Evapotranspiration Partitioning Using Flux Tower Data in a Semi-Arid Ecosystem

IF 2.9 3区 地球科学 Q1 Environmental Science Hydrological Processes Pub Date : 2025-03-20 DOI:10.1002/hyp.70083
Kanak Kanti Kar, Ryan Haggerty, Harmandeep Sharma, Dipankar Dwivedi, Tirthankar Roy
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Abstract

Information about evapotranspiration (ET) and its components, that is, evaporation and transpiration, is crucial for a wide range of water and ecosystem management applications. However, partitioning ET into its two components is often challenging because of their spatiotemporal variabilities and lack of process understanding. This study developed a machine learning (ML) framework to shed light on ET processes and assess the relative importance of different drivers by incorporating hydrometeorology and biomass productivity variables. The Shapley Additive Explanations (SHAP) approach was applied to enhance explainability and rank the importance of ET drivers and their components. A total of 62 variables covering hydrometeorological and biomass productivity dimensions were considered from the Reynolds Creek Critical Zone Observatory (CZO) station in Idaho. The variable importance assessment identified the leading drivers individually for evaporation, transpiration and ET (soil water content for evaporation, vapour pressure deficit for transpiration and soil water content for ET). The results further highlighted the value of combining hydrometeorological and biomass productivity variables to achieve better predictability of ET processes.

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基于通量塔数据的半干旱生态系统蒸散发分配
关于蒸散发及其组成部分(即蒸发和蒸腾)的信息对于广泛的水和生态系统管理应用至关重要。然而,由于其时空变异性和缺乏对过程的理解,将ET划分为两个组成部分往往具有挑战性。本研究开发了一个机器学习(ML)框架,通过结合水文气象学和生物量生产力变量来阐明ET过程,并评估不同驱动因素的相对重要性。应用Shapley加性解释(SHAP)方法来提高可解释性,并对ET驱动因素及其组成部分的重要性进行排序。利用爱达荷州Reynolds Creek临界区观测站(CZO)数据,对水文气象和生物量生产力维度共62个变量进行了分析。变量重要性评估分别确定了蒸发、蒸腾和蒸散发的主要驱动因素(蒸发的土壤含水量、蒸腾的蒸汽压亏缺和蒸散发的土壤含水量)。研究结果进一步强调了将水文气象变量与生物量生产力变量相结合对ET过程实现更好的可预测性的价值。
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来源期刊
Hydrological Processes
Hydrological Processes 环境科学-水资源
CiteScore
6.00
自引率
12.50%
发文量
313
审稿时长
2-4 weeks
期刊介绍: Hydrological Processes is an international journal that publishes original scientific papers advancing understanding of the mechanisms underlying the movement and storage of water in the environment, and the interaction of water with geological, biogeochemical, atmospheric and ecological systems. Not all papers related to water resources are appropriate for submission to this journal; rather we seek papers that clearly articulate the role(s) of hydrological processes.
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