2019
DOI: 10.3390/w11051098
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Forecasting Groundwater Table in a Flood Prone Coastal City with Long Short-term Memory and Recurrent Neural Networks

Abstract: Many coastal cities are facing frequent flooding from storm events that are made worse by sea level rise and climate change. The groundwater table level in these low relief coastal cities is an important, but often overlooked, factor in the recurrent flooding these locations face. Infiltration of stormwater and water intrusion due to tidal forcing can cause already shallow groundwater tables to quickly rise toward the land surface. This decreases available storage which increases runoff, stormwater system load… Show more

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Cited by 114 publications
(66 citation statements)
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References 57 publications
(79 reference statements)
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“…This gate configuration helps the network preserve essential information over a long time and avoid rapid error signal decay. LSTM networks have only been applied recently in the field of water resources in terms of modeling rainfall-runoff process [46][47][48][49], groundwater table [50,51], water level in channels [52], water quality [53,54], and reservoir operations [55]. Given the long-term dependencies between salinity and flow/stage, LSTM should also be suitable for salinity simulation given flow and stage inputs.…”
Section: Introductionmentioning
confidence: 99%
“…This gate configuration helps the network preserve essential information over a long time and avoid rapid error signal decay. LSTM networks have only been applied recently in the field of water resources in terms of modeling rainfall-runoff process [46][47][48][49], groundwater table [50,51], water level in channels [52], water quality [53,54], and reservoir operations [55]. Given the long-term dependencies between salinity and flow/stage, LSTM should also be suitable for salinity simulation given flow and stage inputs.…”
Section: Introductionmentioning
confidence: 99%
“…LSTM has only recently been used for hydrologic time series prediction [18]. Bowes et al [19] compared RNN with LSTM for predicting the GW table in the flood-prone coastal city of Norfolk, Virginia. ey explored two machine learning algorithms LSTM and RNN to model and predict GW table response to storm events, using GW table, rainfall, and sea level as input parameters from 2010 to 2018 to train and test the model.…”
Section: Introductionmentioning
confidence: 99%
“…Recently, more and more LSTM‐related models are used in the field of water quality prediction. Bowes et al [11] proposed a groundwater quality prediction method based on LSTM and recurrent neural networks (RNNs). Zhang et al [12] also developed an LSTM‐based model for predicting water quality in agricultural areas.…”
Section: Introductionmentioning
confidence: 99%