基于光谱相似性匹配的土壤有机碳估算
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S151.9

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国家重点研发计划项目(2017YFC0803807)、中国烟草总公司贵州省公司科技项目(201910)、南京信息工程大学人才启动经费共同资助


Estimation of Soil Organic Carbon Based on Spectral Similarity Matching
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National Key Research and Development Program of China (No.2017YFC0803807), China Tobacco Corporation Guizhou Provincial Company Science and Technology Project (201910) and the Startup Foundation for Introducing Talent of NUIST

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    摘要:

    全球土壤光谱库的建立,为利用可见-近红外光谱预测土壤属性提供了参考集,如何从光谱库中挑选合适的建模集以实现对局部地区土壤有机碳的高精度预测,是一个值得研究的问题。本研究基于欧氏距离、马氏距离和光谱角三种光谱相似性指数,探索利用全球光谱库预测局部地区土壤有机碳的有效策略,并比较了不同光谱相似性指数、不同建模集数量及不同建模方法对预测精度的影响。研究表明:(1)三种相似性算法较全局模型均极大提升了预测精度,其中光谱角预测精度稍高,最佳预测精度为R2=0.75,RPD=1.73;(2)建模数量对建模精度有较大影响,三种算法的最佳建模集数量范围在本研究中约为400~500(0.71<R2 <0.75,1.56R2 >0.6,RPD>1.4);建模集数量较多(>50)时,PLSR建模预测精度较高(R2 >0.6,RPD>1.4)。

    Abstract:

    [Objective] The objective of this study is to explore effective strategies for predicting soil organic carbon (SOC) in local areas with high precision based on the spectral similarity indexes in the global spectral library. It goes specifically as follows: (1) to compare different spectral similarity indexes obtained separately with three different similarity matching algorithms (Euclidean Distance, Mahalanobis Distance and Spectral Angle Mapper) in effect on prediction accuracy; (2) to compare calibration sets different in size in effect on prediction accuracy; and (3) to compare different modeling strategies (PLSR modeling and the assignment strategy) in effect on prediction accuracy. [Method] From the global spectra library a total of 245 China samples were selected to form a prediction set and the remaining 3 537 samples a reference set. From each spectrum in the prediction set, different numbers of similar spectra (5, 10, 20, 30, 40, 50, 100, 150, 200, 250, 300, 400 and 500) were picked out separately with the three different similarity matching algorithms for comparison between the spectra selected by the different similarity algorithms. Based on the reference sets of different sizes selected by the different algorithms, PLSR models were built to predict SOC contents, and effects of the similarity matching algorithms and size of the modeling set on prediction accuracy were evaluated using R2, RMSE and RPD. Then a similarity matching algorithm with the highest prediction accuracy was selected and on such a basis, comparison was performed between the different modeling strategies in effect on prediction accuracy: Ⅰ, Prediction with PLSR modeling; Ⅱ, Prediction with direct assignment. [Result] Compared with the overall model, the three similarity algorithms greatly improved prediction accuracy. Among the three, the SAM model was a bit higher than the other two in prediction accuracy (R2 =0.75, RPD=1.73). The low prediction accuracy might be attributed to the wide distribution of the soil samples in the global soil spectral library that caused marked variation. Size of the modeling sets did have a great impact on modeling accuracy, and the optimal size for the three similarity algorithms varied in the range of 400~500 (0.71<R2 <0.75, 1.56R2 >0.6, RPD>1.4). However, when the modeling set was big in size (>50), the PLSR modeling strategy was higher in prediction accuracy (R2 >0.6, RPD>1.4). [Conclusion] Compared with the global model, the models based on the three spectral similarity indices all significantly improve SOC prediction accuracy. In general, the spectral angle algorithm is slightly better than Euclidean distance and Mahalanobis distance; type of the similarity algorithm, size of the modeling set and method of the modeling all have a great impact on precision of the SOC prediction.

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李宏达,李德成,曾荣.基于光谱相似性匹配的土壤有机碳估算[J].土壤学报,2021,58(5):1224-1233. DOI:10.11766/trxb202003010082 LI Hongda, LI Decheng, ZENG Rong. Estimation of Soil Organic Carbon Based on Spectral Similarity Matching[J]. Acta Pedologica Sinica,2021,58(5):1224-1233.

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  • 收稿日期:2020-03-01
  • 最后修改日期:2020-06-23
  • 录用日期:2020-10-14
  • 在线发布日期: 2020-12-08
  • 出版日期: 2021-09-11