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Soft Computing Models to Predict Pavement Roughness: A Comparative Study

机译:软计算模型预测路面粗糙度:对比研究

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Pavement roughness as a critical determinant of public satisfaction can potentially play a major role in road or highway resource allocation to competing pavement resurfacing projects. With this in mind, the aim of the present paper is to develop an accurate model for the prediction of pavement roughness in terms of the International Roughness Index (IRI) using artificial neural networks (ANNs) and support vector machines (SVMs). The modeling is based on pavement roughness data collected periodically for a high-volume motorway during a seven-year period, on a yearly basis. The comparative study of the developed models concludes that the performance of the ANN model is slightly better compared to the SVM in terms of prediction accuracy. Further, the analysis results produce evidence in support of the statement that both models are capable to predict accurately pavement roughness; hence, they are deemed useful for supporting decision making of pavement maintenance and rehabilitation strategies.
机译:路面粗糙度是决定公众满意度的关键因素,它可能在道路或公路资源分配中为竞争性路面重铺项目分配发挥重要作用。考虑到这一点,本文的目的是使用人工神经网络(ANN)和支持向量机(SVM),根据国际粗糙度指数(IRI),开发一种用于预测路面粗糙度的精确模型。该建模基于每年七年期间定期收集的大容量高速公路的路面粗糙度数据。对已开发模型的比较研究得出的结论是,就预测准确性而言,ANN模型的性能比SVM更好。此外,分析结果提供了证据支持这两种模型都能够准确预测路面粗糙度。因此,它们被认为有助于支持路面维护和修复策略的决策。

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