首页> 外文期刊>Catena: An Interdisciplinary Journal of Soil Science Hydrology-Geomorphology Focusing on Geoecology and Landscape Evolution >Combination of MIR spectroscopy and environmental covariates to predict soil organic carbon in a semi-arid region
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Combination of MIR spectroscopy and environmental covariates to predict soil organic carbon in a semi-arid region

机译:miR光谱与环境协变量的组合预测半干旱区土壤有机碳

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摘要

Soil organic carbon (SOC) sequestration provides an opportunity to mitigate climate change impacts, since soils are the largest store of terrestrial carbon. Accurate estimates of SOC content across landscapes are therefore important to monitor and manage efficiently these SOC stocks. Mid-infrared (MIR) spectroscopy has been increasingly applied as a rapid, cost-effective, and accurate method for predictive soil analysis. This study assessed the performance of MIR spectroscopy for SOC prediction at a regional scale for remote landscapes in Iran. The potential for combining environmental covariates, including remotely sensed covariates and terrain attributes, with MIR variables to improve prediction was also tested. Soil samples were collected from 151 locations at two depths (0-5 and 5-15 cm) across a large study area (350 km(2)) and analysed for gravimetric SOC content. Partial least squares regression (PLSR) was used to model SOC from MIR spectra recorded on the samples and to obtain latent variables (LV) that were then used, either on their own or alongside environmental covariates, as input to a Cubist rule-based model. The Cubist model using the LV alone outperformed the PLSR model and produced a high prediction accuracy with an R-2 of 0.96, RPIQ of 5.61, and RMSE of 0.16% on the validation set. The inclusion of environmental covariates alongside LV did not improve the performance of the model compared with the model on LV alone (R-2 = 0.94, RPIQ = 4.81, RMSE = 0.19%). The high performance of the developed models indicates the high potential of MIR spectroscopy for SOC prediction in data-scarce areas.
机译:土壤有机碳(SOC)固存为缓解气候变化影响提供了机会,因为土壤是陆地碳的最大储存地。因此,准确估计整个景观的SOC含量对于有效监测和管理这些SOC存量非常重要。中红外光谱技术作为一种快速、经济、准确的土壤预测分析方法,得到了越来越多的应用。这项研究评估了MIR光谱在伊朗偏远地区的SOC预测中的表现。还测试了将环境协变量(包括遥感协变量和地形属性)与MIR变量相结合以改进预测的可能性。在两个深度(0-5和5-15厘米)的151个地点,在一个大的研究区域(350公里(2))内采集土壤样本,并进行重量分析SOC含量。偏最小二乘回归(PLSR)用于根据样本上记录的MIR光谱对SOC进行建模,并获得潜在变量(LV),然后将这些变量单独或与环境协变量一起用作基于立体规则的模型的输入。仅使用LV的Cubist模型优于PLSR模型,并在验证集上产生了较高的预测精度,R-2为0.96,RPIQ为5.61,RMSE为0.16%。与单独使用LV的模型相比,将环境协变量与LV一起使用并没有改善模型的性能(R-2=0.94,RPIQ=4.81,RMSE=0.19%)。所开发模型的高性能表明,MIR光谱在数据稀缺地区的SOC预测方面具有很大潜力。

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