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Application of a hybrid neural network structure for FWD backcalculation based on LTPP database

Chengjia Han, Tao Ma, Siyu Chen, Jianwei Fan

2021International Journal of Pavement Engineering55 citationsDOI

Abstract

The road layer modulus backcalculation based on the road deflection basin obtained by the Falling Weight Deflectometer is a key issue in road engineering. Traditional Falling Weight Deflectometer backcalculation method based on Artificial Neural Network has the disadvantages of poor generalisation ability and low convergence accuracy in terms of the dynamic modulus. In this paper, a hybrid neural network structure, combined with Residual Neural Network, Recurrent Neural Network and Wide & Deep (Abbreviated as ResRNN–W&D) structure, was proposed for Falling Weight Deflectometer deflection basin backcalculation. A case study using the United States Long-Term Pavement Performance database verified that the ResRNN–W&D structure can train Falling Weight Deflectometer data on multiple roads together and achieve fast and high-precision convergence, thereby greatly improving the availability of the multi-source heterogeneous data. Moreover, two transfer learning methods for the ResRNN–W&D structure were proposed to improve the divergence issue. It was found that the ResRNN–W&D structure has stronger generalisation ability than traditional Artificial Neural Network.

Topics & Concepts

Falling weight deflectometerArtificial neural networkDeflection (physics)Computer scienceStructural engineeringEngineeringArtificial intelligenceSubgradeOpticsPhysicsInfrastructure Maintenance and MonitoringAsphalt Pavement Performance EvaluationNon-Destructive Testing Techniques
Application of a hybrid neural network structure for FWD backcalculation based on LTPP database | Litcius