JOURNAL ARTICLE

Time series-based groundwater level forecasting using gated recurrent unit deep neural networks

Haiping LinAmin GharehbaghiQian ZhangShahab S. BandHao Ting PaiKwok‐wing ChauAmir Mosavi

Year: 2022 Journal:   Engineering Applications of Computational Fluid Mechanics Vol: 16 (1)Pages: 1655-1672   Publisher: Taylor & Francis

Abstract

In this research, the mean monthly groundwater level with a range of 3.78 m in Qoşaçay plain, Iran, is forecast. Regarding three different layers of gated recurrent unit (GRU) structures and a hybrid of variational mode decomposition with gated recurrent unit (VMD-GRU), deep learning-based neural network models are developed. As the base model for performance comparison, the general single-long short-term memory-layer network model is developed. In all models, the module of sequence-to-one is used because of the lack of meteorological variables recorded in the study area. For modeling, 216 monthly datasets of the mean monthly water table depth of 33 different monitoring piezometers in the period April 2002–March 2020 are utilized. To boost the performance of the models and reduce the overfitting problem, an algorithm tuning process using different types of hyperparameter accompanied by a trial-and-error procedure is applied. Based on performance evaluation metrics, the total learnable parameters value and especially the model grading process, the new double-GRU model coupled with multiplication layer (×) (GRU2× model) is chosen as the best model. Under the optimal hyperparameters, the GRU2× model results in an R 2 of 0.86, a root mean square error (RMSE) of 0.18 m, a corrected Akaike’s information criterion (AICc) of −280.75, a running time for model training of 87 s and a total grade (TG) of 6.21 in the validation stage; and the hybrid VMD-GRU model yields an RMSE of 0.16 m, an R 2 of 0.92, an AICc of −310.52, a running time of 185 s and a TG of 3.34. © 2022 The Author(s). Published by Informa UK Limited, trading as Taylor & Francis Group.

Keywords:
Mean squared error Artificial neural network Hyperparameter Overfitting Akaike information criterion Autoregressive integrated moving average Computer science Algorithm Time series Mathematics Statistics Artificial intelligence

Metrics

73
Cited By
7.17
FWCI (Field Weighted Citation Impact)
78
Refs
0.98
Citation Normalized Percentile
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Citation History

Topics

Hydrological Forecasting Using AI
Physical Sciences →  Environmental Science →  Environmental Engineering
Energy Load and Power Forecasting
Physical Sciences →  Engineering →  Electrical and Electronic Engineering
Flood Risk Assessment and Management
Physical Sciences →  Environmental Science →  Global and Planetary Change

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