Publication | Open Access
Soft Computing Models to Predict Pavement Roughness: A Comparative Study
46
Citations
27
References
2018
Year
Highway PavementPavement EngineeringInternational Roughness IndexMachine LearningEngineeringDeterioration ModelingHybrid MethodsPredict Pavement RoughnessData ScienceTraffic PredictionPavement Roughness DataModeling And SimulationRough SetTransportation EngineeringPredictive AnalyticsPavement ManagementPavement RoughnessComputer ScienceCivil Engineering
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.
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