程度?这项研究受到小梁骨的建设性回归的启发?骨骼发育早期发生网络连接优化的自然过程。在短边行程优化期间,原始过度连接的网络经历冗余元件的增量灌浆,导致以最低代谢成本运行的功能和适应性结构。我们通过在Silico中首次设计了一个过多连接的网络来重新安装这种生物网络拓扑优化算法,其中元素是节点之间的尺寸无关的线性连接。基于BioInspired回归原理,在模拟载荷时迭代地修剪最少加载的连接。当满足预先设置的收敛标准时,沿着这种优化轨迹产生了进化的网络。将这些仿生网络彼此进行比较,并达到源自成熟的小梁骨的参考网络。我们的结果在单轴压缩负载中复制了自然网络优化算法。然而,在三轴加载之后,优化算法导致格子网络比参考网络更加拉伸,更能力均匀负载分布。由于3D打印和机械测试评估,我们的启发式网络优化过程为参数设计开辟了新的可能性。

著录项

相似文献

  • 外文文献
  • 中文文献
  • 专利
获取原文

客服邮箱:kefu@zhangqiaokeyan.com

京公网安备:11010802029741号 ICP备案号:京ICP备15016152号-6 六维联合信息科技 (北京) 有限公司©版权所有
  • 客服微信

  • 服务号