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Pavement condition assessment through jointly estimated road roughness and vehicle parameters

机译:通过共同估算的道路不平度和车辆参数评估路面状况

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Performance assessment of pavements proves useful, in terms of handling the ride quality, controlling the travel time of vehicles and adequate maintenance of pavements. Roughness profiles provide a good measure of the deteriorating condition of the pavement. For the accurate estimates of pavement roughness from dynamic vehicle responses, vehicle parameters should be known accurately. Information on vehicle parameters is uncertain, due to the wear and tear over time. Hence, condition monitoring of pavement requires the identification of pavement roughness along with vehicle parameters. The present study proposes a scheme which estimates the roughness profile of the pavement with the use of accurate estimates of vehicle parameters computed in parallel. Pavement model used in this study is a two-layer Euler-Bernoulli beam resting on a nonlinear Pasternak foundation. The asphalt topping of the pavement in the top layer is modeled as viscoelastic, and the base course bottom layer is modeled as elastic. The viscoelastic response of the top layer is modeled with the help of the Burgers model. The vehicle model considered in this study is a half car model, fitted with accelerometers at specified points. The identification of the coupled system of vehicle-pavement interaction employs a coupled scheme of an unbiased minimum variance estimator and an optimization scheme. The partitioning of observed noisy quantities to be used in the two schemes is investigated in detail before the analysis. The unbiased minimum variance estimator (MVE) make use of a linear state-space formulation including roughness, to overcome the linearization difficulties as in conventional nonlinear filters. MVE gives estimates for the unknown input and fed into the optimization scheme to yield estimates of vehicle parameters. The issue of ill-posedness of the problem is dealt with by introducing a regularization equivalent term in the objective function, specifically where a large number of parameters are to be estimated. Effect of different objective functions is also studied. The outcome of this research is an overall measure of pavement condition.
机译:事实证明,在处理行驶质量,控制车辆的行驶时间以及对路面进行适当维护方面,路面性能评估非常有用。粗糙度轮廓可以很好地衡量人行道的恶化状况。为了根据动态车辆响应准确估算路面粗糙度,应准确知道车辆参数。由于随着时间的流逝,有关车辆参数的信息尚不确定。因此,对路面状况进行监测需要识别路面粗糙度以及车辆参数。本研究提出了一种方案,该方案使用并行计算的车辆参数的准确估算来估算人行道的粗糙度轮廓。本研究中使用的路面模型是基于非线性Pasternak基础的两层Euler-Bernoulli梁。顶层的人行道的沥青顶层建模为粘弹性模型,而基础层的底层建模为弹性模型。顶层的粘弹性响应在Burgers模型的帮助下建模。本研究中考虑的车辆模型是半车模型,在指定点安装了加速度计。车辆-路面相互作用的耦合系统的识别采用无偏最小方差估计器和优化方案的耦合方案。在分析之前,将详细研究在两种方案中使用的观察到的噪声量的划分。无偏最小方差估计器(MVE)利用包括粗糙度的线性状态空间公式来克服传统非线性滤波器中的线性化难题。 MVE提供未知输入的估计值,并将其输入到优化方案中以得出车辆参数的估计值。通过在目标函数中引入正则化等效项来解决问题的不适定性问题,特别是在要估计大量参数的情况下。还研究了不同目标函数的影响。这项研究的结果是对路面状况的总体衡量。

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