Physics-Inspired Deep Learning and Transferable Models for Bridge Scour Prediction
Negin Yousefpour, Bo Wang

TL;DR
This paper presents a hybrid physics-informed deep learning framework called SPINNs for bridge scour prediction, integrating empirical equations with neural networks to improve accuracy and transferability across sites.
Contribution
The study introduces SPINNs, combining physics-based equations with deep learning models, and evaluates their transferability and accuracy in predicting bridge scour.
Findings
SPINNs outperform pure data-driven models in most cases.
SPINNs reduce forecasting errors by up to 50%.
Transferable models are effective for bridges with limited data.
Abstract
This paper introduces scour physics-inspired neural networks (SPINNs), a hybrid physics-data-driven framework for bridge scour prediction using deep learning. SPINNs integrate physics-based, empirical equations into deep neural networks and are trained using site-specific historical scour monitoring data. Long-short Term Memory Network (LSTM) and Convolutional Neural Network (CNN) are considered as the base deep learning (DL) models. We also explore transferable/general models, trained by aggregating datasets from a cluster of bridges, versus the site/bridge-specific models. Despite variation in performance, SPINNs outperformed pure data-driven models in the majority of cases. In some bridge cases, SPINN reduced forecasting errors by up to 50 percent. The pure data-driven models showed better transferability compared to hybrid models. The transferable DL models particularly proved…
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Taxonomy
TopicsHydrology and Sediment Transport Processes
MethodsMemory Network · Sigmoid Activation · Tanh Activation · Balanced Selection · Long Short-Term Memory
