首页> 外文期刊>Global Biogeochemical Cycles >A novel approach for identifying the true temperature sensitivity from soil respiration measurements
【24h】

A novel approach for identifying the true temperature sensitivity from soil respiration measurements

机译:一种从土壤呼吸测量中识别真实温度敏感性的新方法

获取原文
获取原文并翻译 | 示例
           

摘要

We propose a novel approach, called the ''localized ratio fitting'' (LRF), to estimating the true temperature sensitivity from soil respiration measurements, a task crucial to modeling terrestrial carbon cycle and climate but so far hindered by the inadequate conventional regression approach. LRF takes advantage of the different timescales of the pool dynamics - induced and environmental variation - induced changes in soil CO2 efflux. It first transforms the expression for soil respiration into a form suppressing the influence of soil carbon pool dynamics and then uses the transformed expression to infer the parameters of environmental sensitivities. LRF works best for high-frequency soil respiration measurements and thus is particularly suitable for analyzing time series produced by automated soil chambers and from soil incubation experiments. We evaluated the validity of LRF with both simulated (with a multipool soil organic carbon model driven by realistic plant litter input scenarios) and measured (with automated soil chambers) time series of soil respiration. LRF accurately retrieved the true temperature sensitivity from the simulated heterotrophic soil respiration while the conventional approach failed to do so. The simulation also revealed that LRF performed better than the conventional approach when a direct photosynthetic signal existed in the time series of soil respiration although even LRF could not completely eliminate the interference of photosynthetic contribution for estimating the true temperature sensitivity. Importantly, the simulation on the photosynthetic influence reproduced a typical seasonal pattern of apparent temperature sensitivity reported in the literature: higher sensitivity in winter (dormant season) and lower sensitivity in summer (growing season). Such pattern has been interpreted as an indication of temperature acclimation of soil respiration by previous studies. Our simulation now indicated that that interpretation may be incorrect. The validation with actual soil chamber data showed that the use of LRF led to more consistent estimates of temperature and moisture sensitivities from observations, indicating its better robustness against compounding effects of parallel processes on soil respiration. It was demonstrated that once the true environmental controls were properly accounted for, soil respiration measurements could be used to infer effects of biological processes on soil respiration.
机译:我们提出了一种新颖的方法,称为“局部比例拟合”(LRF),用于通过土壤呼吸测量来估算真实的温度敏感性,这是对陆地碳循环和气候进行建模的关键任务,但迄今为止受常规回归方法不足的困扰。 LRF利用了池动力学的不同时间尺度-诱发的和环境的变化-引起的土壤CO2外流变化。它首先将用于土壤呼吸的表达式转换为抑制土壤碳库动力学影响的形式,然后使用转换后的表达式来推断环境敏感性参数。 LRF最适合用于高频土壤呼吸测量,因此特别适合分析自动土壤箱和土壤培养实验产生的时间序列。我们通过模拟(由实际植物凋落物输入场景驱动的多池土壤有机碳模型)和实测(通过自动土壤箱)土壤呼吸的时间序列来评估LRF的有效性。 LRF从模拟的异养土壤呼吸中准确地获得了真实的温度敏感性,而传统方法却没有做到。模拟还表明,当土壤呼吸的时间序列中存在直接光合作用信号时,LRF的性能要优于传统方法,尽管即使LRF也无法完全消除光合作用对估计真实温度敏感性的影响。重要的是,对光合作用影响的模拟再现了文献中报道的表观温度敏感性的典型季节性模式:冬季(休眠期)较高,夏季(生长期)较低。先前的研究已将这种模式解释为土壤呼吸温度适应的指示。我们的模拟现在表明该解释可能是错误的。实际土壤室数据的验证表明,LRF的使用导致了对观测值的温度和湿度敏感性的更一致的估计,表明其对并行过程对土壤呼吸的复合效应的抵抗力更强。结果表明,一旦正确地考虑了真实的环境控制,土壤呼吸测量就可以用来推断生物过程对土壤呼吸的影响。

著录项

相似文献

  • 外文文献
  • 中文文献
  • 专利
获取原文

客服邮箱:kefu@zhangqiaokeyan.com

京公网安备:11010802029741号 ICP备案号:京ICP备15016152号-6 六维联合信息科技 (北京) 有限公司©版权所有
  • 客服微信

  • 服务号