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Prediction of carbon mineralization rates from different soil physical fractions using diffuse reflectance spectroscopy.

机译:使用漫反射光谱法预测来自不同土壤物理成分的碳矿化速率。

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Soil carbon (C) mineralization rate is a key indicator of soil functional capacity but it is time consuming to measure using conventional laboratory incubation methods. Recent studies have demonstrated the ability of visible-near infrared spectroscopy (NIRS) for rapid non-destructive determination of soil organic carbon (SOC) and nitrogen (N) concentration. We investigated whether NIRS (350-2500 nm) can predict C mineralization rates in physically fractionated soil aggregates (bulk soil and 6 size fractions, n=108) and free organic matter (2 size fractions, n=27) in aerobically incubated samples from a clayey soil (Ferralsol) and a sandy soil (Arenosol). Incubation reference values were calibrated to first derivative reflectance spectra using partial least-squares regression. Prediction accuracy was assessed by comparing laboratory reference values with NIRS values predicted using full hold-out-one cross-validation. Cross-validated prediction for C respired (500 days) in soil aggregate fractions had an R2 of 0.82 while that of C mineralized (300 days) in organic matter fractions was 0.71. Major soil aggregate fractions could be perfectly spectrally discriminated using a 50% random holdout validation sample. NIRS is a promising technique for rapid characterization of potential C mineralization in soils and aggregate fractions. Further work should test the robustness of NIRS prediction of mineralization rates of aggregate fractions across a wide range of soils and spectral mixture models for predicting mass fractions of aggregate size classes..
机译:土壤碳(C)矿化速率是土壤功能能力的关键指标,但是使用常规实验室培养方法进行测量非常耗时。最近的研究表明,可见-近红外光谱法(NIRS)可以快速无损测定土壤有机碳(SOC)和氮(N)的浓度。我们研究了NIRS(350-2500 nm)是否可以预测需氧培养的样品中物理分级的土壤团聚体(大块土壤和6个尺寸级分,n = 108)和游离有机物(2个尺寸级分,n = 27)中的C矿化速率。黏土(Ferralsol)和沙土(Arenosol)。使用偏最小二乘回归将孵育参考值校准为一阶导数反射光谱。通过将实验室参考值与使用完全保留一次交叉验证预测的NIRS值进行比较来评估预测准确性。交叉验证的预测的土壤团聚体中呼吸的碳(500天)的R2为0.82,而有机质部分中矿化的碳(300天)的R2为0.71。可以使用50%随机保留验证样品对光谱中的主要土壤骨料成分进行完美区分。 NIRS是一种有前途的技术,可以快速表征土壤和骨料级分中潜在的C矿化作用。进一步的工作应测试NIRS在各种土壤上预测骨料级分矿化速率的鲁棒性,并使用光谱混合模型预测骨料级数的质量分数。

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