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Prediction of International Roughness Index of Flexible Pavements from Climate and Traffic Data Using Artificial Neural Network Modeling

机译:使用人工神经网络建模预测柔性路面柔性路面粗糙度指数

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This study is done to predict the International Roughness Index (IRI) for flexible pavements using climate and traffic data by employing Artificial Neural Network (ANN) modeling. The climate and traffic data are collected from the Long-Term Pavement Performance (LTPP) database. The ANN model is trained using 50% of climate, traffic, and IRI data and then rest 50% data is used to validate the model by comparing ANN predicted IRI and measured IRI for flexible pavement under a climatic zone. The trained model and the validated model are compared by calculating Root Mean "Square Error (RMSE) of ANN predicted IRI and measured IRI. A flexible pavement located at the wet-freeze climatic zone, employing 7-7-1 ANN structure and using Pure Linear transfer function, the RMSE generated is 0.055. A better prediction ANN model is generated using 7-9-9-1 architecture using a nonlinear transfer function and the RMSE further improved to 0.012.
机译:本研究进行了用采用人工神经网络(ANN)建模,预测使用气候和交通数据的柔性路面的国际粗糙度指数(IRI)。从长期路面性能(LTPP)数据库中收集了气候和交通数据。 ANN模型采用50%的气候,流量和IRI数据培训,然后使用50%数据来通过比较ANN预测的IRI来验证模型,并测量在气候区域下的柔性路面。通过计算培训的模型和验证的模型来通过计算根部平均值“ANN预测的IRI和测量的IRI来进行比较。柔性路面位于湿冷的气候区,采用7-7-1 ANN结构,使用纯净线性传递函数,生成的RMSE为0.055.使用非线性传递函数使用7-9-9-1架构产生更好的预测ANN模型,并且RMSE进一步提高到0.012。

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