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Stiffness characterisation of full-scale airfield test pavements using computational intelligence techniques

机译:利用计算智能技术对全尺寸飞机场试验路面的刚度进行表征

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摘要

The falling weight deflectometer (FWD) is a non-destructive test equipment used to assess the structural condition of highway and airfield pavement systems and to determine the moduli of pavement layers. The backcalculated moduli are not only good pavement layer condition indicators but are also necessary inputs for conducting mechanistic based pavement structural analysis. In this study, artificial neural networks (ANNs)-based backcalculation models were employed to rapidly and accurately predict flexible airport pavement layer moduli from realistic FWD deflection basins acquired at the U.S. Federal Aviation Administrationu27s National Airport Pavement Test Facility (NAPTF). The uniformity characteristics of NAPTF flexible pavements were successfully mapped using the ANN predictions.
机译:落锤挠度计(FWD)是一种无损测试设备,用于评估高速公路和飞机场路面系统的结构状况并确定路面层的模量。反算的模量不仅是良好的路面层状况指标,而且还是进行基于机械的路面结构分析的必要输入。在这项研究中,基于人工神经网络(ANN)的反算模型被用来从美国联邦航空局国家机场路面测试设施(NAPTF)获得的现实FWD偏转盆地中快速准确地预测柔性机场路面层模量。使用ANN预测成功绘制了NAPTF柔性路面的均匀性特征。

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