Bulletin of Surveying and Mapping ›› 2026, Vol. 0 ›› Issue (3): 86-93,99.doi: 10.13474/j.cnki.11-2246.2026.0315

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Floating bridge deformation monitoring and prediction based on multi-frequency GNSS data

LIU Jun1,2,3, OU Tonggeng1,2,3, GUO Xiaofei1,2,3   

  1. 1. Key Laboratory of Earthquake Geodesy China Earthquake Administration, Wuhan 430071, China;
    2. Hubei Key Laboratory of Earthquake Early Warning, Wuhan 430071, China;
    3. Wuhan Institute of Seismic Scientific Instruments Co., Ltd., Wuhan 430071, China
  • Received:2025-08-18 Published:2026-04-08

Abstract: To address the limitations of traditional methods in monitoring multi-frequency GNSS deformation of floating bridges regarding fluid-structure interaction and nonlinear problem-solving,the insufficient physical credibility of purely data-driven deep learning approaches,the impacts of marine multipath effects and ionospheric delays on multi-frequency GNSS observations,and the inadequate fusion of multi-sensor data,this study proposes a physics-informed neural network (PINN) framework integrating multi-frequency GNSS observations with structural dynamics equation constraints.Partial differential equations describing fluid-structure interactions,structural vibrations,and conservation laws are embedded into the neural network's loss function,constructing an end-to-end model featuring spatiotemporal adaptive multi-scale weighting and marine error correction.Validation using long-term monitoring data from the Bergsøysund Floating Bridge demonstrates:Compared to Kalman filtering,the root mean square error (RMSE)during normal monitoring is reduced by 35%~47%;Compared to purely deep learning methods,training data requirements decrease by 1~2 orders of magnitude,and generalization capability improves by over 60%;After multi-frequency fusion,the L5 band exhibits a 40% enhancement in multi-path error resistance,achieving an overall positioning accuracy of 0.8 cm.This framework provides a novel solution for intelligent deformation monitoring and prediction of structures in complex environments.

Key words: multi-frequency GNSS, deformation prediction, fluid-structure interaction, physics-informed neural network, structural health monitoring

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