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引用次数: 0
摘要
我们以质量保证感知器(MCP)为基本计算单元,利用有向图架构研究机器学习技术在开发简洁、可解释的集水尺度水文模型方面的适用性。在这里,我们关注的是单个地点的结构复杂性(深度),而不是大量流域样本的普遍适用性(广度)。我们的目标是发现一种最基本的表示方法(单元状态和流动路径的数量),这种表示方法代表了能解释给定集水区输入-状态-输出行为的主要过程,特别强调模拟全部范围(高、中、低)的水流动态。我们发现,在我们的研究地点,具有三个单元状态和两个主要流动路径的 "HyMod Like "结构实现了这种表示方法,但额外加入输入旁路机制可显著改善水文图的时间和形状,而加入双向地下水质量交换可显著增强对基流的模拟。总之,我们的研究结果表明了使用多种诊断指标对模型进行评估的重要性,同时也强调了在信息理论基础上正确选择和设计训练指标的必要性,这些指标更适合提取整个水流动态范围内的信息。本研究通过使用神经架构搜索为不同水文气候条件下的集水区确定适当的最小表征,为基于 MCP 的可解释区域尺度水文建模(使用大样本数据)奠定了基础。
Towards Interpretable Physical-Conceptual Catchment-Scale Hydrological Modeling Using the Mass-Conserving-Perceptron
We investigate the applicability of machine learning technologies to the development of parsimonious, interpretable, catchment-scale hydrologic models using directed-graph architectures based on the mass-conserving perceptron (MCP) as the fundamental computational unit. Here, we focus on architectural complexity (depth) at a single location, rather than universal applicability (breadth) across large samples of catchments. The goal is to discover a minimal representation (numbers of cell-states and flow paths) that represents the dominant processes that can explain the input-state-output behaviors of a given catchment, with particular emphasis given to simulating the full range (high, medium, and low) of flow dynamics. We find that a “HyMod Like” architecture with three cell-states and two major flow pathways achieves such a representation at our study location, but that the additional incorporation of an input-bypass mechanism significantly improves the timing and shape of the hydrograph, while the inclusion of bi-directional groundwater mass exchanges significantly enhances the simulation of baseflow. Overall, our results demonstrate the importance of using multiple diagnostic metrics for model evaluation, while highlighting the need for properly selecting and designing the training metrics based on information-theoretic foundations that are better suited to extracting information across the full range of flow dynamics. This study sets the stage for interpretable regional-scale MCP-based hydrological modeling (using large sample data) by using neural architecture search to determine appropriate minimal representations for catchments in different hydroclimatic regimes.
期刊介绍:
Water Resources Research (WRR) is an interdisciplinary journal that focuses on hydrology and water resources. It publishes original research in the natural and social sciences of water. It emphasizes the role of water in the Earth system, including physical, chemical, biological, and ecological processes in water resources research and management, including social, policy, and public health implications. It encompasses observational, experimental, theoretical, analytical, numerical, and data-driven approaches that advance the science of water and its management. Submissions are evaluated for their novelty, accuracy, significance, and broader implications of the findings.