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Optimization-based method for structural damage detection with consideration of uncertainties- a comparative study

机译:考虑不确定因素的基于结构优化的结构损伤检测方法

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In this paper, for efficiently reducing the computational cost of the model updating during the optimization process of damage detection, the structural response is evaluated using properly trained surrogate model. Furthermore, in practice uncertainties in the FE model parameters and modelling errors are inevitable. Hence, an efficient approach based on Monte Carlo simulation is proposed to take into account the effect of uncertainties in developing a surrogate model. The probability of damage existence (PDE) is calculated based on the probability density function of the existence of undamaged and damaged states. The current work builds a framework for Probability Based Damage Detection (PBDD) of structures based on the best combination of metaheuristic optimization algorithm and surrogate models. To reach this goal, three popular metamodeling techniques including Cascade Feed Forward Neural Network (CFNN), Least Square Support Vector Machines (LS-SVMs) and Kriging are constructed, trained and tested in order to inspect features and faults of each algorithm. Furthermore, three well-known optimization algorithms including Ideal Gas Molecular Movement (IGMM), Particle Swarm Optimization (PSO) and Bat Algorithm (BA) are utilized and the comparative results are presented accordingly. Furthermore, efficient schemes are implemented on these algorithms to improve their performance in handling problems with a large number of variables. By considering various indices for measuring the accuracy and computational time of PBDD process, the results indicate that combination of LS-SVM surrogate model by IGMM optimization algorithm have better performance in predicting the of damage compared with other methods.
机译:为了有效地减少损伤检测优化过程中模型更新的计算成本,本文使用经过适当训练的替代模型对结构响应进行评估。此外,在实践中,有限元模型参数的不确定性和建模误差是不可避免的。因此,提出了一种基于蒙特卡洛模拟的有效方法,以考虑不确定因素在开发替代模型中的影响。基于未损坏状态和损坏状态存在的概率密度函数,计算损坏存在的概率(PDE)。当前的工作基于元启发式优化算法和替代模型的最佳组合,为结构的基于概率的损伤检测(PBDD)建立了框架。为了实现此目标,构建,训练和测试了三种流行的元建模技术,包括级联前馈神经网络(CFNN),最小二乘支持向量机(LS-SVM)和Kriging,以检查每种算法的特征和故障。此外,还利用了理想气体分子运动(IGMM),粒子群优化(PSO)和蝙蝠算法(BA)这三种众所周知的优化算法,并给出了比较结果。此外,在这些算法上实施了有效的方案,以提高它们在处理带有大量变量的问题时的性能。通过考虑各种指标来衡量PBDD过程的准确性和计算时间,结果表明,与其他方法相比,采用IGMM优化算法的LS-SVM替代模型组合具有更好的预测损伤的性能。

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