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Neural networks based concrete airfield pavement layer moduli backcalculation

机译:基于神经网络的混凝土飞机场路面层模反算

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摘要

The Heavy Weight Deflectometer (HWD) is a Non-Destructive Test (NDT) equipment used to assess the structural condition of airfield pavement systems. This paper presents an Artificial Neural Networks (ANN) based approach for non-destructively estimating the stiffness properties of rigid airfield pavements subjected to full-scale dynamic traffic testing using simulated new generation aircraft gears. HWD tests were routinely conducted on three Portland Cement Concrete (PCC) test items at the Federal Aviation Administration's (FAA) National Airport Pavement Test Facility (NAPTF) to verify the uniformity of the test pavement structures and to measure pavement responses during full-scale traffic testing. Substantial corner cracking occurred in all three of the rigid pavement test items after 28 passes of traffic had been completed. Trafficking continued until the rigid items were deemed failed. The study findings illustrate the potential of ANN-based models for routine and real-time structural evaluation of rigid pavement NDT data.
机译:重型挠度计(HWD)是用于评估飞机场路面系统结构状况的无损检测(NDT)设备。本文提出了一种基于人工神经网络(ANN)的方法,该方法可通过模拟新一代飞机齿轮进行全尺寸动态交通测试的刚性飞机场路面的刚度特性进行无损估计。在联邦航空局(FAA)国家机场路面测试设施(NAPTF)上,常规地对三个波特兰水泥混凝土(PCC)测试项目进行了HWD测试,以验证测试路面结构的均匀性并在全面交通中测量路面响应测试。在完成28次通行后,所有三个刚性路面测试项目都出现了明显的拐角开裂。贩运一直持续到坚挺物品被视为失败为止。研究结果说明了基于ANN的模型对刚性路面NDT数据进行常规和实时结构评估的潜力。

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