Multi-gene genetic programming extension of AASHTO M-E for design of low-volume concrete pavements

Haoran Li, Lev Khazanovich
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引用次数: 1

Abstract

The American Association of State Highway and Transportation Officials Mechanistic-Empirical Pavement Design Guide (AASHTO M-E) offers an opportunity to design more economical and sustainable high-volume rigid pavements compared to conventional design guidelines. It is achieved through optimizing pavement structural and thickness design under specified climate and traffic conditions using advanced M-E principles, thereby minimizing economic costs and environmental impact. However, the implementation of AASHTO M-E design for low-volume concrete pavements using AASHTOWare Pavement ME Design (Pavement ME) software is often overly conservative. This is because Pavement ME specifies the minimum design thickness of concrete slab as 152.4 ​mm (6 in.). This paper introduces a novel extension of the AASHTO M-E framework for the design of low-volume joint plain concrete pavements (JPCPs) without modification of Pavement ME. It utilizes multi-gene genetic programming (MGGP)-based computational models to obtain rapid solutions for JPCP damage accumulation and long-term performance analyses. The developed MGGP models simulate the fatigue damage and differential energy accumulations. This permits the prediction of transverse cracking and joint faulting for a wide range of design input parameters and axle spectrum. The developed MGGP-based models match Pavement ME-predicted cracking and faulting for rigid pavements with conventional concrete slab thicknesses and enable rational extrapolation of performance prediction for thinner JPCPs. This paper demonstrates how the developed computational model enables sustainable low-volume pavement design using optimized ME solutions for Pittsburgh, PA, conditions.

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小体积混凝土路面设计中AASHTO M-E多基因遗传规划的扩展
与传统设计指南相比,美国国家公路和交通官员协会的机械经验路面设计指南(AASHTO M-E)为设计更经济、可持续的大容量刚性路面提供了机会。它是通过在特定气候和交通条件下使用先进的M-E原则优化路面结构和厚度设计来实现的,从而最大限度地降低经济成本和环境影响。然而,使用AASHTOWare Pavement ME design (Pavement ME)软件对小体积混凝土路面实施AASHTO M-E设计往往过于保守。这是因为Pavement ME规定混凝土板的最小设计厚度为152.4毫米(6英寸)。本文介绍了AASHTO M-E框架在不修改路面ME的情况下设计小体积接缝素混凝土路面(jpps)的新扩展。利用基于多基因遗传规划(MGGP)的计算模型,快速求解JPCP损伤累积和长期性能分析。所建立的MGGP模型模拟了疲劳损伤和能量累积的差异。这允许横向裂缝和接头断裂的预测为广泛的设计输入参数和轴谱。所开发的基于mggp的模型将刚性路面的路面me预测裂缝和断层与常规混凝土板厚度相匹配,并能够合理地推断较薄的jpcp的性能预测。本文演示了开发的计算模型如何使用优化的ME解决方案,为宾夕法尼亚州匹兹堡的条件实现可持续的小体积路面设计。
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