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Multi‑input performance prediction models for flexible pavements using LTPP database

机译:使用LTPP数据库的柔性路面的多输入性能预测模型

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Pavement performance prediction is a primary concern for pavement researchers and practitioners. The impact of climatic conditions and traffic characteristics on pavement performance is indisputable. The main objective of this study is to investigate the combined effect of both climate and traffic loading on pavement performance. Multi-input performance prediction models in terms of the well-known Pavement Condition Index (PCI) are proposed. The Long-Term Pavement Performance (LTPP) database is used for the models development and validation. Data from 89 LTPP sections including 617 observations from the Specific Pavement Studies (SPS-1) with no maintenance activities are collected. These data cover the four climatic zones (wet, wet freeze, dry, and dry freeze) in the USA, different pavement structures, and different levels of traffic loading. Based on these data, PCI prediction models are developed using two modeling approaches: multiple linear regression analysis and artificial neural networks (ANNs). The proposed models predict the PCI as a function of climatic factors, namely average annual temperature, standard deviation of monthly temperature, precipitation, wind speed, freezing index, total pavement thickness, and weighted plasticity index. Additionally, traffic loading, expressed in terms of the classical equivalent single-axle loads, is considered. The regression model yielded a coefficient of determination (R-2) value of 0.80, whereas the ANNs model results in a relatively higher R-2 value of 0.88. The proposed models are not only simple and accurate; they also have the potentials of being adopted in countries experiencing similar climatic conditions and traffic loading.
机译:路面性能预测是路面研究人员和从业者的主要关注点。气候条件和交通特性对路面性能的影响是无可争辩的。本研究的主要目的是探讨气候和交通负荷对路面性能的综合影响。提出了多输入性能预测模型,以众所周知的路面状况指数(PCI)。长期路面性能(LTPP)数据库用于模型开发和验证。来自89个LTPP部分的数据,包括从特定路面研究(SPS-1)的617个观察,没有维护活动。这些数据在美国,不同的路面结构和不同的交通荷载水平覆盖了四个气候区域(湿,湿润,干燥和干燥和干燥冻结)。基于这些数据,PCI预测模型是使用两个建模方法开发的:多个线性回归分析和人工神经网络(ANNS)。所提出的模型将PCI预测为气候因子的函数,即平均年度温度,月度温度的标准偏差,降水,风速,冷冻指数,总路面厚度和加权可塑性指数。另外,考虑以经典等效单轴载荷表示的流量负载。回归模型产生了判定系数(R-2)值0.80,而ANNS模型导致相对较高的R-2值为0.88。拟议的模型不仅简单准确;他们还具有在经历类似的气候条件和交通荷载的国家采用的潜力。

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