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Multi-objective optimal design of steel trusses in unstructured design domains

机译:非结构设计领域的钢桁架多目标优化设计

摘要

Researchers have applied genetic algorithms (GAs) and other heuristic optimization methods to perform truss optimization in recent years. Although a substantial amount of research has been performed on the optimization of truss member sizes, nodal coordinates, and member connections, research that seeks to simultaneously optimize the topology, geometry, and member sizes of trusses is still uncommon. In addition, most of the previous research is focused on the problem domains that are limited to a structured domain, which is defined by a fixed number of nodes, members, load locations, and load magnitudes. The objective of this research is to develop a computational method that can design efficient roof truss systems. This method provides an engineer with a set of near-optimal trusses for a specific unstructured problem domain. The unstructured domain only prescribes the magnitude of loading and the support locations. No other structural information concerning the number or locations of nodes and the connectivity of members is defined. An implicit redundant representation (IRR) GA (Raich 1999) is used in this research to evolve a diverse set of near-optimal truss designs within the specified domain that have varying topology, geometry, and sizes. IRR GA allows a Pareto-optimal set to be identified within a single trial. These truss designs reflect the tradeoffs that occur between the multiple objectives optimized. Finally, the obtained Pareto-optimal curve will be used to provide design engineers with a range of highly fit conceptual designs from which they can select their final design. The quality of the designs obtained by the proposed multi-objective IRR GA method will be evaluated by comparing the trusses evolved with trusses that were optimized using local perturbation methods and by trusses designed by engineers using a trial and error approach. The results presented show that the method developed is very effective in simultaneously optimizing the topology, geometry, and size of trusses for multiple objectives.
机译:近年来,研究人员已应用遗传算法(GA)和其他启发式优化方法来进行桁架优化。尽管已经对桁架构件尺寸,节点坐标和构件连接的优化进行了大量研究,但是寻求同时优化桁架的拓扑结构,几何形状和构件尺寸的研究仍然很少见。此外,以前的大多数研究都集中在仅限于结构化域的问题域上,该结构域由固定数量的节点,成员,负载位置和负载大小定义。这项研究的目的是开发一种可以设计有效的屋架系统的计算方法。该方法为工程师提供了针对特定非结构化问题域的一组近乎最佳的桁架。非结构域仅规定了荷载的大小和支撑位置。没有定义有关节点数量或位置以及成员连接性的其他结构信息。这项研究使用隐式冗余表示(IRR)GA(Raich 1999)在指定的领域内发展出多样化的接近最优的桁架设计集,这些设计具有变化的拓扑,几何形状和大小。 IRR GA允许在一次试验中确定Pareto最优集。这些桁架设计反映了在优化的多个目标之间发生的折衷。最后,获得的帕累托最优曲线将用于为设计工程师提供一系列高度适合的概念设计,从中可以选择最终设计。通过比较所开发的桁架与使用局部扰动方法优化的桁架以及工程师使用试错法设计的桁架,可以评估通过提出的多目标IRR GA方法获得的设计的质量。给出的结果表明,所开发的方法对于同时优化多个目标的桁架的拓扑,几何形状和尺寸非常有效。

著录项

  • 作者

    Paik Sangwook;

  • 作者单位
  • 年度 2006
  • 总页数
  • 原文格式 PDF
  • 正文语种 en_US
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