Refining water and carbon fluxes modeling in terrestrial ecosystems via plant hydraulics integration

IF 5.6 1区 农林科学 Q1 AGRONOMY
Shanshan Sun , Lingcheng Li , Zong-Liang Yang , Guiling Wang , Nate G. McDowell , Ashley M. Matheny , Jian Wu , Shiqin Xu , Hui Zheng , Miao Yu , Dagang Wang
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引用次数: 0

Abstract

Plant hydraulics substantially affects terrestrial water and carbon cycles by modulating water transport and carbon assimilation. Despite improved drought simulations in certain ecosystems through their integration into land surface models (LSMs), the broader application of plant hydraulics in diverse ecosystems and hydroclimates is still underexplored. In this study, we implemented the recently developed Noah-Multiparameterization Land Surface Model (Noah-MP LSM) equipped with a plant hydraulics scheme (Noah-MP-PHS) across 40 FLUXNET sites globally. Employing the Shuffled Complex Evolution-University of Arizona (SCE-UA) auto-calibration algorithm, we optimized key plant hydraulics parameters for these sites spanning eight vegetation types in both arid and humid climates. Noah-MP-PHS significantly improves the simulation of evapotranspiration (ET) and gross primary production (GPP) by better representing atmospheric and soil water stress compared to traditional soil hydraulic schemes (SHSs, such as Noah and CLM). The augmented Noah-MP-PHS models reduce surface flux overestimation and underestimation, exhibiting an average increase of 0.14 and 0.15 in Kling-Gupta Efficiency (KGE) compared to Noah and CLM, respectively. The explicit consideration of plant capacitance in PHS reveals substantial deep-layer and nocturnal root water uptake especially under dry conditions. We employed eXplainable Machine learning (XML) to quantify the model's relative sensitivity to newly introduced leaf-, stem- and root-related parameters in PHS. The sensitivity analysis reveals a rise in root parameter importance and a decline in leaf and stem parameters as conditions shift from humid to arid. These findings indicate that as aridity states vary, the most influential parameters affecting surface fluxes variation may change in parameter calibration for PHS applications. Our findings underscore the importance of incorporating plant hydraulics into LSMs to enhance simulations of terrestrial water and carbon dynamics. These findings are crucial for understanding ecosystem responses to global climate changes and guide the broader application of PHS at larger scales.
通过植物水力学集成完善陆地生态系统的水和碳通量建模
植物水力学通过调节水输送和碳同化,对陆地水循环和碳循环产生重大影响。尽管通过将植物水力学集成到地表模型(LSM)中,某些生态系统的干旱模拟得到了改善,但植物水力学在不同生态系统和水文气候中的更广泛应用仍未得到充分探索。在这项研究中,我们在全球 40 个 FLUXNET 站点实施了最近开发的配备植物水力学方案(Noah-MP-PHS)的 Noah-Multiparameterization Land Surface Model(Noah-MP LSM)。利用亚利桑那大学(SCE-UA)的洗牌复杂进化(Shuffled Complex Evolution)自动校准算法,我们优化了这些站点的关键植物水力学参数,涵盖了干旱和湿润气候下的八种植被类型。与传统的土壤水力方案(SHS,如 Noah 和 CLM)相比,Noah-MP-PHS 更好地体现了大气和土壤水分压力,从而大大提高了蒸散量(ET)和总初级生产力(GPP)的模拟效果。增强型 Noah-MP-PHS 模型减少了地表通量的高估和低估,与 Noah 和 CLM 相比,Kling-Gupta 效率 (KGE) 平均分别提高了 0.14 和 0.15。PHS 中对植物电容的明确考虑揭示了大量的深层和夜间根系吸水,尤其是在干旱条件下。我们采用可扩展机器学习(XML)来量化模型对 PHS 中新引入的叶、茎和根相关参数的相对敏感性。灵敏度分析表明,随着条件从潮湿转向干旱,根参数的重要性上升,而叶和茎参数的重要性下降。这些发现表明,随着干旱状态的变化,影响地表通量变化的最有影响力的参数可能会在 PHS 应用的参数校准中发生变化。我们的研究结果强调了将植物水力学纳入 LSM 以增强陆地水和碳动力学模拟的重要性。这些发现对于了解生态系统对全球气候变化的反应至关重要,并可指导 PHS 在更大尺度上的广泛应用。
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来源期刊
CiteScore
10.30
自引率
9.70%
发文量
415
审稿时长
69 days
期刊介绍: Agricultural and Forest Meteorology is an international journal for the publication of original articles and reviews on the inter-relationship between meteorology, agriculture, forestry, and natural ecosystems. Emphasis is on basic and applied scientific research relevant to practical problems in the field of plant and soil sciences, ecology and biogeochemistry as affected by weather as well as climate variability and change. Theoretical models should be tested against experimental data. Articles must appeal to an international audience. Special issues devoted to single topics are also published. Typical topics include canopy micrometeorology (e.g. canopy radiation transfer, turbulence near the ground, evapotranspiration, energy balance, fluxes of trace gases), micrometeorological instrumentation (e.g., sensors for trace gases, flux measurement instruments, radiation measurement techniques), aerobiology (e.g. the dispersion of pollen, spores, insects and pesticides), biometeorology (e.g. the effect of weather and climate on plant distribution, crop yield, water-use efficiency, and plant phenology), forest-fire/weather interactions, and feedbacks from vegetation to weather and the climate system.
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