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Hybrid neural network and finite element modeling of sub-base layer material properties in flexible pavements

机译:柔性路面次基层材料特性的混合神经网络和有限元建模

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This paper introduces a new concept of integrating artificial neural networks (ANN) and finite element method (FEM) in modeling the unbound material properties of sub-base layer in flexible pavements. Backcalculating pavement layer moduli are well-accepted procedures for the evaluation of the structural capacity of pavements. The ultimate aim of the backcalculation process from non-destructive testing (NDT) results is to estimate the pavement material properties. Using backcalculation analysis, in situ material properties can be backcalculated from the measured field data through appropriate analysis techniques. In order to backcalculate reliable moduli, unbound material behavior of sub-base layer must be realistically modeled. In this work, ANN was used to model the unbound material behavior of sub-base layer from experimental data and FEM as a backcalculation tool. Experimental deflection data groups from NDT are also used to show the capability of the ANN and FEM approach in modeling the unbound material behavior of sub-base layer. This approach can be easily and realistically performed to solve the backcalculation problems.
机译:本文介绍了一种将人工神经网络(ANN)和有限元方法(FEM)集成在一起的新概念,用于对柔性路面中的基础层的未绑定材料属性进行建模。反算路面层模量是用于评估路面结构能力的公认方法。无损检测(NDT)结果的反算过程的最终目的是估算路面材料的性能。使用反算分析,可以通过适当的分析技术从实测的现场数据反算原位材料特性。为了反算可靠的模量,必须对基础层的未绑定材料行为进行实际建模。在这项工作中,使用ANN从实验数据和FEM作为反算工具对次基层的未绑定材料行为进行建模。来自NDT的实验挠曲数据组还用于显示ANN和FEM方法在对基础层的未绑定材料行为进行建模方面的能力。可以轻松,现实地执行此方法来解决反算问题。

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