2023
DOI: 10.3390/atmos14040759
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Physics-Informed Neural Network for Flow Prediction Based on Flow Visualization in Bridge Engineering

Abstract: Wind loads can endanger the safety and stability of bridges, especially long-span cable-supported bridges. Therefore, it is important to evaluate the potential wind loads during the bridge design stage. Traditionally, wind load evaluation is performed by wind tunnel testing, which is relatively expensive. With the development of computational fluid dynamics and high-performance computing, numerical simulations are becoming more accessible for designers. However, the costs required for accurate numerical result… Show more

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