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Review of mechanistic-empirical modeling of top-down cracking in asphalt pavements

机译:沥青路面自上而下开裂的力学经验模型综述

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摘要

Top-down cracking has been identified worldwide and is regarded as a major type of asphalt pavement distress. Along with a comprehensive review of the existing work, this study is intended to propose a roadmap for developing a mechanistic-empirical model and associated design software for top-down cracking in asphalt pavements. This paper reviews eleven sub-models relevant to material, structure, traffic, and climate to account for the key factors that affect top-down cracking. Over 120 published studies are located and reviewed in terms of modeling techniques, model types, and model components. In addition, the methods and sources to identify and collect the data required to develop these sub models are presented. Within the scope of this work, this study discusses several sub-models as examples and provides a roadmap for future development. The introduced sub-models emphasize some critical issues, such as the modulus gradient due to non-uniform aging, different cracking mechanisms, and computation of the J-integral (energy release rate) that drives the crack downward from the pavement surface. Finally, this study provides an assembling plan to put all of the sub-models together into a Top-Down Cracking Program, which could predict and calibrate the growth of top-down cracking in asphalt pavements. (C) 2018 Elsevier Ltd. All rights reserved.
机译:自上而下的开裂已在世界范围内得到确认,被认为是沥青路面遇险的一种主要类型。在对现有工作进行全面回顾的同时,本研究旨在为发展沥青路面的机械-经验模型和相关设计软件提出路线图。本文回顾了与材料,结构,交通和气候有关的11个子模型,以解释影响自上而下裂缝的关键因素。根据建模技术,模型类型和模型组成部分,对120多个已发表的研究进行了定位和审查。此外,还介绍了识别和收集开发这些子模型所需数据的方法和资源。在这项工作的范围内,本研究讨论了几个子模型作为示例,并提供了未来发展的路线图。引入的子模型强调了一些关键问题,例如由于不均匀的时效导致的模量梯度,不同的开裂机制,以及计算J积分(能量释放率)的方法,该J积分将裂纹从路面向下驱动。最后,这项研究提供了一个组装计划,将所有子模型组合到一个“自顶向下开裂”程序中,该程序可以预测并校准沥青路面自上而下开裂的增长。 (C)2018 Elsevier Ltd.保留所有权利。

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