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Identification of moving vehicle parameters using bridge responses and estimated bridge pavement roughness

机译:使用桥响应和估计的桥面粗糙度识别行驶中的车辆参数

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摘要

Passing vehicles cause bridge deformation and vibration. Overloaded vehicles can result in fatigue damage to, or even failure of, the bridge. The bridge response is related to the properties of the passing vehicles, particularly the vehicle weight. Therefore, a bridge weigh-in-motion system for estimating vehicle parameters is important for evaluating the bridge condition under repeated load. However, traditional weigh-in-motion methods, which involve the installation of strain gauges on bridge members and calibration with known weight truck, are often costly and time-consuming. In this paper, a method for the identification of moving vehicle parameters using bridge acceleration responses is investigated. A time-domain method based on the Bayesian theory application of a particle filter is adopted. The bridge pavement roughness is estimated in advance using vehicle responses from a sensor-equipped car with consideration of vehicle-bridge interaction, and it is utilized in the parameter estimation. The method does not require the calibration. Numerical simulations demonstrate that the vehicle parameters, including the vehicle weight, are estimated with high accuracy and robustness against observation noise and modeling error. Finally, this method is validated through field measurement. The resulting estimate of vehicle mass agrees with the measured value, demonstrating the practicality of the proposed method. (C) 2017 Elsevier Ltd. All rights reserved.
机译:过往的车辆会引起桥梁变形和振动。车辆超载可能导致桥梁疲劳损坏,甚至失效。桥梁响应与过往车辆的性能,特别是车辆重量有关。因此,用于估计车辆参数的桥梁动态称重系统对于评估反复载荷下的桥梁状况很重要。然而,传统的运动中称重方法通常是昂贵且费时的,这涉及在桥构件上安装应变仪并用已知的举重车进行校准。本文研究了一种利用桥梁加速度响应识别车辆运动参数的方法。采用基于贝叶斯理论的粒子滤波时域方法。考虑到车桥相互作用,使用来自配备传感器的汽车的车辆响应来预先估计桥面粗糙度,并将其用于参数估计中。该方法不需要校准。数值模拟表明,车辆参数(包括车辆重量)的估算具有很高的准确性和鲁棒性,可抵抗观察噪声和建模误差。最后,通过现场测量验证了该方法的有效性。所得的车辆质量估计与测量值一致,证明了所提出方法的实用性。 (C)2017 Elsevier Ltd.保留所有权利。

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