Evaluation of streamflow predictions from LSTM models in water- and energy-limited regions in the United States

Kul Khand , Gabriel B. Senay
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Abstract

The application of Long Short-Term Memory (LSTM) models for streamflow predictions has been an area of rapid development, supported by advancements in computing technology, increasing availability of spatiotemporal data, and availability of historical data that allows for training data-driven LSTM models. Several studies have focused on improving the performance of LSTM models; however, few studies have assessed the applicability of these LSTM models across different hydroclimate regions. This study investigated the single-basin trained local (one model for each basin), multi-basin trained regional (one model for one region), and grand (one model for several regions) models for predicting daily streamflow in water-limited Great Basin (18 basins) and energy-limited New England (27 basins) regions in the United States using the CAMELS (Catchment Attributes and Meteorology for Large-sample Studies) data set. The results show a general pattern of higher accuracy in daily streamflow predictions from the regional model when compared to local or grand models for most basins in the New England region. For the Great Basin region, local models provided smaller errors for most basins and substantially lower for those basins with relatively larger errors from the regional and grand models. The evaluation of one-layer and three-layer LSTM network architectures trained with 1-day lag information indicates that the addition of model complexity by increasing the number of layers may not necessarily increase the model skill for improving streamflow predictions. Findings from our study highlight the strengths and limitations of LSTM models across contrasting hydroclimate regions in the United States, which could be useful for local and regional scale decisions using standalone or potential integration of data-driven LSTM models with physics-based hydrological models.

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评估 LSTM 模型在美国限水和限能地区的水流预测结果
由于计算技术的进步、时空数据可用性的提高以及可用于训练数据驱动型 LSTM 模型的历史数据的可用性,将长短期记忆(LSTM)模型应用于河水流量预测已成为一个快速发展的领域。一些研究重点关注提高 LSTM 模型的性能,但很少有研究评估这些 LSTM 模型在不同水文气候区域的适用性。本研究利用 CAMELS(用于大样本研究的流域属性和气象学)数据集,研究了单流域训练的本地模型(每个流域一个模型)、多流域训练的区域模型(一个区域一个模型)和大模型(多个区域一个模型),用于预测美国水量有限的大盆地(18 个流域)和能量有限的新英格兰(27 个流域)地区的日溪流。结果表明,在新英格兰地区的大多数流域,区域模式与地方模式或总体模式相比,对日径流量预测的精度普遍较高。在大盆地地区,地方模式对大多数流域的预测误差较小,而对那些区域模式和总体模式误差相对较大的流域的预测误差则要小得多。对使用 1 天滞后信息训练的单层和三层 LSTM 网络结构的评估表明,通过增加层数来增加模型的复杂性并不一定能提高模型的技能,从而改善对河水流量的预测。我们的研究结果凸显了 LSTM 模型在美国不同水文气候区域的优势和局限性,这对于使用独立的 LSTM 模型或将数据驱动的 LSTM 模型与基于物理的水文模型进行潜在整合的地方和区域决策非常有用。
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来源期刊
Machine learning with applications
Machine learning with applications Management Science and Operations Research, Artificial Intelligence, Computer Science Applications
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98 days
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