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Benchmarking data-driven rainfall–runoff models in Great Britain: a comparison of long short-term memory (LSTM)-based models with four lumped conceptual models

机译:英国数据驱动的降雨-径流模型基准测试:基于长短期记忆 (LSTM) 的模型与四个集总概念模型的比较

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摘要

Long short-term memory (LSTM) models are recurrent neural networks from the field of deep learning (DL) which have shown promise for time series modelling, especially in conditions when data are abundant. Previous studies have demonstrated the applicability of LSTM-based models for rainfall–runoff modelling; however, LSTMs have not been tested on catchments in Great Britain (GB). Moreover, opportunities exist to use spatial and seasonal patterns in model performances to improve our understanding of hydrological processes and to examine the advantages and disadvantages of LSTM-based models for hydrological simulation. By training two LSTM architectures across a large sample of 669 catchments in GB, we demonstrate that the LSTM and the Entity Aware LSTM (EA LSTM) models simulate discharge with median Nash–Sutcliffe efficiency (NSE) scores of 0.88 and 0.86 respectively. We find that the LSTM-based models outperform a suite of benchmark conceptual models, suggesting an opportunity to use additional data to refine conceptual models. In summary, the LSTM-based models show the largest performance improvements in the north-east of Scotland and in south-east of England. The south-east of England remained difficult to model, however, in part due to the inability of the LSTMs configured in this study to learn groundwater processes, human abstractions and complex percolation properties from the hydro-meteorological variables typically employed for hydrological modelling.
机译:长短期记忆 (LSTM) 模型是来自深度学习 (DL) 领域的递归神经网络,在时间序列建模方面显示出前景,尤其是在数据丰富的条件下。先前的研究表明,基于LSTM的模型适用于降雨-径流建模;然而,LSTM 尚未在英国 (GB) 的集水区进行测试。此外,还有机会在模型性能中使用空间和季节模式,以提高我们对水文过程的理解,并研究基于LSTM的模型进行水文模拟的优缺点。通过在 GB 的 669 个集水区的大样本中训练两种 LSTM 架构,我们证明了 LSTM 和实体感知 LSTM (EA LSTM) 模型模拟放电,Nash-Sutcliffe 效率 (NSE) 中位数得分分别为 0.88 和 0.86。我们发现,基于LSTM的模型优于一套基准概念模型,这表明有机会使用额外的数据来完善概念模型。总之,基于 LSTM 的模型在苏格兰东北部和英格兰东南部显示出最大的性能改进。然而,英格兰东南部仍然难以建模,部分原因是本研究中配置的LSTM无法从通常用于水文建模的水文气象变量中学习地下水过程、人类抽取和复杂的渗流特性。

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