Spatial patterns in temperature sensitivity of soil respiration in China: estimation with inverse modeling.

Tao Zhou, PeiJun Shi, DaFeng Hui, Yiqi Luo
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引用次数: 16

Abstract

Temperature sensitivity of soil respiration (Q(10)) is an important parameter in modeling the effects of global warming on ecosystem carbon release. Experimental studies of soil respiration have ubiquitously indicated that Q(10) has high spatial heterogeneity. However, most biogeochemical models still use a constant Q(10) in projecting future climate change and no spatial pattern of Q(10) values at large scales has been derived. In this study, we conducted an inverse modeling analysis to retrieve the spatial pattern of Q(10) in China at 8 km spatial resolution by assimilating data of soil organic carbon into a process-based terrestrial carbon model (CASA model). The results indicate that the optimized Q(10) values are spatially heterogeneous and consistent to the values derived from soil respiration observations. The mean Q(10) values of different soil types range from 1.09 to 2.38, with the highest value in volcanic soil, and the lowest value in cold brown calcic soil. The spatial pattern of Q (10) is related to environmental factors, especially precipitation and top soil organic carbon content. This study demonstrates that inverse modeling is a useful tool in deriving the spatial pattern of Q(10) at large scales, with which being incorporated into biogeochemical models, uncertainty in the projection of future carbon dynamics could be potentially reduced.

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中国土壤呼吸温度敏感性的空间格局:基于反演模型的估算
土壤呼吸温度敏感性(Q(10))是模拟全球变暖对生态系统碳释放影响的重要参数。土壤呼吸的实验研究普遍表明,Q(10)具有较高的空间异质性。然而,大多数生物地球化学模式在预测未来气候变化时仍然使用恒定的Q(10),没有得到大尺度上Q(10)值的空间格局。本研究通过将土壤有机碳数据同化到基于过程的陆地碳模型(CASA)中,对8 km空间分辨率下中国Q(10)的空间格局进行了反演分析。结果表明,优化后的Q(10)值与土壤呼吸观测值具有空间异质性,且与土壤呼吸观测值一致。不同土壤类型的平均Q(10)值在1.09 ~ 2.38之间,火山土的Q(10)值最高,冷褐钙土的Q(10)值最低。Q(10)的空间格局与环境因子有关,特别是与降水和表层土壤有机碳含量有关。该研究表明,逆模型是在大尺度上推导Q(10)空间格局的有用工具,将其纳入生物地球化学模型,可以潜在地减少未来碳动态预测的不确定性。
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