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Pavement Maintenance Threshold Detection and Network-Level Rutting Prediction Model Based on Finnish Road Data

机译:基于芬兰道路数据的路面维护阈值检测与网络级车辙预测模型

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摘要

Accurate prediction models for road structure deterioration increase the cost-effectiveness of road construction and the scheduling rehabilitation and maintenance of road structures. In this paper, a method to detect the minimum maintenance operation detection (MMOD) threshold and network-level pavement rutting prediction model are described. The MMOD threshold has the potential to filter network-level pavement rutting measurement data and improve prediction models. The model is a multilevel statistical time series model for rutting prediction without the need for measurement history. The model parameters used are pavement type and average daily traffic. The road maintenance planner estimates the need for a minimum sampling rate for future pavement performance measurements and predicts the pavement rut behavior. For asphalt concrete and soft asphalt concrete, the model gives realistic predictions for the first 10 years. For stone mastic asphalt, the realistic prediction window is the first six years.
机译:准确的道路结构劣化预测模型提高了道路建设的成本效益及路线结构的调度康复和维护。在本文中,描述了一种检测最小维护操作检测(MMOD)阈值和网络级路面车辙喷射预测模型的方法。 MMOD阈值有可能过滤网络级路面车辙测量数据并改善预测模型。该模型是用于栅格预测的多级统计时间序列模型,而无需测量历史。所使用的模型参数是路面类型和平均每日流量。道路维修计划员估计未来路面性能测量的最小采样率的需求,并预测路面RUT行为。对于沥青混凝土和软沥青混凝土,该模型为前10年提供了现实的预测。对于石头髓沥青,现实预测窗口是前六年。

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