Chao Tan , Haijun Luan , Qiuhua He , Shuchen Yu , Meiduan Zheng , Lanhui Wang
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Three feature construction methods (conventional (VNIR-SWIR spectra), optimal (information spectrum subset, ISS), and straw-merged ISS (SISS)) and seven models were employed to evaluate the contributions of iron oxides and straw in SOM quantification. The results indicate that the SISS improved the generalization (RPD and <em>R</em><sup><em>2</em></sup>) of nonlinear and linear models by approximately 9 % and 4 %, respectively. The relative contributions of straw and iron oxides in modelling are approximately 35 % and 10 %, respectively. Our research successfully developed the SISS by refining the range of spectrally active materials and considering the background formed by the soil properties of the study area. We used it to evaluate the impact of straw on SOM quantification and demonstrated that the spectroscopic characterization of SOM can assess the carbon sequestration benefits of agricultural activities. 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Hyperspectral technology combined with machine-learning offers promising prospects for rapid quantification. This study explores the impact of using VNIR-SWIR spectra on SOM quantification in regions characterized by distinctive soil properties and agricultural activity. Specifically, we propose an innovative approach using 105 soil samples from Yueyang City, China, to refine the range of spectrally active materials and evaluate the effectiveness of iron oxides and straw on SOM quantification. Three feature construction methods (conventional (VNIR-SWIR spectra), optimal (information spectrum subset, ISS), and straw-merged ISS (SISS)) and seven models were employed to evaluate the contributions of iron oxides and straw in SOM quantification. The results indicate that the SISS improved the generalization (RPD and <em>R</em><sup><em>2</em></sup>) of nonlinear and linear models by approximately 9 % and 4 %, respectively. 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引用次数: 0
摘要
土壤有机质(SOM)对于碳固存和可持续农业至关重要,但传统的量化方法在大规模应用时具有挑战性。高光谱技术与机器学习相结合,为快速量化提供了广阔的前景。本研究探讨了在具有独特土壤特性和农业活动的地区使用 VNIR-SWIR 光谱对 SOM 定量的影响。具体而言,我们提出了一种创新方法,利用来自中国岳阳市的 105 个土壤样本来完善光谱活性物质的范围,并评估铁氧化物和秸秆对 SOM 定量的有效性。采用三种特征构建方法(传统方法(VNIR-SWIR 光谱)、最优方法(信息光谱子集,ISS)和秸秆混合 ISS(SISS))和七个模型来评估氧化铁和秸秆在 SOM 定量中的贡献。结果表明,SISS 使非线性和线性模型的广义性(RPD 和 R2)分别提高了约 9% 和 4%。秸秆和氧化铁在建模中的相对贡献率分别约为 35% 和 10%。我们的研究通过完善光谱活性物质的范围并考虑研究区域土壤特性形成的背景,成功开发了 SISS。我们用它来评估秸秆对 SOM 定量的影响,并证明 SOM 的光谱特征可以评估农业活动的固碳效益。这种方法可应用于全球土壤特性相似的地区,为 SOM 定量提供了一个新的视角。
Accurate quantification of soil organic matter content using VNIR-SWIR spectra: The role of straw and spectrally active materials
Soil organic matter (SOM) is crucial for carbon sequestration and sustainable agriculture, yet traditional quantification methods are challenging to apply at large scales. Hyperspectral technology combined with machine-learning offers promising prospects for rapid quantification. This study explores the impact of using VNIR-SWIR spectra on SOM quantification in regions characterized by distinctive soil properties and agricultural activity. Specifically, we propose an innovative approach using 105 soil samples from Yueyang City, China, to refine the range of spectrally active materials and evaluate the effectiveness of iron oxides and straw on SOM quantification. Three feature construction methods (conventional (VNIR-SWIR spectra), optimal (information spectrum subset, ISS), and straw-merged ISS (SISS)) and seven models were employed to evaluate the contributions of iron oxides and straw in SOM quantification. The results indicate that the SISS improved the generalization (RPD and R2) of nonlinear and linear models by approximately 9 % and 4 %, respectively. The relative contributions of straw and iron oxides in modelling are approximately 35 % and 10 %, respectively. Our research successfully developed the SISS by refining the range of spectrally active materials and considering the background formed by the soil properties of the study area. We used it to evaluate the impact of straw on SOM quantification and demonstrated that the spectroscopic characterization of SOM can assess the carbon sequestration benefits of agricultural activities. This approach can be applied to regions with similar soil properties globally, offering a new perspective for SOM quantification.
期刊介绍:
Global issues require studies and solutions on national and regional levels. Geoderma Regional focuses on studies that increase understanding and advance our scientific knowledge of soils in all regions of the world. The journal embraces every aspect of soil science and welcomes reviews of regional progress.