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Structural damage detection using neural network with learning rate improvement

机译:使用神经网络的结构损伤检测可提高学习率

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In this research, we explore the structural damage detection using frequency response functions (FRFs) as input data to the back-propagation neural network (BPNN). Such method is non-model based and thus could have advantage in many practical applications. Neural network based damage detection generally consists of a training phase and a recognition phase. Error back-propagation algorithm incorporating gradient method can be applied to train the neural network, whereas the training efficiency heavily depends on the learning rate. While various training algorithms, such as the dynamic steepest descent (DSD) algorithm and the fuzzy steepest descent (FSD) algorithm, have shown promising features (such as improving the learning convergence speed), their performance is hinged upon the proper selection of certain control parameters and control strategy. In this paper, a tunable steepest descent (TSD) algorithm using heuristics approach, which improves the convergence speed significantly without sacrificing the algorithm simplicity and the computational effort, is investigated. A series of numerical examples demonstrate that the proposed algorithm outperforms both the DSD and FSD algorithms. With this as basis, we implement the neural network to the FRF based structural damage detection. The analysis results on a cantilevered beam show that, in all considered damage cases (i.e., trained damage cases and unseen damage cases, single damage cases and multiple-damage cases), the neural network can assess damage conditions with very good accuracy.
机译:在这项研究中,我们探索使用频率响应函数(FRF)作为反向传播神经网络(BPNN)的输入数据的结构损伤检测。这种方法不是基于模型的,因此可以在许多实际应用中具有优势。基于神经网络的损坏检测通常包括训练阶段和识别阶段。结合梯度法的误差反向传播算法可以应用于神经网络的训练,而训练效率在很大程度上取决于学习率。尽管各种训练算法(例如动态最速下降(DSD)算法和模糊最速下降(FSD)算法)都显示出了令人鼓舞的功能(例如提高学习收敛速度),但其性能取决于正确选择某些控制参数和控制策略。本文研究了一种采用启发式方法的可调谐最速下降(TSD)算法,该算法在不牺牲算法简单性和计算量的前提下显着提高了收敛速度。一系列数值例子表明,该算法优于DSD和FSD算法。以此为基础,我们将神经网络应用于基于FRF的结构损伤检测。在悬臂梁上的分析结果表明,在所有考虑的损伤情况下(即,受过训练的损伤情况和看不见的损伤情况,单个损伤情况和多损伤情况),神经网络都可以非常准确地评估损伤条件。

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