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Damage detection in truss bridges using transmissibility and machine learning algorithm: Application to Nam O bridge

机译:桁架桥梁使用传输和机器学习算法造成损坏检测:在NAM O桥的应用

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This paper proposes the use of transmissibility functions combined with a machine learning algorithm, Artificial Neural Networks (ANNs), to assess damage in a truss bridge. A new approach method, which makes use of the input parameters calculated from the transmissibility function, is proposed. The network not only can predict the existence of damage, but also can classify the damage types and identity the location of the damage. Sensors are installed in the truss joints in order to measure the bridge vibration responses under train and ambient excitations. A finite element (FE) model is constructed for the bridge and updated using FE software and experimental data. Both single damage and multiple damage cases are simulated in the bridge model with different scenarios. In each scenario, the vibration responses at the considered nodes are recorded and then used to calculate the transmissibility functions. The transmissibility damage indicators are calculated and stored as ANNs inputs. The outputs of the ANNs are the damage type, location and severity. Two machine learning algorithms are used; one for classifying the type and location of damage, whereas the other for finding the severity of damage. The measurements of the Nam O bridge, a truss railway bridge in Vietnam, is used to illustrate the method. The proposed method not only can distinguish the damage type, but also it can accurately identify damage level.
机译:本文提出了使用透射功能与机器学习算法,人工神经网络(ANNS)结合使用,评估桁架桥的损坏。提出了一种新的方法,它利用从传输功能计算的输入参数。网络不仅可以预测存在损坏,还可以对损坏类型和身份分类损坏的位置。传感器安装在桁架接头中,以测量火车和环境激发下的桥梁振动响应。为桥梁构建有限元(FE)模型,并使用FE软件和实验数据更新。具有不同场景的桥梁模型中模拟了单一损坏和多种损伤案例。在每种情况下,记录所考虑的节点处的振动响应,然后用于计算传输功能。计算和存储为ANNS输入的传输损坏指示器。 ANN的输出是损坏类型,位置和严重性。使用两种机器学习算法;一个用于分类类型和损坏的位置,而另一个用于寻找损坏的严重程度。越南桁架铁路桥的NAM O桥的测量用于说明该方法。该方法不仅可以区分损坏类型,而且还可以准确地识别损坏水平。

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