识别和降低湿盐共存对土壤有机质光谱预测的影响:从实验室到卫星

Danyang Wang, Yayi Tan, Cheng Li, Jingda Xin, Yunqi Wang, Huagang Hou, Lulu Gao, Changbo Zhong, Jianjun Pan, Zhaofu Li
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引用次数: 0

摘要

盐渍化地区土壤有机质制图对于科学指导土壤盐渍化具有重要意义。然而,由于土壤水分含量(SMC)和土壤盐分含量(SSC)之间复杂的相互作用,土壤水分含量(SMC)和土壤盐分含量(SSC)之间的相互作用对土壤光谱有显著影响,因此精确绘制SOM具有挑战性。与之前单独研究湿度或盐度影响的研究不同,本研究深入研究了这些因素对SOM光谱的综合影响。本研究的目的是在实验室和卫星水平上开发和验证几种光谱优化算法。2020年10月,利用291个地面真实数据进行了一项研究,研究了不同的水盐阶段(7个水分阶段,5个盐阶段)对高光谱数据的影响。通过光谱曲线、相关分析和方差分析(Anova, AOV)分析了土壤水分和盐度响应谱机制,建立了土壤水分和盐度响应谱机制模型。然后,采用分段直接归一化(PDS)-AOV、非负矩阵分解(NMF)-AOV和正交信号校正(OSC)-AOV对光谱进行优化。然后将这些优化的光谱与堆叠集成机器学习算法(RF, GBM, ANN)集成,建立SOM预测模型。最后,将实验室优化的光谱与卫星多光谱图像合并,生成用于SOM制图的新图像(命名为REC)。结果表明,SMC和SSC对光谱的影响不同,特别是在1400 nm ~ 2000 nm之间,揭示了水盐相互作用的影响;最优叠加优化算法(OSC-AOV)减轻了湿盐共存对光谱的影响(最优模型的R2和RPD分别提高了0.005 ~ 0.267、0.020 ~ 0.374,RMSE降低了0.137 ~ 1.817 g/kg);在REC上实现该算法显著提高了SOM制图的精度(R2提高0.185 ~ 0.259,RMSE降低2.615 ~ 3.203 g/kg)。本研究广泛研究了水分和盐度对光谱的影响,从实验室到卫星,为理解和解决盐碱化环境中SOM制图的复杂性提供了一种新的方法。
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Recognizing and reducing effects of moisture-salt coexistence on soil organic matter spectral prediction:From laboratory to satellite
Soil organic matter (SOM) mapping in salinized areas is crucial for scientific guidance on soil salinization. However, accurately mapping SOM is challenging due to the intricate interplay between soil moisture content (SMC) and soil salt content (SSC), which significantly influences soil spectra. Unlike prior research that has separately examined the impacts of moisture or salinity, this study delves into the combined effects of these factors on SOM spectra. The objective of this study is to develop and validate several spectral optimization algorithms at both the laboratory and satellite levels. In October 2020, a study was conducted using 291 ground-truth data to examine the impact of various moisture-salt stages (seven moisture stages, five salt stages) on hyperspectral data. Spectrum mechanism responsive for soil moisture and salinity were analyzed through spectral curves, correlation, and analysis of variance (Anova, AOV), and spectrum mechanism responsive for soil moisture and salinity model were built. Following that, the spectra were optimized using piecewise direct normalization (PDS)-AOV, non-negative matrix factorization (NMF)-AOV, and orthogonal signal correction (OSC)-AOV. The SOM prediction models were then built by integrating these optimized spectra with Stacking ensemble machine learning algorithms (RF, GBM, ANN). Eventually, the lab-optimized spectra were merged with satellite multispectral images to create new image (named REC) for SOM mapping. The results indicated varying impacts of SMC and SSC on spectra, particularly between 1400 nm to 2000 nm, revealing the influence of moisture-salt interaction; the best optimization algorithm (OSC-AOV) with Stacking mitigated the effect of moisture-salt coexistence on spectra (the R2 and RPD of the best models elevated by 0.005–0.267, 0.020–0.374 respectively, RMSE reduced by 0.137–1.817 g/kg); implementing this algorithm on REC significantly improved the accuracy of SOM mapping (R2 elevated by 0.185–0.259, RMSE reduced by 2.615–3.203 g/kg). This study extensively investigated the effects of moisture and salinity on spectra, spanning from laboratory to satellite, offering a novel approach to understanding and addressing the complexities in SOM mapping in salinized environments.
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