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<article xmlns:mml="http://www.w3.org/1998/Math/MathML" xmlns:xlink="http://www.w3.org/1999/xlink" xmlns:xsi="http://www.w3.org/2001/XMLSchema-instance" xmlns:ali="http://www.niso.org/schemas/ali/1.0/" article-type="other" dtd-version="1.2" xml:lang="en"><front><journal-meta><journal-id journal-id-type="publisher-id">Environmental Dynamics and Global Climate Change</journal-id><journal-title-group><journal-title xml:lang="en">Environmental Dynamics and Global Climate Change</journal-title><trans-title-group xml:lang="ru"><trans-title>Environmental Dynamics and Global Climate Change</trans-title></trans-title-group></journal-title-group><issn publication-format="print">2218-4422</issn><issn publication-format="electronic">2541-9307</issn><publisher><publisher-name xml:lang="en">Yugra State University</publisher-name></publisher></journal-meta><article-meta><article-id pub-id-type="publisher-id">625761</article-id><article-id pub-id-type="doi">10.18822/edgcc625761</article-id><article-categories><subj-group subj-group-type="toc-heading" xml:lang="en"><subject>Theoretical works</subject></subj-group><subj-group subj-group-type="toc-heading" xml:lang="ru"><subject>Теоретические работы</subject></subj-group><subj-group subj-group-type="article-type"><subject>Unknown</subject></subj-group></article-categories><title-group><article-title xml:lang="en">Multi-model ensemble successfully predicted atmospheric methane consumption in soils across the complex landscape</article-title><trans-title-group xml:lang="ru"><trans-title>Multi-model ensemble successfully predicted atmospheric methane consumption in soils across the complex landscape</trans-title></trans-title-group></title-group><contrib-group><contrib contrib-type="author"><name><surname>Glagolev</surname><given-names>M. V.</given-names></name><email>m_glagolev@mail.ru</email><xref ref-type="aff" rid="aff1"/><xref ref-type="aff" rid="aff2"/><xref ref-type="aff" rid="aff3"/></contrib><contrib contrib-type="author"><name><surname>Il’yasov</surname><given-names>D. V.</given-names></name><address><country country="RU">Russian Federation</country></address><email>d_ilyasov@ugrasu.ru</email><xref ref-type="aff" rid="aff3"/></contrib><contrib contrib-type="author"><name><surname>Sabrekov</surname><given-names>A. F.</given-names></name><address><country country="RU">Russian Federation</country></address><email>sabrekovaf@gmail.com</email><xref ref-type="aff" rid="aff3"/></contrib><contrib contrib-type="author"><name-alternatives><name xml:lang="en"><surname>Terentieva</surname><given-names>Irina E.</given-names></name><name xml:lang="ru"><surname>Terentieva</surname><given-names>I. E.</given-names></name></name-alternatives><address><country country="CA">Canada</country></address><email>kleptsova@gmail.com</email><xref ref-type="aff" rid="aff4"/></contrib><contrib contrib-type="author"><name><surname>Karelin</surname><given-names>D. V.</given-names></name><address><country country="RU">Russian Federation</country></address><email>dkarelin7@gmail.com</email><xref ref-type="aff" rid="aff5"/><xref ref-type="aff" rid="aff6"/></contrib></contrib-group><aff-alternatives id="aff1"><aff><institution xml:lang="en">Lomonosov Moscow State University, Moscow, Russia</institution></aff><aff><institution xml:lang="ru">Московский государственный университет им. М.В. Ломоносова</institution></aff></aff-alternatives><aff-alternatives id="aff2"><aff><institution xml:lang="en">Institute of Forest Science, Russian Academy of Sciences, Uspenskoe (Moscow region), Russia</institution></aff><aff><institution xml:lang="ru">Институт лесоведения РАН</institution></aff></aff-alternatives><aff-alternatives id="aff3"><aff><institution xml:lang="en">Yugra State University, Khanty-Mansyisk, Russia</institution></aff><aff><institution xml:lang="ru">Югорский государственный университет</institution></aff></aff-alternatives><aff-alternatives id="aff4"><aff><institution xml:lang="en">University of Calgary</institution></aff><aff><institution xml:lang="ru"></institution></aff></aff-alternatives><aff-alternatives id="aff5"><aff><institution xml:lang="en">Institute of Geography Russian Academy of Sciences</institution></aff><aff><institution xml:lang="ru">Институт географии РАН</institution></aff></aff-alternatives><aff id="aff6"><institution></institution></aff><pub-date date-type="pub" iso-8601-date="2024-01-18" publication-format="electronic"><day>18</day><month>01</month><year>2024</year></pub-date><volume>14</volume><issue>4</issue><issue-title xml:lang="ru"/><fpage>209</fpage><lpage>236</lpage><history><date date-type="received" iso-8601-date="2024-01-18"><day>18</day><month>01</month><year>2024</year></date></history><permissions><copyright-statement xml:lang="en">Copyright ©; 2024, Glagolev M.V., Il’yasov D.V., Sabrekov A.F., Terentieva I.E., Karelin D.V.</copyright-statement><copyright-statement xml:lang="ru">Copyright ©; 2024, Glagolev M.V., Il’yasov D.V., Sabrekov A.F., Terentieva I.E., Karelin D.V.</copyright-statement><copyright-year>2024</copyright-year><copyright-holder xml:lang="en">Glagolev M.V., Il’yasov D.V., Sabrekov A.F., Terentieva I.E., Karelin D.V.</copyright-holder><copyright-holder xml:lang="ru">Glagolev M.V., Il’yasov D.V., Sabrekov A.F., Terentieva I.E., Karelin D.V.</copyright-holder><ali:free_to_read xmlns:ali="http://www.niso.org/schemas/ali/1.0/"/><license><ali:license_ref xmlns:ali="http://www.niso.org/schemas/ali/1.0/">https://creativecommons.org/licenses/by-nd/4.0</ali:license_ref></license></permissions><self-uri xlink:href="https://edgccjournal.org/EDGCC/article/view/625761">https://edgccjournal.org/EDGCC/article/view/625761</self-uri><abstract xml:lang="en"><p><italic>Methane consumption by soils is a crucial component of the CH<sub>4</sub> and carbon cycle. It is essential to thoroughly investigate CH<sub>4</sub> uptake by soils, particularly considering its anticipated increase by the end of the century [Zhuang et al., 2013]. Numerous mathematical models, both empirical and detailed biogeochemical [Glagolev et al., 2023], have been developed to quantify methane consumption by soils from the atmosphere. These models are instrumental in handling spatio-temporal variability and can offer reliable estimates of regional and global methane consumption by soils. Furthermore, they enhance our comprehension of the physical and biological processes that influence methanotrophy intensity. Consequently, we can forecast the response of CH<sub>4</sub> consumption by soil to global climate shifts [Murguia-Flores et al., 2018], especially since many models consider the effects of atmospheric CH<sub>4</sub> concentration changes on methanotrophy and ecosystem type [Zhuang et al., 2013].</italic></p> <p><italic>In addition to the utilization of individual models, such as those cited by [Hagedorn et al., 2005; Glagolev et al., 2014; Ito et al., 2016; Silva et al., 2016], there has been extensive advancement in employing multiple models in an ensemble format. This approach aims to integrate as much a priori information as feasible [Lapko, 2002]. Throughout the 20th century, the concept of ensemble modeling evolved from merely drawing conclusions based on multiple independent experts (F. Sanders, 1963) to structured ensemble mathematical modeling [Hagedorn et al., 2005]. In this context, the term "ensemble" consistently refers to a collection containing more than one model.</italic></p> <p><italic>Complexities in describing the physiology and biochemistry of methanotrophic bacteria in natural environments [Bedard, Knowles, 1989; Hanson, Hanson, 1996; Belova et al., 2013; Oshkin et al., 2014] make it difficult to develop accurate biological models and determine their specific biokinetic parameters [Curry, 2007]. At the same time, broader and often empirical models, such as those by [Potter et al., 1996; Ridgwell et al., 1999; Curry, 2007; Murguia-Flores et al., 2018], demonstrate reasonable estimates of global methane consumption. Employing model ensembles could enhance accuracy, not just in global and large-scale modeling, but also at the granular level of local study sites. Nonetheless, ensemble modeling doesn't always ensure optimal outcomes, as all models within an ensemble might overlook a biological process or effect that significantly influences the dynamics of a real ecosystem [Ito et al., 2016]. For instance, no model considered anaerobic methane oxidation until this process was empirically identified [Xu et al., 2015]. Therefore, it's crucial to validate the realism of an ensemble against specific in situ data for every application. This study aimed to develop an ensemble model describing methane consumption by soils and to test its efficacy on a randomly selected study site.</italic></p> <p><italic>In our research, we closely examined and replicated the algorithms of four soil methane consumption models: the modification by Glagolev, Filippov [2011] of Dörr et al. [1993], Curry's model [2007], the CH<sub>4</sub> consumption block from the DLEM model [Tian et al., 2010], and the MeMo model excluding autochthonous CH<sub>4</sub> sources [Murguia-Flores et al., 2018]. Using these, we developed an ensemble of four models. For experimental in situ data, we utilized field measurements from the Kursk region in Russia. Additionally, we introduced a method to average the ensemble model's prediction by assigning weight coefficients to each model. This approach acknowledges the idea that the total available information doubles every few years. Thus, newer models were given higher weights, while older ones received lower weights.</italic></p> <p><italic>The model ensemble effectively predicted CH<sub>4</sub> consumption based on in situ measurements, albeit with a notably broad confidence interval for the predictions. Notably, there was minimal variance between the standard averaging of model predictions and weighted averaging. As anticipated, individual models underperformed compared to the ensemble. We computed the Theil inconsistency coefficient for various types of means, such as quadratic mean, cubic mean, and biquadratic mean, among others [Gini, Barbensi, 1958], both for ensemble modeling results and individual models. The ensemble predictions, when averaged using diverse methods, yielded Theil inconsistency coefficients ranging from 0.156 to 0.267. The most favorable outcome (0.156) was derived from the power mean with a power index of 0.7. However, the power mean presents a challenge as its power index isn't predetermined but chosen to best fit the experimental data. A similar limitation exists for the exponential mean. While the experimental data allows for the selection of a parameter yielding a Theil coefficient of 0.157, pre-determining this optimal value (1.3) is not feasible. Regarding other estimations that don't necessitate selecting optimal parameters, it was surprising to find that one of the best results (Theil's coefficient = 0.166) came from the half-sum of extreme terms. Surprisingly, the median provided a less satisfactory result, with a Theil's coefficient of 0.222.</italic></p> <p><italic>The merit of the ensemble approach stems from P.D. Thompson's 1977 observation, which he stated assertively: "It is an indisputable fact that two or more inaccurate, but independent predictions of the same event can be combined in such a way that their "combined" forecast, on average, will be more accurate than any of these individual forecasts" [Hagedorn et al., 2005]. Examining our ensemble of models through this lens reveals a limitation, as the condition of independence isn't fully satisfied. The models by Dörr et al. [1993], Curry [2007], and MeMo [Murguia-Flores et al., 2018] share underlying similarities and can be seen as part of a cohesive cluster. Only DLEM, crafted on entirely distinct principles, stands apart from these models. To enhance the ensemble's robustness in future iterations, the inclusion of genuinely independent models, such as a modified version of MDM [Zhuang et al., 2013] and the model by Ridgwell et al. [1999], is recommended.</italic></p> <p><italic>The ensemble, comprising four models and implemented without specific parameter adjustments, effectively captured methane consumption across diverse sites in the Kursk region, such as fields and forests. On average, the relative simulation error for all these sites was 36%, with the experimental data displaying a variation of 26%. Notably, while the variation is modest for this dataset, methane absorption measurements generally tend to fluctuate by several tens of percent [Crill, 1991, Fig. 1; Ambus, Robertson, 2006, Fig. 3; Kleptsova et al., 2010; Glagolev et al., 2012]. Considering this broader perspective, the simulation error achieved is indeed favorable.</italic></p> <p><italic>Upon evaluating different methods for combining individual model results within the ensemble (specifically those methods that can be applied without prior parameter adjustments based on experimental data), it was found that the most straightforward operators yielded the best outcomes. This assessment was based on Theil's inequality coefficient criterion. Both the semi-sum of extreme terms and the arithmetic mean stood out in their performance. However, a significant drawback of the constructed ensemble is the extensive confidence interval for its predictions, averaging ±78% at a 90% probability level. We hypothesize that expanding the number of independent models within the ensemble could potentially narrow this interval.</italic></p></abstract><trans-abstract xml:lang="ru"><p><italic>Поглощение метана почвой, особенно в свете его возможного усиления к концу века, является существенной составляющей цикла метана (и цикла углерода вообще) и нуждается во всестороннем изучении. На основе 4 матемаматических моделей реализован ансамблевый подход к математическому моделированию поглощения метана на примере почв различных объектов Курской области (пашни, леса и др.). Средняя (по всем объектам) относительная ошибка имитации составила 36%, а средний разброс экспериментальных данных – 26%. Проверка различных способов объединения результатов отдельных моделей в ансамбле (из числа тех способов, которые могут быть выполнены априори – без подбора каких-либо параметров по экспериментальным данным) показала, что наилучшие результаты (по критерию несовпадения Тейла) демонстрируют простейшие операторы: полусумма крайних членов и среднее арифметическое. К сожалению, построенный ансамбль дает очень большой доверительный интервал прогноза (в среднем ±78% при 90%-ной вероятности). Мы предполагаем, что к уменьшению этого интервала может привести увеличение количества моделей в ансамбле.</italic></p></trans-abstract><kwd-group xml:lang="en"><kwd>methane uptake by soil, multi-model technique, Theil index.</kwd></kwd-group><kwd-group xml:lang="ru"><kwd>поглощение метана почвой, ансамбль моделей, коэффициент несовпадения Тейла.</kwd></kwd-group><funding-group/></article-meta></front><body></body><back><ref-list><ref id="B1"><label>1.</label><mixed-citation>Arah J.R.M., Stephen K.D. 1998. A model of the processes leading to methane emission from peatland. Atmospheric Environment, 32: 3257-3264. https://doi.org/10.1016/S1352-2310(98)00052-1</mixed-citation></ref><ref id="B2"><label>2.</label><mixed-citation>Arora V.K., Melton J.R., Plummer D. 2018. An assessment of natural methane fluxes simulated by the CLASS-CTEM model. 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