Energy Biosciences Institute, University of Illinois at Urbana-Champaign, Urbana, IL 61801, USA.
Glob Chang Biol. 2013 Jun;19(6):1941-52. doi: 10.1111/gcb.12127. Epub 2013 Feb 11.
Soil respiration (Rsoil ) is one of the largest CO2 fluxes in the global carbon (C) cycle. Estimation of annual Rsoil requires extrapolation of survey measurements or gap filling of automated records to produce a complete time series. Although many gap filling methodologies have been employed, there is no standardized procedure for producing defensible estimates of annual Rsoil . Here, we test the reliability of nine different gap filling techniques by inserting artificial gaps into 20 automated Rsoil records and comparing gap filling Rsoil estimates of each technique to measured values. We show that although the most commonly used techniques do not, on average, produce large systematic biases, gap filling accuracy may be significantly improved through application of the most reliable methods. All methods performed best at lower gap fractions and had relatively high, systematic errors for simulated survey measurements. Overall, the most accurate technique estimated Rsoil based on the soil temperature dependence of Rsoil by assuming constant temperature sensitivity and linearly interpolating reference respiration (Rsoil at 10 °C) across gaps. The linear interpolation method was the second best-performing method. In contrast, estimating Rsoil based on a single annual Rsoil - Tsoil relationship, which is currently the most commonly used technique, was among the most poorly-performing methods. Thus, our analysis demonstrates that gap filling accuracy may be improved substantially without sacrificing computational simplicity. Improved and standardized techniques for estimation of annual Rsoil will be valuable for understanding the role of Rsoil in the global C cycle.
土壤呼吸(Rsoil)是全球碳(C)循环中最大的 CO2 通量之一。估算年 Rsoil 需要将调查测量值外推或填补自动记录的空白,以生成完整的时间序列。尽管已经采用了许多填补空白的方法,但对于生成可防御的年 Rsoil 估计值,尚无标准化程序。在这里,我们通过将人工空白插入 20 个自动 Rsoil 记录中来测试九种不同填补空白技术的可靠性,并将每种技术的填补空白 Rsoil 估计值与测量值进行比较。我们表明,尽管最常用的技术平均不会产生较大的系统偏差,但通过应用最可靠的方法,填补空白的准确性可能会得到显著提高。所有方法在较低的空白分数下表现最佳,并且对于模拟的调查测量值具有相对较高的系统误差。总体而言,最准确的技术基于 Rsoil 对土壤温度的依赖性来估算 Rsoil,假设温度敏感性恒定,并在线性内插参考呼吸(10°C 下的 Rsoil)以填补空白。线性内插法是表现第二好的方法。相比之下,基于单个年度 Rsoil-Tsoil 关系来估算 Rsoil,这是目前最常用的技术,是表现最差的方法之一。因此,我们的分析表明,在不牺牲计算简单性的前提下,可以大大提高填补空白的准确性。改进和标准化的年 Rsoil 估算技术将有助于理解 Rsoil 在全球 C 循环中的作用。