Assessing spatiotemporal variations of soil organic carbon and its vulnerability to climate change: A bottom-up machine learning approach

Qichen Wang , Yinuo Shan , Wenbo Shi , Fubo Zhao , Qiang Li , Pengcheng Sun , Yiping Wu
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Abstract

Soil organic carbon (SOC) is a crucial component of the terrestrial carbon cycle and essential for agricultural productivity. Quantifying its sensitivity to future climate change is vital for sustaining agricultural practices and mitigating greenhouse gas emissions. However, this remains a challenge as long-term SOC data are scarce and substantial uncertainties regarding future climate scenarios. This study presents a bottom-up machine learning framework to assess the spatiotemporal variations of SOC and its vulnerability to climate change in the Jinghe River Basin, a typical loess hilly and gully watershed. Firstly, the long-term (2000–2023) dynamics of SOC was estimated by integrating in-situ measurements with machine learning techniques. Results show that the high SOC values are primarily distributed in the farmland of the mountain-loess transition zone, while the low-value areas are mainly found in the loess region. During the study period, the SOC content exhibited a slight increasing trend with a rate of 0.02 ​g ​kg−1 ​yr−1 (p ​= ​0.449). The vulnerability of farmland surface SOC to future climate change was then evaluated by combining a robust machine learning model with the bottom-up framework. To this end, the study explored a wide range of possible future climates to identify critical climate thresholds and their spatial variation across the basin’s farmlands. Based on this analysis, this research found that the farmland in the northern basin is generally more susceptible to changing climate with even marginal rises in temperature could lead to severe loss in SOC. These results highlight the need for proactive climate adaptation strategies to safeguard SOC in vulnerable agricultural landscapes, ensuring soil health and resilience in the face of climate change.

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评估土壤有机碳的时空变化及其对气候变化的脆弱性:自下而上的机器学习方法
土壤有机碳(SOC)是陆地碳循环的重要组成部分,对农业生产力至关重要。量化土壤有机碳对未来气候变化的敏感性对于维持农业生产和减少温室气体排放至关重要。然而,由于长期 SOC 数据稀缺,且未来气候情景存在很大的不确定性,这仍然是一项挑战。本研究提出了一个自下而上的机器学习框架,以评估泾河流域(典型的黄土丘陵沟壑流域)SOC 的时空变化及其对气候变化的脆弱性。首先,利用机器学习技术整合原位测量数据,估算了 SOC 的长期(2000-2023 年)动态变化。结果表明,SOC 高值区主要分布在山地-黄土过渡带的农田中,而低值区主要分布在黄土地区。在研究期间,SOC 含量呈轻微增长趋势,增长率为 0.02 g kg-1 yr-1(p = 0.449)。随后,通过将稳健的机器学习模型与自下而上的框架相结合,评估了农田地表 SOC 对未来气候变化的脆弱性。为此,研究探索了多种可能的未来气候,以确定临界气候阈值及其在盆地农田中的空间变化。基于这一分析,本研究发现,盆地北部的农田一般更容易受到气候变化的影响,即使气温略有上升,也会导致 SOC 的严重损失。这些结果突出表明,有必要采取积极的气候适应战略,以保护脆弱农业景观中的 SOC,确保土壤健康和面对气候变化时的恢复能力。
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