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A Novel Neural Network Based Method for Analysis of Pavement Deflection Data

机译:基于神经网络的路面变形数据分析新方法

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Efficient management of road infrastructure involves planning, construction, maintenance, operation and disposal of road assets. Knowledge of current conditions and deterioration of road pavements are essential to enable effective road asset management. This paper presents a novel neural network based method for the analysis and prediction of Falling Weight Deflectometer (FWD) parameters based on Traffic Speed Deflectometer (TSD) parameters. A neural network based method was designed and applied to analyse the correlation between FWD and TSD data. The method used a feed-forward neural network that was trained with TSD data as an input and FWD data as an output. The proposed method was evaluated on TSD and FWD data provided by the industry partner Australian Road Research Board (ARRB). The prediction results are very promising and within an acceptable range set by the industry partner. A detailed results analysis is included in this paper.
机译:道路基础设施的有效管理涉及道路资产的规划,建设,维护,运营和处置。了解当前状况和路面质量对于实现有效的道路资产管理至关重要。本文提出了一种新的基于神经网络的方法,用于基于交通速度偏转仪(TSD)参数的分析和预测体重下降偏转仪(FWD)。设计了一种基于神经网络的方法并将其应用于分析FWD和TSD数据之间的相关性。该方法使用前馈神经网络,该网络以TSD数据作为输入,FWD数据作为输出进行训练。根据行业合作伙伴澳大利亚道路研究委员会(ARRB)提供的TSD和FWD数据对提出的方法进行了评估。预测结果非常有希望,并且在行业合作伙伴设定的可接受范围内。本文包含详细的结果分析。

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