2023
DOI: 10.1371/journal.pone.0286821
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A noval approach based on TCN-LSTM network for predicting waterlogging depth with waterlogging monitoring station

Jinliang Yao,
Zhipeng Cai,
Zheng Qian
et al.

Abstract: As a result of climate change and rapid urbanization, urban waterlogging commonly caused by rainstorm, is becoming more frequent and more severe in developing countries. Urban waterlogging sometimes results in significant financial losses as well as human casualties. Accurate waterlogging depth prediction is critical for early warning system and emergency response. However, the existing hydrological models need to obtain more abundant hydrological data, and the model construction is complicated. The waterloggi… Show more

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