School of Environmental Science and Engineering, Guilin University of Technology, Guilin, 541004, China.
The Nuclear and Radiation Safety Center of Ministry of Ecology and Environment of China, Beijing, 100082, China.
Environ Sci Pollut Res Int. 2024 Apr;31(16):23951-23967. doi: 10.1007/s11356-024-32330-0. Epub 2024 Mar 4.
Accurate prediction of the groundwater level (GWL) is crucial for sustainable groundwater resource management. Ecological water replenishment (EWR) involves artificially diverting water to replenish the ecological flow and water resources of both surface water and groundwater within the basin. However, fluctuations in GWLs during the EWR process exhibit high nonlinearity and complexity in their time series, making it challenging for single data-driven models to predict the trend of groundwater level changes under the backdrop of EWR. This study introduced a new GWL prediction strategy based on a hybrid deep learning model, STL-IWOA-GRU. It integrated the LOESS-based seasonal trend decomposition algorithm (STL), improved whale optimization algorithm (IWOA), and Gated recurrent unit (GRU). The aim was to accurately predict GWLs in the context of EWR. This study gathered GWL, precipitation, and surface runoff data from 21 monitoring wells in the Yongding River Basin (Beijing Section) over a period of 731 days. The research results demonstrate that the improvement strategy implemented for the IWOA enhances the convergence speed and global search capabilities of the algorithm. In the case analysis, evaluation metrics including the root mean square error (RMSE), mean absolute error (MAE), mean absolute percentage error (MAPE), and Nash-Sutcliffe efficiency (NSE) were employed. STL-IWOA-GRU exhibited commendable performance, with MAE achieving the best result, averaging at 0.266. When compared to other models such as Variance Mode Decomposition-Gated Recurrent Unit (VMD-GRU), Ant Lion Optimizer-Support Vector Machine (ALO-SVM), STL-Particle Swarm Optimization-GRU (STL-PSO-GRU), and STL-Sine Cosine Algorithm-GRU (STL-SCA-GRU), MAE was reduced by 18%, 26%, 11%, and 29%, respectively. This indicates that the model proposed in this study exhibited high prediction accuracy and robust versatility, making it a potent strategic choice for forecasting GWL changes in the context of EWR.
准确预测地下水位(GWL)对于可持续的地下水管理至关重要。生态补水(EWR)涉及人为引水,以补充流域内地表水和地下水的生态流量和水资源。然而,在 EWR 过程中,GWL 的波动具有高度的非线性和时间序列的复杂性,使得单一的数据驱动模型难以预测 EWR 背景下地下水水位变化的趋势。本研究提出了一种基于混合深度学习模型的新的 GWL 预测策略,即 STL-IWOA-GRU。它集成了基于 LOESS 的季节性趋势分解算法(STL)、改进的鲸鱼优化算法(IWOA)和门控循环单元(GRU)。旨在准确预测 EWR 背景下的 GWL。本研究从永定河流域(北京段)21 口监测井收集了 731 天的 GWL、降水和地表径流数据。研究结果表明,IWOA 的改进策略提高了算法的收敛速度和全局搜索能力。在案例分析中,使用了均方根误差(RMSE)、平均绝对误差(MAE)、平均绝对百分比误差(MAPE)和纳什-苏特克里夫效率(NSE)等评估指标。STL-IWOA-GRU 表现出色,MAE 的结果最佳,平均为 0.266。与其他模型(如变分模态分解-门控循环单元(VMD-GRU)、蚁狮优化算法-支持向量机(ALO-SVM)、STL-粒子群优化-门控循环单元(STL-PSO-GRU)和 STL-正弦余弦算法-门控循环单元(STL-SCA-GRU))相比,MAE 分别降低了 18%、26%、11%和 29%。这表明,本研究提出的模型具有较高的预测精度和稳健的通用性,是预测 EWR 背景下 GWL 变化的有力策略选择。