Operational low-flow forecasting using LSTMs

Jing Deng, Anaïs Couasnon, Ruben Dahm, Markus Hrachowitz, Klaas-Jan van Heeringen, Hans Korving, Albrecht Weerts, Riccardo Taormina
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Abstract

This study focuses on exploring the potential of using Long Short-Term Memory networks (LSTMs) for low-flow forecasting for the Rhine River at Lobith on a daily scale with lead times up to 46 days ahead. A novel LSTM-based model architecture is designed to leverage both historical observation and forecasted meteorological data to carry out multi-step discharge time series forecasting. The feature and target selection for this deep learning (DL) model involves evaluating the use of different spatial resolutions for meteorological forcing (basin-averaged or subbasin-averaged), the impact of incorporating past discharge observations, and the use of different target variables (discharge Q or time-differenced discharge dQ). Then, the model is trained using the ERA5 dataset as meteorological forcing, and employed for operational forecast with ECMWF seasonal forecast (SEAS5) data. The forecast results are compared to a benchmark process-based model, wflow_sbm. This study also explores the flexibility of the DL model by fine-tuning the pretrained model with limited SEAS5 dataset. Key findings from feature and target selection include: (1) opting for subbasin-averaged meteorological variables significantly improves model performance compared to a basin-averaged approach. (2) Utilizing dQ as the target variable greatly boosts short-term forecast accuracy compared to using Q, with a mean absolute error (MAE) of 25 m3 s−1 and mean absolute percentage error (MAPE) of 0.02 for the first lead time, ensuring reliability and accuracy at the onset of the forecast horizon. (3) While incorporating historical discharge improves the forecasting of Q, its impact on predicting dQ is less pronounced for short lead times. In the operational forecast with SEAS5, compared to the wflow_sbm model, the DL model exhibits skill in forecasting low flows as evidenced by Continuous Ranked Probability Skill Score (CRPSS) median values of all lead times above zero, and better accuracy in forecasting drought events within short lead times. The wflow_sbm model shows higher accuracy for longer lead times. In the exploration of fine-tuning approach, the fine-tuned model generates marginal short-term enhancements in forecasting low-flow events over a non-fine-tuned model. Overall, this study contributes to advancing the field of low-flow forecasting using deep learning approach.
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利用 LSTM 进行低流量运行预报
本研究的重点是探索使用长短期记忆网络(LSTM)对洛比斯莱茵河进行低流量预报的潜力,预报时间最长可达 46 天。我们设计了一种基于 LSTM 的新型模型架构,以利用历史观测数据和气象预报数据来进行多步骤流量时间序列预报。该深度学习(DL)模型的特征和目标选择包括评估气象强迫的不同空间分辨率(流域平均或子流域平均)的使用、结合过去排泄观测数据的影响以及不同目标变量(排泄量 Q 或时差排泄量 dQ)的使用。然后,使用 ERA5 数据集作为气象强迫对模型进行训练,并使用 ECMWF 季节预报(SEAS5)数据进行业务预报。预测结果与基于过程的基准模型 wflow_sbm 进行了比较。本研究还通过利用有限的 SEAS5 数据集对预训练模型进行微调,探索了 DL 模型的灵活性。特征和目标选择的主要发现包括(1) 与流域平均方法相比,选择子流域平均气象变量可显著提高模型性能。(2) 与使用 Q 相比,使用 dQ 作为目标变量大大提高了短期预报精度,其平均绝对误差(MAE)为 25 m3 s-1,平均绝对百分比误差(MAPE)为 0.02,确保了预报初期的可靠性和精度。(3) 虽然加入历史排水量可以改善 Q 值的预报,但在短预报周期内对 dQ 值的预报影响并不明显。在使用 SEAS5 进行业务预报时,与 wflow_sbm 模型相比,DL 模型在低流量预报方面表现出较高的技能,这一点可以从所有提前期的连续概率技能评分(CRPSS)中值高于零得到证明,而且在短提前期内预报干旱事件的准确性更高。wflow_sbm 模型在较长的前导时间内显示出更高的精度。在微调方法的探索中,微调模型与非微调模型相比,在预报低流量事件方面短期内略有提高。总之,这项研究有助于利用深度学习方法推进小流量预测领域的发展。
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