Deep learning for monthly rainfall–runoff modelling: a large-sample comparison with conceptual models across Australia

Stephanie R. Clark, J. Lerat, J. Perraud, Peter Fitch
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Abstract

Abstract. A deep learning model designed for time series predictions, the long short-term memory (LSTM) architecture, is regularly producing reliable results in local and regional rainfall–runoff applications around the world. Recent large-sample hydrology studies in North America and Europe have shown the LSTM model to successfully match conceptual model performance at a daily time step over hundreds of catchments. Here we investigate how these models perform in producing monthly runoff predictions in the relatively dry and variable conditions of the Australian continent. The monthly time step matches historic data availability and is also important for future water resources planning; however, it provides significantly smaller training datasets than daily time series. In this study, a continental-scale comparison of monthly deep learning (LSTM) predictions to conceptual rainfall–runoff (WAPABA model) predictions is performed on almost 500 catchments across Australia with performance results aggregated over a variety of catchment sizes, flow conditions, and hydrological record lengths. The study period covers a wet phase followed by a prolonged drought, introducing challenges for making predictions outside of known conditions – challenges that will intensify as climate change progresses. The results show that LSTM models matched or exceeded WAPABA prediction performance for more than two-thirds of the study catchments, the largest performance gains of LSTM versus WAPABA occurred in large catchments, the LSTMs struggled less to generalise than the WAPABA models (e.g. making predictions under new conditions), and catchments with few training observations due to the monthly time step did not demonstrate a clear benefit with either WAPABA or LSTM.
月降雨-径流模型的深度学习:与澳大利亚各地概念模型的大样本比较
摘要一种专为时间序列预测设计的深度学习模型--长短期记忆(LSTM)架构,在世界各地的地方和区域降雨-径流应用中经常产生可靠的结果。最近在北美和欧洲进行的大样本水文研究表明,LSTM 模型在数百个流域的每日时间步长上成功地匹配了概念模型的性能。在此,我们研究了这些模型在澳大利亚大陆相对干旱多变的条件下如何进行月径流预测。月时间步长与历史数据的可用性相匹配,对未来的水资源规划也很重要;但是,它提供的训练数据集要比日时间序列小得多。在本研究中,对澳大利亚近 500 个集水区进行了月度深度学习(LSTM)预测与概念性降雨-径流(WAPABA 模型)预测的大陆尺度比较,并对各种集水区规模、流量条件和水文记录长度的性能结果进行了汇总。研究时段涵盖了先是潮湿后是长期干旱的阶段,这给在已知条件之外进行预测带来了挑战--随着气候变化的加剧,这种挑战也将加剧。研究结果表明,在三分之二以上的研究流域,LSTM 模型的预测性能达到或超过了 WAPABA 模型,LSTM 相对于 WAPABA 的最大性能提升出现在大型流域,与 WAPABA 模型相比,LSTM 在泛化(例如在新条件下进行预测)方面所做的努力较少,而由于月时间步长的原因,训练观测数据较少的流域在使用 WAPABA 或 LSTM 时均未显示出明显的优势。
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