利用机器学习对混凝土板桥进行数据驱动的性能评估

IF 1.8 4区 工程技术 Q3 ENGINEERING, CIVIL
Md Abdul Hamid Mirdad, Bassem Andrawes
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引用次数: 0

摘要

桥梁的现场荷载测试通常被用作评估桥梁性能的可靠方法。现场测试的缺点之一是通常需要安装大量仪器。本文研究了使用人工神经网络(ANN)预测混凝土板桥响应的有效性,并可能减少现场测试所需的仪器数量。单跨桥梁的诊断测试结果作为输入数据集。测试车距离桥梁边缘的位置、卡车车轴上的载荷以及每个车轴沿桥梁所覆盖的距离被设定为输入参数,而 13 个应变片测得的应变被设定为目标输出。然后对神经网络进行训练、测试和验证,结果表明其相关性良好,平均误差百分比在可接受范围内。接下来使用开发的神经网络进行参数研究,以检查应变片数量对结果的影响。仅涉及三个具有峰值响应的应变片的网络与包含全部 13 个应变片的网络显示出几乎相似的相关性。然后,将所开发的神经网络与同一座桥梁的证明载荷测试结果进行比较,以预测桥梁的响应。结果发现,即使在传感器数量减少的情况下,神经网络预测桥梁响应的准确度也很高,范围在 - 13.7% 到 + 18.6% 之间。这项研究的结果证明了使用 ANN 预测桥梁响应和优化现场桥梁荷载测试传感器计划的潜力。
本文章由计算机程序翻译,如有差异,请以英文原文为准。

Data-Driven Performance Evaluation of A Concrete Slab Bridge Using Machine Learning

Data-Driven Performance Evaluation of A Concrete Slab Bridge Using Machine Learning

Field load testing of bridges is often used as a reliable method for evaluating bridge performance. One of the downsides of field testing is that it usually requires a heavy instrumentation setup. This paper investigates the efficacy of using an artificial neural network (ANN) to predict a concrete slab bridge response and potentially reduce the number of instruments needed for field testing. The diagnostic test results from a single-span bridge are incorporated as the input dataset. Test truck location from the edge of the bridge, loading on the truck axles, and distance covered along the bridge by each axle are set as the input parameters, while the measured strains from 13 strain gauges are set as the target output. The neural network is then trained, tested, and validated, showing a good correlation with an acceptable average error percentage. Parametric studies are conducted next using the developed neural network to examine the influence of the number of strain gauges on the results. The network involving only three strain gauges with peak response shows a nearly similar correlation as the network with all 13 strain gauges. The developed neural networks are then used to predict the bridge response compared with the same bridge's proof load test results. The networks are found to predict the bridge response with high accuracy within a range of − 13.7 to + 18.6%, even with the reduced number of sensors. The results from this study demonstrate the potential of using ANNs to predict the bridge response and to optimize the sensor plans for on-site bridge load testing.

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来源期刊
CiteScore
3.90
自引率
5.90%
发文量
83
审稿时长
15 months
期刊介绍: International Journal of Civil Engineering, The official publication of Iranian Society of Civil Engineering and Iran University of Science and Technology is devoted to original and interdisciplinary, peer-reviewed papers on research related to the broad spectrum of civil engineering with similar emphasis on all topics.The journal provides a forum for the International Civil Engineering Community to present and discuss matters of major interest e.g. new developments in civil regulations, The topics are included but are not necessarily restricted to :- Structures- Geotechnics- Transportation- Environment- Earthquakes- Water Resources- Construction Engineering and Management, and New Materials.
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