Grey model for asphalt pavement performance prediction

D. Shen, Jia-Chong Du
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引用次数: 7

Abstract

Most existing rutting models are either based on an empirical or mechanistic-empirical modeling approach. The mechanistic-empirical model can be used easily and effectively on the relationship between rutting and the pavement response such as vertical strain, asphalt mix properties, and ambient condition. However, the cause of rutting is sophisticated and is the function of molding variables, which results in the poor performance of many of the existing models. In addition, some data or properties for pavement evaluation relating to the environment and structure may not be very clear, and so the pavement system is grey in its nature. Due to the advent of laboratory facilities and pavement management systems, a large number of pavement databases have become available. Thus, in this paper, the prediction-modeling approach is to simplify with two components and to emphasize the phenomenon of cause and effect by the data of rut depth versus traffic loadings. The model based on grey system theory is, then, developed to predict the rut depth of the asphalt pavement performance. The algorithm of model represented GM (1, 2) is presented and the applicability of the model is the data of rut depth obtained from the wheel-tracking device test. Field test data of rutting performance is collected from FHWA research data to evaluate the accuracy and effectiveness of the new prediction model and to confirm the model's validity. A statistical linear regression analysis was conducted for testing the accuracy of prediction. The comparison between the measured and predicted rut depth is within the tolerance level of /spl plusmn/2.5 mm. It is to believe that GM (1, 2) is useful for making a prediction of rut depths.
沥青路面性能预测的灰色模型
大多数现有车辙模型要么基于经验模型,要么基于力学-经验模型。该力学-经验模型可以简单有效地描述车辙与路面响应(如垂直应变、沥青混合料性能和环境条件)之间的关系。然而,车辙的原因复杂,是成型变量的函数,这导致许多现有模型的性能不佳。此外,路面评价中与环境和结构有关的一些数据或属性可能不是很清楚,因此路面系统在本质上是灰色的。由于实验室设施和路面管理系统的出现,大量的路面数据库已经可用。因此,本文的预测建模方法是简化为两分量,并强调车辙深度与交通载荷数据之间的因果关系。在此基础上,建立了基于灰色系统理论的车辙深度沥青路面性能预测模型。提出了GM(1,2)表示模型的算法,该模型的适用性为车轮跟踪装置试验获得的车辙深度数据。利用车辙性能实测数据,对车辙性能预测模型的准确性和有效性进行了评价,验证了模型的有效性。采用统计线性回归分析检验预测的准确性。实测车辙深度与预测车辙深度的比较在/spl plusmn/2.5 mm的公差范围内。可以认为GM(1,2)对车辙深度的预测是有用的。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
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