An Improved Form-Finding Method for Calculating Force Density with Group Theory

Taotao Heng, Liming Zhao, Keping Liu, Jiang Yi, Xiao-jun Duan, Zhongbo Sun
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引用次数: 1

Abstract

A form-finding method for symmetric tensegrity structure is proposed based on the eigenvalue minimization problem of force density matrix in this paper. The topology is the only premise condition about the structure. The problem to solve force density in the self-equilibrium tensegrity structure is transformed into a linear optimization problem, which the force density matrix under the rank deficiency condition. The constraints of the objective function can be established by the characteristics of member forces and the group theory. Then the nodal coordinates can be determined by eigenvalue decomposition once the force densities is obtained. In order to to show the efficiency of the proposed method, several simulations of tensegrity structures which include plane and spatial are demonstrated. It can be found that the form-finding process of symmetric tensegrity structure in the proposed method has the characteristics of rapid speed and high precision.
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用群理论计算力密度的一种改进找形方法
本文提出了一种基于力密度矩阵特征值最小化问题的对称张拉整体结构寻形方法。拓扑结构是结构的唯一前提条件。将求解自平衡张拉整体结构的力密度问题转化为求解秩亏条件下的力密度矩阵的线性优化问题。目标函数的约束可以通过构件力的特性和群论来确定。得到力密度后,通过特征值分解确定节点坐标。为了证明该方法的有效性,对平面和空间张拉整体结构进行了仿真。结果表明,该方法对对称张拉整体结构的找形过程具有速度快、精度高等特点。
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