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A hybrid computational intelligence approach for structural damage detection using marine predator algorithm and feedforward neural networks

机译:一种利用海洋预防算法和前馈神经网络的结构损伤检测的混合计算智能方法

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摘要

Finite element (FE) based structural health monitoring (SHM) algorithms seek to update structural damage indices through solving an optimisation problem in which the difference between the response of the real structure and a corresponding FE model to some excitation force is minimised. These techniques, therefore, exploit advanced optimisation algorithms to alleviate errors stemming from the lack of information or the use of highly noisy measured responses. This study proposes an effective approach for damage detection by using a recently developed novel swarm intelligence algorithm, i.e. the marine predator algorithm (MPA). In the proposed approach, optimal foraging strategy and marine memory are employed to improve the learning ability of feedforward neural networks. After training, the hybrid feedforward neural networks and marine predator algorithm, MPAFNN, produces the best combination of connection weights and biases. These weights and biases then are re-input to the networks for prediction. Firstly, the classification capability of the proposed algorithm is investigated in comparison with some well-known optimization algorithms such as particle swarm optimization (PSO), gravitational search algorithm (GSA), hybrid particle swarm optimization-gravitational search algorithm (PSOGSA), and grey wolf optimizer (GWO) via four classification benchmark problems. The superior and stable performance of MPAFNN proves its effectiveness. Then, the proposed method is applied for damage identification of three numerical models, i.e. a simply supported beam, a two-span continuous beam, and a laboratory free-free beam by using modal flexibility indices. The obtained results reveal the feasibility of the proposed approach in damage identification not only for different structures with single damage and multiple damage, but also considering noise effect. (C) 2021 Elsevier Ltd. All rights reserved.
机译:有限元基于(FE)结构健康监测(SHM)算法寻求通过求解在其中真实结构的响应和对应的有限元模型的一些激励力之间的差被最小化的最优化问题来更新结构损伤指数。这些技术,因此,利用先进的优化算法,以缓解因缺乏信息或使用的高噪声测量的响应而产生的错误。本研究中,通过使用最近开发的新群体智能算法,即海洋捕食算法(MPA)提出了一种用于损伤检测的有效方法。在所提出的方法,最佳觅食战略和海洋内存被用来提高前馈神经网络的学习能力。训练结束后,混合前馈神经网络和海洋捕食算法,MPAFNN,产生连接权重和偏置的最佳组合。这些重量和偏见然后被重新输入到网络用于预测。首先,该算法的分类能力在比较研究了一些知名优化算法,例如粒子群优化(PSO),引力搜索算法(GSA),混合粒子群优化引力搜索算法(PSOGSA),和灰色通过四个分类基准问题狼优化(GWO)。 MPAFNN的优越和稳定的性能证明了其有效性。然后,施加用于损伤识别的三种数值模型,即一个所提出的方法简支梁,双跨连续梁,并且通过使用模态灵活性指数实验室自由梁。所得到的结果揭示了在损伤识别不仅用于与单个损伤和多发性损伤,但也考虑到噪声的影响不同的结构所提出的方法的可行性。 (c)2021 elestvier有限公司保留所有权利。

著录项

  • 来源
    《Computers & Structures》 |2021年第8期|106568.1-106568.21|共21页
  • 作者单位

    Univ Ghent Fac Engn & Architecture Soete Lab Dept Elect Energy Met Mech Construct & Syst B-9000 Ghent Belgium|Univ Transport & Commun Fac Civil Engn Dept Bridge & Tunnel Engn Campus Ho Chi Minh City Ho Chi Minh City 700000 Vietnam;

    Univ Ghent Fac Engn & Architecture Soete Lab Dept Elect Energy Met Mech Construct & Syst B-9000 Ghent Belgium|Natl Univ Civil Engn Dept Bridge & Tunnel Engn Fac Bridge & Rd Hanoi 100000 Vietnam;

    Univ Technol Sydney Fac Engn & IT Ultimo NSW 2007 Australia;

    Katholieke Univ Leuven Dept Civil Engn Struct Mech B-3001 Leuven Belgium;

    Univ Transport & Commun Fac Civil Engn Dept Bridge & Tunnel Engn Hanoi 100000 Vietnam;

    Univ Technol Sydney Fac Engn & IT Ultimo NSW 2007 Australia;

    Ho Chi Minh City Univ Technol HUTECH CIRTech Inst Ho Chi Minh City Vietnam;

  • 收录信息 美国《科学引文索引》(SCI);美国《工程索引》(EI);
  • 原文格式 PDF
  • 正文语种 eng
  • 中图分类
  • 关键词

    Hybrid approach; Marine predator algorithm-feedforward neural networks (MPAFNN); Vibration experiment; Damage detection; Modal flexibility index;

    机译:混合方法;海洋捕食者算法 - 前馈神经网络(MPAFNN);振动实验;损伤检测;模态灵活性指数;

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