Wang Chenyi, Gao Bingbo, Yang Ke, Wang Yuxue, Sukhbaatar Chinzorig, Yin Yue, Feng Quanlong, Yao Xiaochuang, Zhang Zhonghao, Yang Jianyu
College of Land Science and Technology, China Agricultural University, Beijing 100193, China; Key Laboratory of Remote Sensing of Agricultural Disasters, Ministry of Agriculture and Rural Affairs, Beijing 100193, China.
College of Land Science and Technology, China Agricultural University, Beijing 100193, China; Key Laboratory of Remote Sensing of Agricultural Disasters, Ministry of Agriculture and Rural Affairs, Beijing 100193, China.
Sci Total Environ. 2024 Sep 15;943:173608. doi: 10.1016/j.scitotenv.2024.173608. Epub 2024 Jun 5.
Soil organic carbon (SOC) is vital for the global carbon cycle and environmentally sustainable development. Meanwhile, the fast, convenient remote sensing technology has become one of the notable means to monitor SOC content. Nowadays, limitations are found in the inversion of SOC content with high-precision and complex spatial relationships based on scarce ground sample points. It is restrained by the spatial difference in the relationship between SOC content and remote sensing spectra due to the problem of different spectra for the same substance and the influence of topographic and environment (e.g. vegetation and climate). In this regard, the two-point machine learning (TPML) method, which can overcome above problems and deal with complex spatial heterogeneity of relationships between SOC and remote sensing spectra, is used to invert the SOC content in Hailun County, Heilongjiang Province, combined with derived variables from Sentinel-1, Sentinel-2, topography and environment. Based on 10-fold cross-validation and t-test, results indicate that the TPML method boasts the highest inversion accuracy, followed by random forest, gradient boosting regression tree, partial least squares regression and support vector machine. The average r, MAE, RMSE, and RPD of TPML are 0.854, 0.384 %, 0.558 %, and 1.918. Further, the TPML method has been proven to be equal to evaluating the uncertainty of inversion results, by comparing the actual and theoretical error of the inversion result in one subset. The spatial inversion result of SOC content with 10 m resolution by TPML is smoother and has more real details than other models, which are consistent with the distribution of SOC content in different land use types. This study provides both theoretical and technical guidance for using TPML method combined with spectral information of remote sensing to predict soil attributes and offer accurate uncertainty estimation, thereby opening up the opportunity for low-cost, high-precision, and large-scale SOC inversion.
土壤有机碳(SOC)对全球碳循环和环境可持续发展至关重要。与此同时,快速、便捷的遥感技术已成为监测土壤有机碳含量的重要手段之一。目前,基于稀缺的地面采样点对具有高精度和复杂空间关系的土壤有机碳含量进行反演存在局限性。由于同一物质光谱不同以及地形和环境(如植被和气候)的影响,土壤有机碳含量与遥感光谱之间关系的空间差异限制了反演。在此方面,两点机器学习(TPML)方法可克服上述问题并处理土壤有机碳与遥感光谱之间关系的复杂空间异质性,结合哨兵 - 1、哨兵 - 2、地形和环境的派生变量,用于反演黑龙江省海伦市的土壤有机碳含量。基于十折交叉验证和t检验,结果表明TPML方法反演精度最高,其次是随机森林、梯度提升回归树、偏最小二乘回归和支持向量机。TPML的平均r、MAE、RMSE和RPD分别为0.854、0.384%、0.558%和1.918。此外,通过比较一个子集中反演结果的实际误差和理论误差,已证明TPML方法等同于评估反演结果的不确定性。TPML以10米分辨率得到的土壤有机碳含量空间反演结果比其他模型更平滑且具有更多真实细节,这与不同土地利用类型中土壤有机碳含量的分布一致。本研究为利用TPML方法结合遥感光谱信息预测土壤属性并提供准确的不确定性估计提供了理论和技术指导,从而为低成本、高精度和大规模的土壤有机碳反演开辟了机会。