2022
DOI: 10.5194/hess-2022-236
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Advance prediction of coastal groundwater levels with temporal convolutional network

Abstract: Abstract. Prediction of groundwater level is of immense importance and challenges for the coastal aquifer management with rapidly increasing climatic change. With the development of artificial intelligence, the data driven models have been widely adopted in predicting hydrological processes. However, due to the limitation of network framework and construction, they are mostly adopted to produce only one-time step in advance. Here, a TCN-based model is developed to predict groundwater level variations with diff… Show more

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