Spatiotemporal Monitoring of Cropland Soil Organic Carbon Changes From Space

IF 10.8 1区 环境科学与生态学 Q1 BIODIVERSITY CONSERVATION
Tom Broeg, Axel Don, Martin Wiesmeier, Thomas Scholten, Stefan Erasmi
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引用次数: 0

Abstract

Soil monitoring requires accurate and spatially explicit information on soil organic carbon (SOC) trends and changes over time. Spatiotemporal SOC models based on Earth Observation (EO) satellite data can support large-scale SOC monitoring but often lack sufficient temporal validation based on long-term soil data. In this study, we used repeated SOC samples from 1986 to 2022 and a time series of multispectral bare soil observations (Landsat and Sentinel-2) to model high-resolution cropland SOC trends for almost four decades. An in-depth validation of the temporal model uncertainty and accuracy of the derived SOC trends was conducted based on a network of 100 long-term monitoring sites that were continuously resampled every 5 years. While the general SOC prediction accuracy was high (R2 = 0.61; RMSE = 5.6 g kg−1), the direct validation of the derived SOC trends revealed a significantly greater uncertainty (R2 = 0.16; p < 0.0001), even though predicted and measured values showed similar distributions. Classifying the results into declining and increasing SOC trends, we found that 95% of all sites were either correctly identified or predicted as stable (p < 0.001), highlighting the potential of our findings. Increased accuracies for SOC trends were found in soils with higher SOC contents (R2 = 0.4) and sites with reduced tillage (R2 = 0.26). Based on the signal-to-noise ratio and temporal model uncertainty, we were able to show that the necessary time frame to detect SOC trends strongly depends on the absolute SOC changes present in the soils. Our findings highlight the potential to generate significant cropland SOC trend maps based on EO data and underline the necessity for direct validation with repeated soil samples and long-term SOC measurements. This study marks an important step toward the usability and integration of EO-based SOC maps for large-scale soil carbon monitoring.

Abstract Image

Abstract Image

农田土壤有机碳时空变化的空间监测
土壤监测需要准确、明确的土壤有机碳(SOC)趋势和变化信息。基于地球观测(EO)卫星数据的土壤有机碳时空模型可以支持大规模土壤有机碳监测,但往往缺乏基于长期土壤数据的时间验证。在这项研究中,我们使用1986年至2022年的重复土壤有机碳样本和多光谱裸地观测时间序列(Landsat和Sentinel-2)来模拟近40年的高分辨率农田有机碳趋势。基于100个长期监测点的网络,每5年连续重新采样一次,深入验证了时间模型的不确定性和推导出的碳含量趋势的准确性。而总体SOC预测精度较高(R2 = 0.61;RMSE = 5.6 g kg−1),推导出的SOC趋势的直接验证显示出更大的不确定性(R2 = 0.16;p & lt;0.0001),尽管预测值和实测值显示相似的分布。将结果分为SOC下降和增加趋势,我们发现95%的站点要么被正确识别,要么被预测为稳定(p <;0.001),突出了我们研究结果的潜力。土壤有机碳含量高的土壤(R2 = 0.4)和减少耕作的土壤(R2 = 0.26)对土壤有机碳趋势的预测精度更高。基于信噪比和时间模型的不确定性,我们能够证明检测土壤有机碳趋势的必要时间框架在很大程度上取决于土壤中存在的绝对有机碳变化。我们的研究结果强调了基于EO数据生成重要农田有机碳趋势图的潜力,并强调了通过重复土壤样品和长期有机碳测量直接验证的必要性。该研究标志着基于eo的土壤有机碳图谱在大规模土壤碳监测中的可用性和集成化迈出了重要的一步。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
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来源期刊
Global Change Biology
Global Change Biology 环境科学-环境科学
CiteScore
21.50
自引率
5.20%
发文量
497
审稿时长
3.3 months
期刊介绍: Global Change Biology is an environmental change journal committed to shaping the future and addressing the world's most pressing challenges, including sustainability, climate change, environmental protection, food and water safety, and global health. Dedicated to fostering a profound understanding of the impacts of global change on biological systems and offering innovative solutions, the journal publishes a diverse range of content, including primary research articles, technical advances, research reviews, reports, opinions, perspectives, commentaries, and letters. Starting with the 2024 volume, Global Change Biology will transition to an online-only format, enhancing accessibility and contributing to the evolution of scholarly communication.
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