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基于RWEQ与MEDALUS模型的塔里木胡杨国家级自然保护区沙漠化风险精细化评估

Fine-scale assessment of desertification risk in Tarim Populus euphratica National Nature Reserve based on RWEQ and MEDALUS models

  • 摘要: 针对干旱区沙漠化风险评估中土壤数据空间分辨率粗糙、传统线性评估难以揭示生态系统动静耦合机制的问题,该研究旨在构建一套适用于高度破碎化生境的精细化综合沙漠化风险评估体系,揭示极端干旱区生态系统风险演变规律。以新疆塔里木胡杨林国家级自然保护区为研究区,利用随机森林算法(Random forest,RF)将土壤质地数据由1km降尺度至30m;在此基础上,集成修正风蚀方程(Revised wind erosion equation,RWEQ)量化的动态风蚀驱动力与构建的沙漠化敏感性指数(Desertification sensitivity index,DSI)表征的静态敏感性,通过分级分区矩阵构建综合沙漠化风险等级;采用Sen+Mann-Kendall趋势分析及最优地理探测器(optimal multivariable stratified geodetector,OMGD)解析2000—2024年区域风险的时空演变特征与多因子非线性驱动机制。结果表明:1)降尺度后的土壤质地数据与实测值拟合良好决定系数(coefficient of determination,R2)均不小于0.79,有效提升了局部微地貌特征的识别精度。2)保护区沙漠化风险呈沿河低、外围高的梯度分布,极高风险区主要集中在塔里木河南岸。3)2000—2024年间,73.64%的区域状态稳定,风险演变呈现显著的“北降南升”空间分异,即核心区及北岸生态持续改善,而南岸边缘区面临退化压力。4)驱动力分析显示,土壤与气候因子是沙漠化风险的基础控制变量,而植被因子的解释力随时间推移显著增强与保护区所实施的生态修复工程在时间上相符合。塔里木胡杨林保护区正处于生态恢复与退化相持阶段,建议未来采取“北岸保育、南岸综合治理”的分区管控策略。该评估框架有效实现了沙漠化风险的精细化与机制化诊断。

     

    Abstract: Desertification risk assessment in arid regions was frequently hindered by the coarse spatial resolution of available soil datasets and the inherent limitations of traditional linear evaluation methodologies. These conventional approaches often failed to elucidate the complex dynamic and static coupling mechanisms driving ecosystem evolution in highly fragmented habitats. Consequently, accurately identifying specific risk sources and micro-geomorphic variations remained a significant challenge for ecological management and sustainable development. To address these scientific gaps, this study aimed to construct a high-precision, comprehensive desertification risk assessment system tailored for extreme arid zones, thereby revealing the spatiotemporal evolution patterns of ecosystem risks. The Tarim Populus euphratica National Nature Reserve, a typical ecologically fragile region, was selected as the study area. A novel analytical framework was developed and implemented. Initially, a machine learning approach utilizing the Random Forest (RF) algorithm was employed to spatially downscale soil texture data from a 1 km resolution to 30 m. This step integrated high-resolution remote sensing predictors with empirical field sampling data to enhance baseline accuracy. Subsequently, the study formulated a Comprehensive Desertification Risk Level (CDRL) through a hierarchical zoning matrix. This matrix effectively coupled the dynamic wind erosion driving forces, quantified by the Revised Wind Erosion Equation (RWEQ), with the static ecosystem sensitivity, characterized by the Desertification Sensitivity Index (DSI). Furthermore, the Theil-Sen Median trend analysis combined with the Mann-Kendall test, alongside the Optimal Multivariable Stratified Geodetector (OMGD), was applied to quantitatively decode the spatiotemporal evolution characteristics and the multi-factor nonlinear driving mechanisms of regional desertification risks over the period from 2000 to 2024.The comprehensive analysis yielded several critical findings. First, the spatial downscaling process demonstrated robust performance, achieving R2 values ranging from 0.79 to 0.82, alongside a Kling-Gupta efficiency (KGE) between 0.64 and 0.70, when validated against in-situ measurements. This high-resolution mapping effectively captured the spatial heterogeneity of micro-geomorphic features that were previously obscured. Second, in terms of temporal evolution, the area proportion of each desertification risk grade showed significant differentiation from 2000 to 2024. The proportion of extremely low-risk areas increased steadily from 22.16% to 26.99%, indicating the continuous improvement of the ecological environment in the core reserve. The proportion of extremely high-risk areas, despite inter-annual fluctuations, decreased slowly from 31.81% to 28.75% on the whole. The proportion of low-risk areas showed a shrinking trend, while the proportions of medium-risk and high-risk areas fluctuated within a relatively stable range, without presenting a significant increasing or decreasing trend. Third, temporal trend analyses revealed that the overall ecological status of the reserve maintained a resilient baseline, with 73.64% of the area exhibiting no significant changes throughout the study period. However, a pronounced spatial divergence emerged in the evolving areas: 12.82% of the area, mainly located on the north bank, experienced significant risk reduction, while 13.54% of the area on the southern edge faced ongoing degradation, maintaining a delicate dynamic balance. Fourth, the driving force detection indicated that soil properties functioned as the dominant baseline factors, with their explanatory power (q values) consistently exceeding 0.91. Notably, the explanatory power of the vegetation quality index increased significantly from 0.69 in 2000 to 0.82 in 2024, confirming the growing positive impact of anthropogenic ecological water conveyance projects.In conclusion, the proposed evaluation framework successfully facilitated a fine-scale, mechanism-based diagnosis of desertification risk, effectively overcoming traditional coarse-scale shortcomings. The findings indicated that the reserve was experiencing a phase of dynamic balance between ecological restoration and natural degradation. Based on these mechanistic insights, it was strongly recommended that future environmental management adopt a differentiated spatial strategy. This approach should focus on maintaining the ecological connectivity of the core river corridor while implementing targeted engineering governance for the 13.54% of degrading areas on the south bank.

     

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