论文标题
氢化物:利用河流结构进行水文建模
HydroNets: Leveraging River Structure for Hydrologic Modeling
论文作者
论文摘要
准确且可扩展的水文模型是几个重要应用的重要组成部分,从水资源管理到及时的洪水警告。但是,随着气候的变化,降水和降雨量的模式变化变得更加极端,可以解释产生的分布变化的准确训练数据变得更加稀缺。在这项工作中,我们提出了一种新型的水文模型家族,称为Hydronet,它利用河网络结构。 Hydronet是深度神经网络模型,旨在利用盆地特定的降雨跑信号和上游网络动力学,可以在更长的时间内提高预测。注入河流结构的先验知识可降低样品的复杂性,即使只有几年的数据,也可以进行可扩展,更准确的水文建模。我们对印度两个大盆地进行了一项实证研究,可令人信服地支持拟议模型及其优势。
Accurate and scalable hydrologic models are essential building blocks of several important applications, from water resource management to timely flood warnings. However, as the climate changes, precipitation and rainfall-runoff pattern variations become more extreme, and accurate training data that can account for the resulting distributional shifts become more scarce. In this work we present a novel family of hydrologic models, called HydroNets, which leverages river network structure. HydroNets are deep neural network models designed to exploit both basin specific rainfall-runoff signals, and upstream network dynamics, which can lead to improved predictions at longer horizons. The injection of the river structure prior knowledge reduces sample complexity and allows for scalable and more accurate hydrologic modeling even with only a few years of data. We present an empirical study over two large basins in India that convincingly support the proposed model and its advantages.