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Field applicability of a machine learning-based tensile force estimation for pre-stressed concrete bridges using an embedded elasto-magnetic sensor

机译:基于机械学习的嵌入式弹磁传感器对预应力混凝土桥梁的拉力估算的现场适用性

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It has been proposed that pre-stressed concrete bridges improve load performance by inducing axial pre-stress using pre-stress tendons. However, the tensile force of the pre-stress tendons could not be managed after construction, although it directly supports the load of the structure. Thus, the tensile force of the pre-stress tendon should be checked for structural health monitoring of pre-stressed concrete bridges. In this study, a machine learning-based tensile force estimation method for a pre-stressed concrete girder is proposed using an embedded elasto-magnetic sensor and machine learning method. The feedforward neural network and radial basis function network were applied to estimate the tensile force of the pre-stress tendon using the area ratio of the magnetic hysteresis curve measured by the embedded elasto-magnetic sensor. The feedforward neural network and radial basis function network were trained using 213 datasets obtained in laboratory experiments, and trained feedforward neural network and radial basis function network were applied to a 50-m real-scale pre-stressed concrete girder test for estimating tensile force. Nine embedded elasto-magnetic sensors were installed on the sheath, and the magnetic hysteresis curves of the pre-stress tendons were measured during tensioning. The area ratio was extracted and inputted to the trained feedforward neural network and radial basis function network to estimate the tensile force. The estimated tensile force was compared with the reference tensile force measured by the load cell. According to the result, the estimated tensile force can represent the actual tensile force of the pre-stress tendon without calibrating tensile force estimation algorithms at the site. In addition, it can measure the actual friction loss by estimating the tensile force at the maximum eccentric part. Based on the results, the proposed method might be a solution for the structural health monitoring of pre-stressed concrete bridges with field applicability.
机译:已经提出,预应力混凝土桥通过使用预应力筋引起轴向预应力来改善载荷性能。然而,尽管预应力筋直接支撑结构的载荷,但在施工后无法对其进行管理。因此,应检查预应力筋的拉力,以监测预应力混凝土桥梁的结构健康状况。在这项研究中,提出了一种使用嵌入式弹磁传感器和机器学习方法的基于机械学习的预应力混凝土梁拉力估计方法。应用前馈神经网络和径向基函数网络,利用嵌入式弹性传感器测量的磁滞曲线的面积比,估算预应力筋的拉力。使用在实验室实验中获得的213个数据集对前馈神经网络和径向基函数网络进行了训练,并将经过训练的前馈神经网络和径向基函数网络应用于50 m真实比例的预应力混凝土梁试验,以评估拉力。护套上安装了九个嵌入式弹磁传感器,并在张紧过程中测量了预应力筋的磁滞曲线。提取面积比,并将其输入到经过训练的前馈神经网络和径向基函数网络中,以估计拉力。将估算的拉力与测力传感器测得的参考拉力进行比较。根据结果​​,估计的拉力可以代表预应力筋的实际拉力,而无需在现场校准拉力估计算法。另外,可以通过估计最大偏心部分处的拉力来测量实际的摩擦损失。根据结果​​,所提出的方法可能是现场应用的预应力混凝土桥梁结构健康监测的解决方案。

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