{"title":"基于过程的植物水源稳定同位素混合模型","authors":"Eric J. Neil, Han Fu, Bingcheng Si","doi":"10.1002/eco.2611","DOIUrl":null,"url":null,"abstract":"<p>Stable isotopes of hydrogen and oxygen in water are common tools for investigating water uptake apportionment, but many of the existing methods rely on simple linear mixing approaches that do not mechanistically incorporate additional information about site physical properties and conditions. Here, we develop a ‘physically based root water uptake isotope mixing estimation’ model (PRIME) that combines a continuous and parametric probability density function for root water uptake with site physical data in a process-based linear mixing framework. To demonstrate the application of PRIME, water uptake patterns of boreal forest <i>Pinus banksiana</i> trees were estimated on four dates in 2019. To aid in validation, estimates were compared with that of the Bayesian linear mixing model framework, MixSIAR. 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引用次数: 0
摘要
水中氢和氧的稳定同位素是研究吸水分配的常用工具,但现有的许多方法都依赖于简单的线性混合方法,没有从机制上纳入有关地点物理特性和条件的额外信息。在此,我们开发了一种 "基于物理的根系吸水同位素混合估算 "模型(PRIME),该模型在基于过程的线性混合框架中将根系吸水的连续参数概率密度函数与地点物理数据相结合。为了演示 PRIME 的应用,在 2019 年的四个日期对北方森林松树的吸水模式进行了估算。为了帮助验证,将估算结果与贝叶斯线性混合模型框架 MixSIAR 进行了比较。这两种方法得出了相似的结果,但由于其连续性和参数性,PRIME 提供的估算结果在分辨率、确定性和模型简约性方面更胜一筹。虽然两种模型都在混合框架中加入了额外的物理信息,但 PRIME 是以机理的方式加入的,因此比 MixSIAR 采用的纯经验方法更有效地反映了相关的水文过程。此外,由于 PRIME 使用连续函数来描述预测的吸水模式,因此用户可以通过对所需深度范围进行积分,以基本无限的分辨率来量化吸水。这些研究结果表明了利用连续、参数化和基于过程的混合模型来估算根系吸水分配的优势,从而为植物水分来源提供了一个相对简单但功能强大的工具。
A process-based water stable isotope mixing model for plant water sourcing
Stable isotopes of hydrogen and oxygen in water are common tools for investigating water uptake apportionment, but many of the existing methods rely on simple linear mixing approaches that do not mechanistically incorporate additional information about site physical properties and conditions. Here, we develop a ‘physically based root water uptake isotope mixing estimation’ model (PRIME) that combines a continuous and parametric probability density function for root water uptake with site physical data in a process-based linear mixing framework. To demonstrate the application of PRIME, water uptake patterns of boreal forest Pinus banksiana trees were estimated on four dates in 2019. To aid in validation, estimates were compared with that of the Bayesian linear mixing model framework, MixSIAR. The two approaches provided similar results, but due to its continuous and parametric nature, PRIME provided estimates of superior resolution, certainty, and model parsimony. Although both models incorporate additional physical information into their mixing frameworks, PRIME does so in a mechanistic manner, thereby reflecting the relevant hydrological processes more effectively than the purely empirical approach taken by MixSIAR. Furthermore, because PRIME uses a continuous function to describe the predicted uptake pattern, it allows users to quantify water uptake with essentially infinite resolution, through integration over the desired depth ranges. These findings demonstrate the advantages of utilizing a continuous, parametric, and process-based mixing model to estimate root water uptake apportionment, thus providing a relatively simple yet powerful tool with which to approach plant water sourcing.
期刊介绍:
Ecohydrology is an international journal publishing original scientific and review papers that aim to improve understanding of processes at the interface between ecology and hydrology and associated applications related to environmental management.
Ecohydrology seeks to increase interdisciplinary insights by placing particular emphasis on interactions and associated feedbacks in both space and time between ecological systems and the hydrological cycle. Research contributions are solicited from disciplines focusing on the physical, ecological, biological, biogeochemical, geomorphological, drainage basin, mathematical and methodological aspects of ecohydrology. Research in both terrestrial and aquatic systems is of interest provided it explicitly links ecological systems and the hydrologic cycle; research such as aquatic ecological, channel engineering, or ecological or hydrological modelling is less appropriate for the journal unless it specifically addresses the criteria above. Manuscripts describing individual case studies are of interest in cases where broader insights are discussed beyond site- and species-specific results.