M. Glagolev, I. Terentieva, A. Sabrekov, D. V. Il’yasov, Dmitrii G. Zamolodchikov, Dmitrii V. Karelin
{"title":"MATHEMATICAL MODELS OF METHANE CONSUMPTION BY SOILS: A REVIEW","authors":"M. Glagolev, I. Terentieva, A. Sabrekov, D. V. Il’yasov, Dmitrii G. Zamolodchikov, Dmitrii V. Karelin","doi":"10.18822/edgcc622937","DOIUrl":null,"url":null,"abstract":"This review explores mathematical models that assess methane (CH4) uptake in aerated soils within terrestrial ecosystems. Methane, a potent greenhouse gas, is produced under anaerobic conditions. While substantial research has been dedicated to methane emissions from water-saturated soils over the past four decades, the absorption of CH4 by non-saturated soils, despite their expansive coverage, has received less focus. In tropical and subtropical soils, methane consumption constitutes less than 5% of the global uptake. However, there's limited data concerning methane consumption in temperate non-saturated soils, which are prevalent in forests, grasslands, steppes, and croplands. This data scarcity has resulted in estimate uncertainty: methane consumption ranges between 1% to 15% of the global methane sink attributed to photochemical degradation. \nThe mechanism of methane uptake by soils primarily stems from the dominance of methanotrophy over methanogenesis. In aerated soils, methane production by methanogens is absent (or minimal), with the primary source being the atmosphere. Methanotrophs, active in the upper soil layer, uptake this atmospheric methane. This absorption rate is influenced by both microbial oxidation and the diffusion of methane into the soil. The diffusion rate is notably determined by the atmospheric concentration of CH4 and the porosity of the soil's aeration – the fewer the pores filled with water, the more rapid the diffusion. The rate of oxidation, on the other hand, is influenced by the soil's temperature and moisture levels. Just as neither extremely dry soil (where microbial activity is limited due to water scarcity) nor overly wet soil (where microorganisms are deprived of oxygen) offer optimal conditions; temperature extremes – whether too cold or too hot – can also negatively impact the methane oxidation process. \nNowadays, direct measurements of both methane consumption and emission processes are routinely conducted using high-precision field gas analyzers. However, while CH4 emissions have garnered significant attention, data collection on methane consumption is still limited, particularly in remote locations. When in situ data are limited, mathematical models offer a reliable approach for extrapolating site-specific data to regional or global scales, enhancing our understanding of soil methane oxidation processes and how they respond to climatic shifts. In this study, we critically evaluates various mathematical models related to the topic, examining their strengths, limitations, and suitability for estimating large-scale methane consumption in aerated soils. \nThe field of CH4 cycle modeling currently employed a diverse range of mathematical models. These can be broadly classified into two main categories: (1) empirical models, and (2) physics-based models. The choice between these models often depends on the research objectives. On the other hand, models of regional ecology can be grouped into interpolation-extrapolation, analytical, and numerical categories. The interpolation-extrapolation models relate specific ecosystem properties (e.g. emissions) with their spatial or temporal coordinates. Analytical models capture the underlying physics, though achieving analytical solutions often requires simplifications to address the complexity of the equations. In contrast, numerical models are intricate and rely on numerical methods for their solutions. \nThe \"simple inventory\" is interpolation-extrapolation method that estimates methane uptake from soil-atmosphere interactions using basic formulations. Originally based on biome types, the accuracy of this method is relatively low but has been used in several global and regional methane studies. Recent approaches further classify soils into structural classes, linking methane absorption rates to these classifications. Dutaur and Verchot (2007) aimed to refine this method, investigating correlations with latitude, temperature, and precipitation. Their use of discrete categorization variables, like climate zones and ecosystem types, improved predictive accuracy of the model. However, extrapolating localized measurements to broader scales remains a challenge due to the limited data and ecosystem heterogeneity. \nAnalytical models leverage an understanding of the underlying physical processes to create equation-based representations. Early research indicated that the rate of soil methane absorption from the atmosphere was predominantly constrained by atmospheric diffusion (e.g. [Born et al.,1990; Potteretal.,1996]). This is because the ability of methanotrophs to consume methane often surpasses the diffusion transport mechanism's capacity. As a result, the peak rate of soil methane absorption from the atmosphere is capped by diffusion. \nAs research deepened into the factors affecting CH4 absorption in non-saturated soils, models grew in complexity. It became evident that microbial oxidation, alongside methane diffusion, played a pivotal role in determining methane consumption rates. For optimal methane oxidation, conditions must be warm and the soil should be neither too dry nor too wet. The relationship between nitrogen and methane absorption remains a topic of debate. Nitrogen fertilizers suppress methane oxidation, but these fertilizers also promote plant growth, affecting soil moisture and potentially influencing methane dynamics. \nThe MeMo model [Murguia-Flores et al., 2018] stands out as one of the most comprehensive adaptation, building upon the models of Ridgwelletal.[1999] (“R99”) and Curry [2007] (“C07”). The MeMo model incorporates factors, such as biome type, atmospheric methane concentration, soil temperature, nitrogen input, soil density, clay content, and soil moisture. Crucial enhancements were made to the original designs: a holistic analytical solution in a porous medium, refined nitrogen inhibition of methanotrophy, biome-specific influences on methane oxidation rate, and consideration of indigenous soil CH4 sources on methane uptake from the atmosphere. These modifications have notably improved the model's alignment with observational data. \nRegarding numerical models, few are specifically designed for assessing methane consumption, with more models being general ones that describe the methane dynamics in soil (incorporating oxidation, methane production, and transport). Intricate numerical models potentially offer more versatility than empirical or semi-empirical analytical ones: e.g. some analytical models often inherently assuming swamp methane oxidation as zero, not reflecting reality. However, numerical models usually require numerous site-specific parameters, such as soil usage, root zone depth, or even particular metabolic data. Because they're so tailored to specific sites, their use on a larger scale can be limited. Thus, using these models for regional methane uptake estimations doesn't guarantee high-quality results today. \nA recent trend in modeling natural processes focus on the ensemble approach. This strategy involves averaging results from multiple independent models focused on a shared metric. Comparative analysis shows that the highest quality is usually demonstrated by the \"ensemble average\" model. This is due to the fact that systematic errors of different models do not depend on each other and can be mutually compensated when averaging over the ensemble. The success of this approach has been confirmed in regularly published IPCC reports. The use of ensembles of models is also used in the study of methane fluxes from soil, both in solving direct and inverse problems [Glagolev et al., 2014; Poulter et al., 2017; Bergamaschi et al., 2018], but this approach has apparently not yet been used directly to estimate methane uptake by soils. \nMathematical models don't always align with experimental data for specific research sites, as noted by authors such as Ridgwell et al.[1999] and Murguia-Flores et al.[2018]. These models can sometimes overestimate or underestimate certain metrics. This inconsistency is further evident when different researchers identify similar parameters in their models but, based on various datasets, arrive at different values. For instance, while R99 utilized a value based on 13 measurements from diverse locations, С07's value was derived from a five-year observation in Colorado. Meanwhile, the MeMo model introduced values for four distinct biome types. Nevertheless, when these models are applied on a global scale, they provide reasonably accurate estimates of the planet's total methane uptake by soils. These estimates are in line with both basic inventories, like those from [Born et al., 1990], and more advanced methods, such as the inverse modeling by Hein et al. [1997]. This suggests that for larger regions, the models can still yield sensible CH4 absorption assessments, with overestimations in certain geographical areas being balanced out by underestimations in others.","PeriodicalId":336975,"journal":{"name":"Environmental Dynamics and Global Climate Change","volume":"31 31","pages":""},"PeriodicalIF":0.0000,"publicationDate":"2023-12-04","publicationTypes":"Journal Article","fieldsOfStudy":null,"isOpenAccess":false,"openAccessPdf":"","citationCount":"0","resultStr":null,"platform":"Semanticscholar","paperid":null,"PeriodicalName":"Environmental Dynamics and Global Climate Change","FirstCategoryId":"1085","ListUrlMain":"https://doi.org/10.18822/edgcc622937","RegionNum":0,"RegionCategory":null,"ArticlePicture":[],"TitleCN":null,"AbstractTextCN":null,"PMCID":null,"EPubDate":"","PubModel":"","JCR":"","JCRName":"","Score":null,"Total":0}
引用次数: 0
Abstract
This review explores mathematical models that assess methane (CH4) uptake in aerated soils within terrestrial ecosystems. Methane, a potent greenhouse gas, is produced under anaerobic conditions. While substantial research has been dedicated to methane emissions from water-saturated soils over the past four decades, the absorption of CH4 by non-saturated soils, despite their expansive coverage, has received less focus. In tropical and subtropical soils, methane consumption constitutes less than 5% of the global uptake. However, there's limited data concerning methane consumption in temperate non-saturated soils, which are prevalent in forests, grasslands, steppes, and croplands. This data scarcity has resulted in estimate uncertainty: methane consumption ranges between 1% to 15% of the global methane sink attributed to photochemical degradation.
The mechanism of methane uptake by soils primarily stems from the dominance of methanotrophy over methanogenesis. In aerated soils, methane production by methanogens is absent (or minimal), with the primary source being the atmosphere. Methanotrophs, active in the upper soil layer, uptake this atmospheric methane. This absorption rate is influenced by both microbial oxidation and the diffusion of methane into the soil. The diffusion rate is notably determined by the atmospheric concentration of CH4 and the porosity of the soil's aeration – the fewer the pores filled with water, the more rapid the diffusion. The rate of oxidation, on the other hand, is influenced by the soil's temperature and moisture levels. Just as neither extremely dry soil (where microbial activity is limited due to water scarcity) nor overly wet soil (where microorganisms are deprived of oxygen) offer optimal conditions; temperature extremes – whether too cold or too hot – can also negatively impact the methane oxidation process.
Nowadays, direct measurements of both methane consumption and emission processes are routinely conducted using high-precision field gas analyzers. However, while CH4 emissions have garnered significant attention, data collection on methane consumption is still limited, particularly in remote locations. When in situ data are limited, mathematical models offer a reliable approach for extrapolating site-specific data to regional or global scales, enhancing our understanding of soil methane oxidation processes and how they respond to climatic shifts. In this study, we critically evaluates various mathematical models related to the topic, examining their strengths, limitations, and suitability for estimating large-scale methane consumption in aerated soils.
The field of CH4 cycle modeling currently employed a diverse range of mathematical models. These can be broadly classified into two main categories: (1) empirical models, and (2) physics-based models. The choice between these models often depends on the research objectives. On the other hand, models of regional ecology can be grouped into interpolation-extrapolation, analytical, and numerical categories. The interpolation-extrapolation models relate specific ecosystem properties (e.g. emissions) with their spatial or temporal coordinates. Analytical models capture the underlying physics, though achieving analytical solutions often requires simplifications to address the complexity of the equations. In contrast, numerical models are intricate and rely on numerical methods for their solutions.
The "simple inventory" is interpolation-extrapolation method that estimates methane uptake from soil-atmosphere interactions using basic formulations. Originally based on biome types, the accuracy of this method is relatively low but has been used in several global and regional methane studies. Recent approaches further classify soils into structural classes, linking methane absorption rates to these classifications. Dutaur and Verchot (2007) aimed to refine this method, investigating correlations with latitude, temperature, and precipitation. Their use of discrete categorization variables, like climate zones and ecosystem types, improved predictive accuracy of the model. However, extrapolating localized measurements to broader scales remains a challenge due to the limited data and ecosystem heterogeneity.
Analytical models leverage an understanding of the underlying physical processes to create equation-based representations. Early research indicated that the rate of soil methane absorption from the atmosphere was predominantly constrained by atmospheric diffusion (e.g. [Born et al.,1990; Potteretal.,1996]). This is because the ability of methanotrophs to consume methane often surpasses the diffusion transport mechanism's capacity. As a result, the peak rate of soil methane absorption from the atmosphere is capped by diffusion.
As research deepened into the factors affecting CH4 absorption in non-saturated soils, models grew in complexity. It became evident that microbial oxidation, alongside methane diffusion, played a pivotal role in determining methane consumption rates. For optimal methane oxidation, conditions must be warm and the soil should be neither too dry nor too wet. The relationship between nitrogen and methane absorption remains a topic of debate. Nitrogen fertilizers suppress methane oxidation, but these fertilizers also promote plant growth, affecting soil moisture and potentially influencing methane dynamics.
The MeMo model [Murguia-Flores et al., 2018] stands out as one of the most comprehensive adaptation, building upon the models of Ridgwelletal.[1999] (“R99”) and Curry [2007] (“C07”). The MeMo model incorporates factors, such as biome type, atmospheric methane concentration, soil temperature, nitrogen input, soil density, clay content, and soil moisture. Crucial enhancements were made to the original designs: a holistic analytical solution in a porous medium, refined nitrogen inhibition of methanotrophy, biome-specific influences on methane oxidation rate, and consideration of indigenous soil CH4 sources on methane uptake from the atmosphere. These modifications have notably improved the model's alignment with observational data.
Regarding numerical models, few are specifically designed for assessing methane consumption, with more models being general ones that describe the methane dynamics in soil (incorporating oxidation, methane production, and transport). Intricate numerical models potentially offer more versatility than empirical or semi-empirical analytical ones: e.g. some analytical models often inherently assuming swamp methane oxidation as zero, not reflecting reality. However, numerical models usually require numerous site-specific parameters, such as soil usage, root zone depth, or even particular metabolic data. Because they're so tailored to specific sites, their use on a larger scale can be limited. Thus, using these models for regional methane uptake estimations doesn't guarantee high-quality results today.
A recent trend in modeling natural processes focus on the ensemble approach. This strategy involves averaging results from multiple independent models focused on a shared metric. Comparative analysis shows that the highest quality is usually demonstrated by the "ensemble average" model. This is due to the fact that systematic errors of different models do not depend on each other and can be mutually compensated when averaging over the ensemble. The success of this approach has been confirmed in regularly published IPCC reports. The use of ensembles of models is also used in the study of methane fluxes from soil, both in solving direct and inverse problems [Glagolev et al., 2014; Poulter et al., 2017; Bergamaschi et al., 2018], but this approach has apparently not yet been used directly to estimate methane uptake by soils.
Mathematical models don't always align with experimental data for specific research sites, as noted by authors such as Ridgwell et al.[1999] and Murguia-Flores et al.[2018]. These models can sometimes overestimate or underestimate certain metrics. This inconsistency is further evident when different researchers identify similar parameters in their models but, based on various datasets, arrive at different values. For instance, while R99 utilized a value based on 13 measurements from diverse locations, С07's value was derived from a five-year observation in Colorado. Meanwhile, the MeMo model introduced values for four distinct biome types. Nevertheless, when these models are applied on a global scale, they provide reasonably accurate estimates of the planet's total methane uptake by soils. These estimates are in line with both basic inventories, like those from [Born et al., 1990], and more advanced methods, such as the inverse modeling by Hein et al. [1997]. This suggests that for larger regions, the models can still yield sensible CH4 absorption assessments, with overestimations in certain geographical areas being balanced out by underestimations in others.
本文综述了评估陆地生态系统中曝气土壤中甲烷(CH4)吸收的数学模型。甲烷是一种强效温室气体,是在厌氧条件下产生的。过去四十年来,人们对饱和水土壤的甲烷排放进行了大量的研究,而非饱和土壤对CH4的吸收,尽管其覆盖范围很广,却很少受到关注。在热带和亚热带土壤中,甲烷消耗占全球吸收量的不到5%。然而,关于温带非饱和土壤中甲烷消耗的数据有限,这些土壤普遍存在于森林、草原、草原和农田中。这种数据的缺乏导致了估算的不确定性:由于光化学降解,甲烷消耗量在全球甲烷汇的1%至15%之间。土壤对甲烷的吸收机制主要源于甲烷氧化作用大于甲烷生成作用。在曝气土壤中,产甲烷菌产生的甲烷不存在(或极少),其主要来源是大气。在上层土壤中活跃的甲烷氧化菌吸收了大气中的甲烷。这一吸收率受到微生物氧化和甲烷向土壤扩散两方面的影响。扩散速率主要由大气CH4浓度和土壤通气孔隙度决定,充水孔隙越少,扩散速度越快。另一方面,氧化速率受土壤温度和湿度的影响。正如极端干燥的土壤(微生物活动由于缺水而受到限制)和过度潮湿的土壤(微生物缺氧)都不能提供最佳条件一样;极端温度——无论是太冷还是太热——也会对甲烷氧化过程产生负面影响。如今,直接测量甲烷消耗和排放过程通常使用高精度现场气体分析仪进行。然而,尽管甲烷排放引起了极大的关注,但关于甲烷消耗的数据收集仍然有限,特别是在偏远地区。当原位数据有限时,数学模型为将特定地点的数据外推到区域或全球尺度提供了可靠的方法,增强了我们对土壤甲烷氧化过程及其对气候变化的响应的理解。在本研究中,我们批判性地评估了与该主题相关的各种数学模型,检查了它们的优势、局限性和用于估计曝气土壤中大规模甲烷消耗的适用性。目前,CH4循环建模领域采用了多种数学模型。这些可以大致分为两大类:(1)经验模型,(2)基于物理的模型。这些模型之间的选择往往取决于研究目标。另一方面,区域生态模型可分为内插外推法、解析法和数值法三类。内插-外推模型将特定的生态系统属性(如排放)与其空间或时间坐标联系起来。分析模型捕获了潜在的物理,尽管获得分析解通常需要简化以解决方程的复杂性。相比之下,数值模型是复杂的,并且依赖于数值方法来求解。“简单清单”是使用基本公式估算土壤-大气相互作用中甲烷吸收量的内插-外推方法。该方法最初基于生物群系类型,精度相对较低,但已在若干全球和区域甲烷研究中使用。最近的方法进一步将土壤分为结构类,并将甲烷吸收率与这些分类联系起来。Dutaur和Verchot(2007)旨在改进这种方法,调查与纬度、温度和降水的相关性。他们使用离散的分类变量,如气候带和生态系统类型,提高了模型的预测准确性。然而,由于有限的数据和生态系统的异质性,将局部测量外推到更大的尺度仍然是一个挑战。分析模型利用对底层物理过程的理解来创建基于方程的表示。早期研究表明,土壤从大气中吸收甲烷的速率主要受大气扩散的限制(例如[Born et al.,1990;Potteretal, 1996)。这是因为甲烷氧化菌消耗甲烷的能力往往超过扩散输送机制的能力。结果,土壤从大气中吸收甲烷的峰值速率受到扩散的限制。随着对非饱和土壤CH4吸收影响因素研究的深入,模型越来越复杂。 很明显,微生物氧化和甲烷扩散在决定甲烷消耗率方面起着关键作用。为了实现最佳的甲烷氧化,条件必须是温暖的,土壤既不能太干也不能太湿。氮和甲烷吸收之间的关系仍然是一个有争议的话题。氮肥抑制甲烷氧化,但这些肥料也促进植物生长,影响土壤水分,并可能影响甲烷动态。备忘录模型[Murguia-Flores等人,2018]以Ridgwelletal的模型为基础,作为最全面的适应之一而脱颖而出。[1999](R99)和库里[2007](C07)。MeMo模型综合了生物群落类型、大气甲烷浓度、土壤温度、氮输入、土壤密度、粘土含量和土壤水分等因素。对原始设计进行了重要的改进:多孔介质中的整体分析解决方案,精制氮对甲烷氧化的抑制作用,生物群落对甲烷氧化速率的特定影响,以及考虑本地土壤CH4源对大气中甲烷吸收的影响。这些修改显著提高了模型与观测数据的一致性。关于数值模型,很少有专门为评估甲烷消耗而设计的,更多的模型是描述土壤中甲烷动态(包括氧化、甲烷产生和运输)的一般模型。复杂的数值模型可能比经验或半经验分析模型提供更多的通用性:例如,一些分析模型通常固有地假设沼泽甲烷氧化为零,而不是反映现实。然而,数值模型通常需要许多特定地点的参数,如土壤利用,根区深度,甚至特定的代谢数据。因为它们是为特定地点量身定制的,所以它们在更大规模上的使用可能会受到限制。因此,目前使用这些模型进行区域甲烷吸收估算并不能保证高质量的结果。自然过程建模的最新趋势集中在集成方法上。该策略涉及对多个独立模型的结果进行平均,这些模型关注于一个共享指标。对比分析表明,“集合平均”模式通常表现出最高的质量。这是由于不同模型的系统误差不依赖于彼此,并且在对集合进行平均时可以相互补偿。这种方法的成功已在IPCC定期发表的报告中得到证实。在土壤甲烷通量的研究中也使用了模型集合,既用于解决正问题,也用于解决反问题[Glagolev等人,2014;Poulter等人,2017;Bergamaschi等人,2018],但这种方法显然尚未直接用于估算土壤的甲烷吸收量。Ridgwell等人[1999]和Murguia-Flores等人[2018]等人指出,数学模型并不总是与特定研究地点的实验数据一致。这些模型有时会高估或低估某些指标。当不同的研究人员在他们的模型中确定相似的参数,但基于不同的数据集,得出不同的值时,这种不一致性进一步明显。例如,R99使用的是基于13个不同地点的测量值,而С07的值则来自科罗拉多州的5年观测。同时,MeMo模型引入了四种不同生物群系类型的值。然而,当这些模型在全球范围内应用时,它们提供了对地球上土壤吸收甲烷总量的合理准确的估计。这些估计既符合基本清单,如[Born等人,1990],也符合更先进的方法,如Hein等人[1997]的逆建模。这表明,对于较大的区域,模式仍然可以得出合理的CH4吸收评估,某些地理区域的高估被其他地理区域的低估所抵消。