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Structural damage identification of truss structures using self-controlled multi-stage particle swarm optimization

机译:利用自控多阶段粒子群优化结构损伤桁架结构的损伤识别

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摘要

The present work proposes a self-controlled multi-stage optimization method for damage identification of structures utilizing standard particle swarm optimization (PSO) algorithm. Damage identification problem is formulated as an inverse optimization problem where damage severity in each element of the structure is considered as optimization variables. An efficient objective function is formed using the first few frequencies and mode shapes of the structure. This objective function is minimized by a self-controlled multi-stage strategy to identify and quantify the damage extent of the structural members. In the first stage, standard PSO is utilized to get an initial solution to the problem. Subsequently, the algorithm identifies the most damage-prone elements of the structure using an adaptable threshold value of damage severity. These identified elements are included in the search space of the standard PSO at the next stage. Thus, the algorithm reduces the dimension of the search space and subsequently increases the accuracy of damage prediction with a considerable reduction in computational cost. The efficiency of the proposed method is investigated and compared with available results through three numerical examples considering both with and without noise. The obtained results demonstrate the accuracy of the present method can accurately estimate the location and severity of multi-damage cases in the structural systems with less computational cost.
机译:本工作提出了一种自控多级优化方法,用于利用标准粒子群优化(PSO)算法的结构损伤识别。损害识别问题被制定为逆优化问题,其中结构的每个元素中的损坏严重程度被视为优化变量。使用该结构的前几个频率和模式形状形成有效的目标函数。通过自控的多阶段策略最小化该目标函数,以识别和量化结构构件的损害程度。在第一阶段,使用标准PSO来获得问题的初始解决方案。随后,算法使用适应性严重程度的可适应性阈值识别结构的最损坏的结构易于易于元素。这些已识别的元素包含在下一个阶段的标准PSO的搜索空间中。因此,该算法减少了搜索空间的尺寸,随后增加了计算成本的相当大降低的损坏预测的精度。研究了所提出的方法的效率,并通过三个数值例子与可用的结果进行比较,考虑到且没有噪声。所得结果证明了本方法的准确性可以准确地估计具有较少计算成本的结构系统中多损伤案例的位置和严重程度。

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