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ORCHIMIC (v1.0), a microbe-mediated model for soil organic matter decomposition

机译:Sorchimic(V1.0),一种微生物介导的土壤有机质分解模型

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The role of soil microorganisms in regulating soil organic matter (SOM) decomposition is of primary importance in the carbon cycle, in particular in the context of global change. Modeling soil microbial community dynamics to simulate its impact on soil gaseous carbon (C) emissions and nitrogen (N) mineralization at large spatial scales is a recent research field with the potential to improve predictions of SOM responses to global climate change. In this study we present a SOM model called ORCHIMIC, which utilizes input data that are consistent with those of global vegetation models. ORCHIMIC simulates the decomposition of SOM by explicitly accounting for enzyme production and distinguishing three different microbial functional groups: fresh organic matter (FOM) specialists, SOM specialists, and generalists, while also implicitly accounting for microbes that do not produce extracellular enzymes, i.e., cheaters. ORCHIMIC and two other organic matter decomposition models, CENTURY (based on first-order kinetics and representative of the structure of most current global soil carbon models) and PRIM (with FOM accelerating the decomposition rate of SOM), were calibrated to reproduce the observed respiration fluxes of FOM and SOM from the incubation experiments of Blagodatskaya et al.?(2014). Among the three models, ORCHIMIC was the only one that effectively captured both the temporal dynamics of the respiratory fluxes and the magnitude of the priming effect observed during the incubation experiment. ORCHIMIC also effectively reproduced the temporal dynamics of microbial biomass. We then applied different idealized changes to the model input data, i.e., a 5K stepwise increase of temperature and/or a doubling of plant litter inputs. Under 5K warming conditions, ORCHIMIC predicted a 0.002K?1 decrease in the C use efficiency (defined as the ratio of C allocated to microbial growth to the sum of C allocated to growth and respiration) and a 3% loss of SOC. Under the double litter input scenario, ORCHIMIC predicted a doubling of microbial biomass, while SOC stock increased by less than 1% due to the priming effect. This limited increase in SOC stock contrasted with the proportional increase in SOC stock as modeled by the conventional SOC decomposition model (CENTURY), which can not reproduce the priming effect. If temperature increased by 5K and litter input was doubled, ORCHIMIC predicted almost the same loss of SOC as when only temperature was increased. These tests suggest that the responses of SOC stock to warming and increasing input may differ considerably from those simulated by conventional SOC decomposition models when microbial dynamics are included. The next step is to incorporate the ORCHIMIC model into a global vegetation model to perform simulations for representative sites and future scenarios.
机译:土壤微生物在调节土壤有机物(SOM)分解方面的作用在碳循环中具有主要重要性,特别是在全球变化的背景下。造型土壤微生物群落动态模拟其对土壤气态碳(C)排放和氮气(N)矿化在大型空间尺度上的影响是最近的研究领域,有可能改善全球气候变化的索赔的预测。在这项研究中,我们呈现了一个名为Sorchimic的SOM模型,它利用与全球植被模型一致的输入数据。通过明确核算酶生产和区分三种不同的微生物官能团:新鲜有机物(FOM)专家,SOM专家和一般主义者来模拟SOM的分解,同时也隐含了不产生细胞外酶的微生物,即欺骗者的微生物。塑造和另外两种有机质分解模型,世纪(基于大多数动力学和大多数当前全球土壤碳模型的结构)和PRIM(带有FOM加速SOM的分解率),以再现观察到的呼吸来自Blagodatskaya等人的孵化实验的FOM和SOM的助熔剂.?(2014)。在这三种模型中,塑造是唯一一个有效地捕获呼吸通量的时间动态的唯一动态以及在孵化实验期间观察到的引发效果的大小。塑造也有效地再现了微生物生物量的时间动态。然后,我们将不同的理想化改变应用于模型输入数据,即5k逐步增加温度和/或植物垃圾输入的加倍。在5K变暖条件下,COMIMIC预测了C使用效率的0.002K?1减少(定义为分配给分配给生长和呼吸的C的微生物生长的C的比率)和SoC的3%损失。在双垃圾输入场景下,由于引发效果,SOMIMIC预测了微生物生物量的加倍,而SoC库存由于引发效果增加了小于1%。 SoC股有限的增加对比由传统SoC分解模型(CENTURY)建模的SOC股票的比例增加,这不能再现引发效果。如果温度增加5K和垃圾输入加倍,因此塑造预测几乎与仅增加温度时的SOC丢失。这些测试表明,当包括微生物动态时,SoC股票对变暖和增加输入的反应可能与传统SoC分解模型模拟的那些相似。下一步是将塑造模型纳入全球植被模型,以对代表性网站和未来情景进行模拟。

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