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Neural Networks Modeling of Stress Growth in Asphalt Overlays due to Load and Thermal Effects during Reflection Cracking

机译:反射裂纹过程中荷载和热效应引起的沥青覆盖层应力增长的神经网络建模

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摘要

Although several techniques have been introduced to reduce reflective cracking, one of the primary forms of distress in hot-mix asphalt (HMA) overlays of flexible and rigid pavements, the underlying mechanism and causes of reflective cracking are not yet well understood. Fracture mechanics is used to understand the stable and progressive crack growth that often occurs in engineering components under varying applied stress. The stress intensity factor (SIF) is its basis and describes the stress state at the crack tip. This can be used with the appropriate material properties to calculate the rate at which the crack will propagate in a linear elastic manner. Unfortunately, the SIF is difficult to compute or measure, particularly if the crack is situated in a complex three-dimensional (3D) geometry or subjected to a non-simple stress state. In this study, the neural networks (NN) methodology is successfully used to model the SIF as cracks grow upward through a HMA overlay as a result of both load and thermal effects with and without reinforcing interlayers. Nearly 100,000 runs of a finite-element program were conducted to calculate the SIFs at the tip of the reflection crack for a wide variety of crack lengths and pavement structures. The coefficient of determination (R2) of all the developed NN models except one was above 0.99. Owing to the rapid prediction of SIFs using developed NN models, the overall computer run time for a 20-year reflection cracking prediction of a typical overlay was significantly reduced.
机译:尽管已经引入了几种减少反射裂缝的技术,但是柔性和刚性路面的热拌沥青(HMA)覆盖层中遇险的主要形式之一,反射裂缝的潜在机理和原因尚未得到很好的理解。断裂力学用于了解在不断变化的施加应力下工程组件中经常发生的稳定且渐进的裂纹扩展。应力强度因子(SIF)是其基础,它描述了裂纹尖端的应力状态。可以将其与适当的材料属性一起使用,以计算裂纹以线性弹性方式扩展的速率。不幸的是,SIF难以计算或测量,尤其是当裂纹位于复杂的三维(3D)几何形状或处于非简单应力状态时。在这项研究中,神经网络(NN)方法已成功地用于对SIF进行建模,这是裂纹在HMA覆盖层的作用下(无论有无中间层)的载荷和热效应共同导致裂纹向上扩展的结果。进行了将近100,000次的有限元程序计算,以计算各种裂缝长度和路面结构的反射裂缝尖端的SIF。除一个模型外,所有已开发的NN模型的确定系数(R2)均大于0.99。由于使用已开发的NN模型对SIF进行了快速预测,因此对典型覆盖层进行20年反射裂缝预测的总计算机运行时间大大减少了。

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