2023
DOI: 10.1038/s41598-023-32548-x
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A spatial–temporal graph deep learning model for urban flood nowcasting leveraging heterogeneous community features

Abstract: Flood nowcasting refers to near-future prediction of flood status as an extreme weather event unfolds to enhance situational awareness. The objective of this study was to adopt and test a novel structured deep-learning model for urban flood nowcasting by integrating physics-based and human-sensed features. We present a new computational modeling framework including an attention-based spatial–temporal graph convolution network (ASTGCN) model and different streams of data that are collected in real-time, preproc… Show more

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Cited by 5 publications
(1 citation statement)
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“…In a different take, Sun et al [41] demonstrate how physics-based connectivity could be useful for PUB. Finally, Farahmand et al [42] utilize a similar neural network architecture to this study and utilize attention-based graph neural networks.…”
Section: Graph Neural Network (Gnns) In Hydrologymentioning
confidence: 99%
“…In a different take, Sun et al [41] demonstrate how physics-based connectivity could be useful for PUB. Finally, Farahmand et al [42] utilize a similar neural network architecture to this study and utilize attention-based graph neural networks.…”
Section: Graph Neural Network (Gnns) In Hydrologymentioning
confidence: 99%