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Techniques for Simulating Frozen Bearing Damage in Bridge Structures for the Purpose of Drive-by Health Monitoring

机译:用于模拟桥梁结构中冷冻轴承损坏的技术,以实现驾驶健康监测

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Drive-by Health Monitoring (DBHM) is a relatively new mobile health monitoring strategy that employs vehicle mounted sensors to monitor the health of bridge systems in an efficient and economical manner. Before DBHM can be realized as a viable health monitoring strategy, however, an approach for managing environmental and operational noise needs to be developed. In traditional health monitoring, machine learning techniques, such as neural networks, have been shown to reduce the effect environmental and operational noise has on damage detection accuracy; though, these methods typically require training on damage data, which can be difficult if not impossible to obtain for healthy structures. To resolve this issue, the authors proposed a methodology that utilizes a neural network architecture trained on realistic vehicle-bridge simulations to detect damage in physical highway bridges. For a simulation trained neural network to be able to detect physical bridge damage, numerical models must be able to accurately represent the behavior of a system when damaged. Therefore, the motivation of this work is to identify and validate physics-based techniques for modeling damage induced fluctuations in the dynamic response of highway bridge structures. This study focuses on one of the most common types of bridge damage, frozen support bearings. The authors introduce methods for modeling frozen bearing damage, and discuss the variety of variables that must be considered under certain environmental and operating conditions. The study concludes with demonstrating how to generally apply frozen bearing damage in healthy bridge models to represent possible future damage states.
机译:通过健康监测(DBHM)是一种相对较新的移动健康监测策略,采用车辆安装的传感器以高效且经济的方式监测桥系统的健康。然而,在DBHM可以实现为可行的健康监测策略之前,需要开发管理环境和操作噪声的方法。在传统的健康监测中,已经显示了机器学习技术,例如神经网络,如神经网络,以降低效果的环境和操作噪声对损坏检测精度;然而,这些方法通常需要对损坏数据进行训练,这可能是困难的,如果不是不可能获得健康结构。为了解决这个问题,作者提出了一种方法,该方法利用培训的神经网络架构,训练在现实的车桥模拟上,以检测物理公路桥梁的损坏。对于能够检测到物理桥梁损坏的仿真训练的神经网络,数值模型必须能够在损坏时准确地代表系统的行为。因此,这项工作的动机是识别和验证基于物理的技术,以便在公路桥梁结构的动态响应中建模损伤引起的波动。本研究重点介绍了最常见的桥梁损坏,冷冻支撑轴承。作者介绍了用于建模冷冻轴承损坏的方法,并讨论必须在某些环境和操作条件下考虑的各种变量。该研究结论,展示了如何通常在健康桥模型中施加冷冻轴承损坏,以代表未来的未来损害状态。

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