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首页> 外文期刊>Frontiers of structural and civil engineering >An efficient two-stage approach for structural damage detection using meta-heuristic algorithms and group method of data handling surrogate model
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An efficient two-stage approach for structural damage detection using meta-heuristic algorithms and group method of data handling surrogate model

机译:利用元启发式算法和数据处理代理模型的结构损伤检测的有效两阶段方法

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摘要

In this study, the performance of an efficient two-stage methodology which is applied in a damage detection system using a surrogate model of the structure has been investigated. In the first stage, in order to locate the damage accurately, the performance of the modal strain energy based index for using different numbers of natural mode shapes has been evaluated using the confusion matrix. In the second stage, to estimate the damage extent, the sensitivity of most used modal properties due to damage, such as natural frequency and flexibility matrix is compared with the mean normalized modal strain energy (MNMSE) of suspected damaged elements. Moreover, a modal property change vector is evaluated using the group method of data handling (GMDH) network as a surrogate model during damage extent estimation by optimization algorithm; in this part of methodology, the performance of the three popular optimization algorithms including particle swarm optimization (PSO), bat algorithm (BA), and colliding bodies optimization (CBO) is examined and in this regard, root mean square deviation (RMSD) based on the modal property change vector has been proposed as an objective function. Furthermore, the effect of noise in the measurement of structural responses by the sensors has also been studied. Finally, in order to achieve the most generalized neural network as a surrogate model, GMDH performance is compared with a properly trained cascade feed-forward neural network (CFNN) with log-sigmoid hidden layer transfer function. The results indicate that the accuracy of damage extent estimation is acceptable in the case of integration of PSO and MNMSE. Moreover, the GMDH model is also more efficient and mimics the behavior of the structure slightly better than CFNN model.
机译:在该研究中,已经研究了使用结构替代模型应用于损伤检测系统中的有效两级方法的性能。在第一阶段,为了准确地定位损伤,已经使用混淆矩阵评估了使用不同数量的自然模式形状的模态应变能量的索引的性能。在第二阶段,为了估算损伤程度,与诸如自然频率和柔韧性矩阵的损坏导致的最常用模态特性的敏感性与可疑损坏元件的平均归一化的模态应变能(Mnmse)进行比较。此外,使用数据处理(GMDH)网络的组方法评估模态性能变化向量作为通过优化算法造成损坏程度估计期间的代理模型;在该方法的方法中,研究了三种流行优化算法的性能,包括粒子群优化(PSO),BAT算法(BA)和碰撞体优化(CBO),并在这方面,基于根均方偏差(RMSD)在模态属性变化向量上被提出为目标函数。此外,还研究了传感器测量结构响应测量的影响。最后,为了实现最广泛的神经网络作为替代模型,将GMDH性能与具有Log-Sigmoid隐藏层传递函数的适当培训的级联前馈神经网络(CFNN)进行比较。结果表明,在PSO和Mnmse集成的情况下,损坏程度估计的准确性是可以接受的。此外,GMDH模型也比CFNN模型更好地更高效和模仿结构的行为。

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