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Predicting pavement performance under traffic loading using genetic algorithms and artificial neural networks to obtain resilient modulus values.

机译:使用遗传算法和人工神经网络预测交通负荷下的路面性能,以获得弹性模量值。

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摘要

In many developing countries, the lack of high performance equipment and/or lack of knowledge on how to operate these specialized equipment obligates pavement engineers to continue using pavement design methodologies based on empirical tests that do not represent the dynamic nature of repeated traffic loads nor simulate the actual conditions of a pavement structure under loading in the field. For the realistic prediction of pavement performance it is very important to accurately characterize the mechanical behavior of unbound material layers and subgrade soils. In pavement analysis using elastic layered theory, material properties in terms of dynamic elastic modulus and Poisson's ratio are the major input parameters. The dynamic elastic modulus of pavement materials or resilient modulus (MR) is measured by conducting repeated load triaxial tests typically not available to highway authorities in developing countries.;A material model for the reliable prediction of the dynamic elastic moduli of the various materials used in pavement design to describe the performance of soil layers subjected to repeated wheel loads in a multilayered pavement system is developed in this study. This material model provides MR design values in a practical and low-cost manner as predictions are made from commonly performed laboratory tests in developing countries. The model is capable of accounting for the effects on performance of different soil types, the effect of environmental conditions such as moisture content and degree of saturation, as well as different levels of confining stress and wheel loads. A new material model that accommodates new data sets for both granular (cohesionless) and cohesive materials by readily incorporating them into the predictive model is presented. An ability of the proposed model to use small data sets and reduce the bias towards predominant data sets is demonstrated. The proposed model is also able to account for incomplete sets of input parameters.;Pavement performance under traffic loading is predicted by implementing a pavement response model that uses genetic algorithms and artificial neural networks to determine the mechanical behavior of the different layers in a multilayered pavement system. The combination of the material model with pavement response model offers an efficient, reliable, and low-cost methodology for the design and analysis of pavements that is more easily accessible to practice. Given the importance of the proposed methodology for developing countries, its applicability beyond the geographical boundaries of the U.S. is accomplished by including soil samples from tropical countries in Central and South America. Mechanistic design information is provided to transportation agencies in developing countries with much different design cultures.
机译:在许多发展中国家,缺乏高性能的设备和/或缺乏有关如何操作这些专用设备的知识,路面工程师不得不继续使用基于经验测试的路面设计方法,这些经验测试不能代表重复交通负荷的动态性质,也不能进行模拟现场荷载作用下路面结构的实际条件。对于实际的路面性能预测,准确表征未粘结材料层和路基土壤的机械性能非常重要。在使用弹性分层理论的路面分析中,以动态弹性模量和泊松比为代表的材料特性是主要的输入参数。路面材料的动态弹性模量或弹性模量(MR)通过进行反复的载荷三轴试验来测量,这些试验通常在发展中国家的公路当局中是不可用的;一种可靠地预测用于汽车的各种材料的动态弹性模量的材料模型。这项研究开发了一种路面设计,以描述在反复的轮式荷载作用下,多层路面系统中土层的性能。该材料模型以实用和低成本的方式提供了MR设计值,这是根据发展中国家通常进行的实验室测试得出的预测。该模型能够说明不同土壤类型对性能的影响,水分含量和饱和度等环境条件的影响,以及不同水平的限制应力和车轮载荷。提出了一种新的材料模型,该模型通过将颗粒材料(无内聚力)和内聚材料轻松纳入预测模型中,可以容纳新的数据集。证明了所提出模型使用小数据集并减少对主要数据集的偏见的能力。所提出的模型还能够解决输入参数不完整的问题。通过实施路面响应模型来预测交通负荷下的路面性能,该模型使用遗传算法和人工神经网络来确定多层路面中不同层的机械性能。系统。材料模型与路面响应模型的结合为路面的设计和分析提供了一种高效,可靠且低成本的方法,使实践更容易实现。鉴于建议的方法论对发展中国家的重要性,其方法的适用性超出了美国的地理范围,方法是将中美洲和南美洲热带国家的土壤样品包括在内。机械设计信息提供给设计文化差异很大的发展中国家的运输机构。

著录项

  • 作者

    Montoya Rodriguez, Carlos.;

  • 作者单位

    The Ohio State University.;

  • 授予单位 The Ohio State University.;
  • 学科 Civil engineering.;Transportation.
  • 学位 Ph.D.
  • 年度 2015
  • 页码 175 p.
  • 总页数 175
  • 原文格式 PDF
  • 正文语种 eng
  • 中图分类
  • 关键词

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