能否利用可见光-近红外光谱检测长期实验中的土壤有机碳?

Roberto Barbetti;Francesco Palazzi;Pier Mario Chiarabaglio;Carlos Lozano Fondon;Daniele Rizza;Alessandro Rocci;Carlo Grignani;Laura Zavattaro;Barbara Moretti;Maria Fantappiè;Stefano Monaco
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引用次数: 0

摘要

测定土壤有机碳储量及其随时间的变化对理解碳循环至关重要。本研究评估了可见光和近红外(Vis-NIR)光谱作为监测、报告和验证(MRV)系统中检测SOC的成本效益方法的可靠性。以意大利北部长期田间试验(LTE)的土壤样品为例,比较了玉米为基础的饲料系统。三个采样活动(2003年、2012年和2018年)对LTE收集的总共162个土壤样本(每个样本54个)进行了采样。使用Vis-NIR光谱仪对存档的土壤样品进行检索和扫描,以创建特定地点的土壤光谱库(Site-SSL)。为了实现局部预测模型,以2003年采集的土壤样品为训练数据集,对2012年和2018年采集的土壤样品的有机碳进行了预估。同时,利用与LTE相同的172个区域土壤样本(Reg-SSL)进行第二种预测模型的运行。在Site-SSL和Reg-SSL上比较了随机森林(RF)、立体主义(CU)、基于记忆的学习(MBL)和支持向量机(SVM) 4种模型策略。进行敏感性分析以评估训练样本量的影响,然后评估光谱方法与常规分析相比的成本效益。结果表明,Vis-NIR光谱库与CU和SVM模型一起能够检测Site-SSL数据集中SOC的变化,产生了最好的结果。为了保持最佳性能,建议在训练集中对至少10%的后续监测样本进行标准分析。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Can Soil Organic Carbon in Long-Term Experiments Be Detected Using Vis-NIR Spectroscopy?
Determining soil organic carbon (SOC) stock and its changes over time is crucial for understanding carbon cycling. This study evaluates the reliability of visible and near-infrared (Vis-NIR) spectroscopy as a cost-effective method for detecting SOC within monitoring, reporting, and verification (MRV) systems. Soil samples from a long-term field experiment (LTE) in northern Italy, comparing maize-based forage systems were used as a case study. Three sampling campaigns (2003, 2012, and 2018) were utilized for a total of 162 soil samples collected in the LTE (54 each). Soil samples archived were retrieved and scanned using a Vis-NIR spectrometer to create a site-specific soil spectral library (Site-SSL). Aiming to implement a local prediction model samples collected in 2003 were used as a training dataset to estimate the SOC of the soil samples collected in 2012 and 2018. Concurrently, a second prediction model was run adding 172 regional soil samples (Reg-SSL) collected the same soil-landscape as the LTE. N.4 model strategies were compared, including random forest (RF), cubist (CU), memory based learning (MBL) and support vector machine (SVM) on Site-SSL and Reg-SSL. A sensitivity analysis was performed to evaluate the impact of training sample size, followed by an assessment of the cost-benefit of spectroscopic approach compared to conventional analysis. The results showed that the Vis-NIR spectral libraries, along with the CU and SVM models, were able to detect changes in SOC in the Site-SSL dataset, yielding the best results. To maintain optimal performance, it is advisable to include the standard analyses of at least 10 percent of the subsequent monitoring samples in the training set.
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