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Application of particle swarm optimization and genetic algorithms to multiobjective damage identification inverse problems with modelling errors

机译:粒子群优化和遗传算法在建模误差多目标损伤识别反问题中的应用

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Structural health monitoring has become an important research topic in conjunction with the damage assessment of structures. The use of system identification approaches for damage detection using inverse methods has become more widespread in recent years and their formulation in a multiobjective framework has become more usual. Inverse problems require the use of an initial baseline model of the undamaged structure. Modelling errors in the baseline model whose effects exceed the modal sensitivity to damage are critical and make an accurate estimation of damage impossible. Artificial intelligence techniques based on genetic algorithms are used increasingly as an alternative to more classical techniques to solve this kind of problem especially due to their feasibility for managing multiobjective problems. This paper outlines an understanding of how particle swarm optimization methods operate in damage identification problems based on multiobjective FE updating procedures and takes modelling errors into account. One experimental example is used to show their performance in comparison with genetic algorithms.
机译:与结构损伤评估相结合,结构健康监测已成为重要的研究课题。近年来,使用系统识别方法使用逆方法进行损害检测的方法已变得越来越普遍,并且它们在多目标框架中的表述也越来越普遍。反问题需要使用未损坏结构的初始基线模型。基准模型中的建模误差(其影响超过对损伤的模态敏感性)非常重要,因此无法准确估计损伤。基于遗传算法的人工智能技术越来越多地用作解决此类问题的经典技术的替代方法,尤其是由于它们可用于管理多目标问题。本文概述了基于多目标有限元更新程序的粒子群优化方法在损伤识别问题中的运作方式,并考虑了建模误差。使用一个实验示例来展示它们与遗传算法相比的性能。

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