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Damage localization in irregular shape structures using intelligent FE model updating approach with a new hybrid objective function and social swarm algorithm

机译:利用智能FE模型更新方法造成不规则形状结构的损坏定位,具有新的混合目标函数和社会群算法

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摘要

Health monitoring of structures and damage diagnosis are important research disciplines under investigation worldwide. Soft computing techniques are usually used to solve the uncertain complex inverse problem of revealing structural damage. In the current research, FE model updating (FEMU) paradigm is embraced for solving the damage tracking problem in three dimensional irregular shape structures. By taking into account the complexity of problem, the pivotal point is to efficiently educe damage through well-evolved objective function. Therefore, a novel objective function merging the modal characteristics of modal strain energy (MSTEN) and mode shape curvature (MSC) is established. Posteriorly, to solve the FEMU problem, a hybrid algorithm combining the particle swarm optimization with a new social version of the sine-cosine optimization algorithm (SPSOSCA) is proposed. The SPSOSCA is considered to take advantage of two enhanced search mechanisms to overcome the overall problem complexity. The proposed paradigm is evaluated using many damage scenarios even under noise conditions and the total outcome reveals outstanding performance with fair computational time. (C) 2019 Elsevier B.V. All rights reserved.
机译:结构和损伤诊断的健康监测是全球调查中的重要研究学科。软计算技术通常用于解决揭示结构损伤的不确定复杂逆问题。在目前的研究中,FE模型更新(FEMU)范式被采用,用于解决三维不规则形状结构中的损伤跟踪问题。通过考虑到问题的复杂性,枢轴点是通过进化良好的目标函数有效地造成损伤。因此,建立了一种新颖的目标函数,合并模态应变能量(MSTEN)和模式形状曲率(MSC)的模态特性。向后,为了解决FEMU问题,提出了一种将粒子群优化与正弦余弦优化算法(SPSOSCA)的新社会版本组合的混合算法。 SPSOSCA被认为利用两个增强的搜索机制来克服整体问题复杂性。即使在噪声条件下,使用许多损坏情景评估所提出的范例,并且总结果显示出具有公平计算时间的出色性能。 (c)2019年Elsevier B.V.保留所有权利。

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