Hameed Mohammed Majeed, Masood Adil, Hamid Aadil, Elbeltagi Ahmed, Razali Siti Fatin Mohd, Salem Ali
Upper Euphrates Center for Sustainable Development Research, University of Anbar, Ramadi, Iraq.
Department of Natural and Applied Sciences, TERI School of Advanced Studies, New Delhi, India.
PLoS One. 2025 May 23;20(5):e0321008. doi: 10.1371/journal.pone.0321008. eCollection 2025.
Accurate monthly runoff forecasting is vital for water management, flood control, hydropower, and irrigation. In glacierized catchments affected by climate change, runoff is influenced by complex hydrological processes, making precise forecasting even more challenging. To address this, the study focuses on the Lotschental catchment in Switzerland, conducting a comprehensive comparison between deep learning and ensemble-based models. Given the significant autocorrelation in runoff time series data, which may hinder the evaluation of prediction models, a novel statistical method is employed to assess the effectiveness of forecasting models in detecting turning points in the runoff data. The performance of Extreme Gradient Boosting (XGBoost) was compared with long short-term memory (LSTM) and random forest (RF) models for one-month-ahead runoff forecasting. The study used 20 years of runoff data (2002-2021), with 70% (2002-2015) dedicated for training and calibration, and the remaining data (2016-2021) for testing. The findings for the testing phase results show that the XGBoost model achieves the best accuracy, with R² of 0.904, RMSE of 1.554 m³/sec, an NSE of 0.797, and Willmott index (d) of 0.972, outperforming both the LSTM and RF models. The study also found that the XGBoost model estimated turning points more accurately, obtaining forecasting improvements of up to 22% to 34% compared to LSTM and RF models. Overall, the study's findings are essential for global water resource management, providing insights that can inform sustainable practices to support societies impacted by climate change.
准确的月径流量预测对于水资源管理、防洪、水电和灌溉至关重要。在受气候变化影响的冰川集水区,径流受到复杂水文过程的影响,使得精确预测更具挑战性。为了解决这个问题,该研究聚焦于瑞士的洛特申塔尔集水区,对深度学习模型和基于集合的模型进行了全面比较。鉴于径流时间序列数据中存在显著的自相关性,这可能会妨碍预测模型的评估,因此采用了一种新颖的统计方法来评估预测模型在检测径流数据转折点方面的有效性。将极端梯度提升(XGBoost)模型的性能与长短期记忆(LSTM)模型和随机森林(RF)模型进行了比较,以预测提前一个月的径流量。该研究使用了20年(2002 - 2021年)的径流数据,其中70%(2002 - 2015年)用于训练和校准,其余数据(2016 - 2021年)用于测试。测试阶段的结果表明,XGBoost模型的准确率最高,R²为0.904,均方根误差(RMSE)为1.554立方米/秒,纳什效率系数(NSE)为0.797,威尔莫特指数(d)为0.972,优于LSTM和RF模型。该研究还发现,XGBoost模型对转折点的估计更准确,与LSTM和RF模型相比,预测改进高达22%至34%。总体而言,该研究结果对于全球水资源管理至关重要,提供了可为支持受气候变化影响的社会的可持续实践提供参考的见解。