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Rigid Pavement Backcalculation Using Differential Evolution

机译:使用差分进化的刚性路面反算

摘要

The backcalculation of pavement layer moduli from Falling Weight Deflectometer (FWD) measured surface deflections is a challenging task. It can also be formulated as a global optimization problem with the objective of finding the optimal pavement layer moduli values that minimize the error between measured and computed surface deflections. Over the years, several backcalculation methodologies have been developed including the use of soft computing techniques such as Neural Networks (NNs), Genetic Algorithms (GAs), etc. In this paper, Differential Evolution (DE), a stochastic parallel direct search evolution strategy optimization method is integrated with rapid surrogate mapping of Finite Element (FE) solutions through Neural Networks (NNs) in developing an automated rigid pavement backcalculation toolbox.
机译:落锤挠度计(FWD)测量的表面挠度对路面层模量的反算是一项艰巨的任务。它也可以公式化为全局优化问题,目的是找到最佳的路面层模量值,以使测量的和计算的表面挠度之间的误差最小。多年以来,已经开发了几种反计算方法,包括使用诸如神经网络(NNs),遗传算法(GAs)等软计算技术。在本文中,差分演化(DE)是一种随机并行直接搜索演化策略优化方法与通过神经网络(NN)的有限元(FE)解决方案的快速替代映射集成在一起,从而开发了自动化的刚性路面反算工具箱。

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