基于多源数据融合的绿洲土壤盐分时空演变归因及治理响应

    Spatial and temporal evolution of soil salinity and its driving factors in Yarkand River Oasis based on multi-source data fusion

    • 摘要: 土壤盐渍化严重制约干旱区农业可持续发展与生态安全。针对干旱区绿洲盐渍化监测中大尺度遥感影像时空不连续、算力受限以及驱动机制不明等挑战,该研究以新疆叶尔羌河流域绿洲为研究区,引入基于计算统一设备架构且支持GPU的增强型时空自适应反射率融合模型(compute unified device architecture-enhanced spatial and temporal adaptive reflectance fusion model,CU-ESTARFM)对Landsat与MODIS影像进行时空融合处理,结合环境变量,利用XGBoost-SHAP可解释性框架筛选敏感变量,进而构建随机森林(random forest,RF)、梯度提升决策树(extreme gradient boosting,XGBoost)、卷积神经网络(convolutional neural network,CNN)、反向传播神经网络(back propagation neural network,BP)、支持向量机(support vector machine,SVM)反演模型,对研究区2019—2024年春播期(4月)的土壤盐分时空演变进行分析并制定管控策略。结果表明:1)Cu-ESTARFM算法解决了传统时空融合技术在大尺度应用中面临的长时序、高精度时空数据稀缺及计算效率受限等问题,高效生成了2019—2024年春播期高时空分辨率数据集,基于环境变量和遥感影像融合的随机森林模型反演精度最佳(决定系数0.65,均方根误差0.16 %);2)2019—2024年,研究区土壤盐分含量总体呈上游到下游增加的趋势,整体呈现“西南低-东北高”的分布格局,裸地盐分增幅为86 %~157 %,农田因灌溉管理盐分相对稳定,下游区域盐渍化加剧;3)风助蒸发及植被退化与盐分表聚过程存在显著相关性,对此提出“分区施策+边缘阻断”模式:上游实施水权水位双控合理灌排,切断源头;下游强化排盐与生物-化学改良协同调控;构建“农-草-裸”交错带生态韧性屏障,通过集约管理边缘耕地与立体防沙,阻断“土地退化-盐分表聚”恶性循环。

       

      Abstract: Soil salinization constitutes a critical environmental bottleneck that severely restricts sustainable agricultural development and jeopardizes ecological security in arid oasis regions. However, the effective long-term monitoring and precise governance of this phenomenon in large-scale oases are often hindered by the trade-offs between spatial and temporal resolution in available remote sensing imagery, the high computational costs of processing large-scale datasets, and an insufficient understanding of the complex driving mechanisms behind salt accumulation. To address these challenges, this study establishes a comprehensive technical framework applied to the Yarkand River Basin Oasis in Xinjiang, China. The research innovatively incorporates the compute unified device architecture-enhanced spatial and temporal adaptive reflectance fusion model (Cu-ESTARFM), a GPU-accelerated algorithm designed to fuse Landsat and MODIS imagery. This approach effectively addresses the spatiotemporal discontinuity caused by sensor revisit cycles and cloud contamination, generating a high-quality, continuous spatiotemporal dataset. Furthermore, to enhance the physical interpretability of the model, the XGBoost-SHAP (shapley additive explanations) framework was utilized to quantitatively screen and identify the most sensitive environmental covariates from a multidimensional pool of topographic, climatic, and land-use variables. Based on the fused imagery and optimized variables, five distinct machine learning models—random forest (RF), extreme gradient boosting (XGBoost), convolutional neural network (CNN), back propagation neural network (BP), and support vector machine (SVM)—were constructed and systematically compared to reconstruct the spatiotemporal evolution of soil salinity during the critical spring sowing period (April) from 2019 to 2024. The results demonstrate that the Cu-ESTARFM algorithm significantly improved computational efficiency, successfully solving the problem of data scarcity for long-term, high-precision monitoring in large-scale areas. Among the evaluated models, the random forest (RF) model exhibited the highest performance, achieving a coefficient of determination (R2) of 0.65 and a root mean square error (RMSE) of 0.16 %, confirming the superiority of integrating spatiotemporal fusion with multi-source environmental data. Spatiotemporally, the soil salinity content in the study area displayed a clear increasing trend from the upstream alluvial fans to the downstream plains, characterized by a distinct "low in the southwest and high in the northeast" distribution pattern. Land use analysis indicated that salinity in bare lands experienced a dramatic increase of 86 % to 157 %, whereas farmland salinity remained relatively stable due to consistent irrigation and management practices, despite an overall intensification of salinization in the downstream regions. The attribution analysis revealed that wind-assisted evaporation and vegetation degradation show a significant correlation with the process of surface salt accumulation, particularly in the dry spring season where high wind speeds and temperatures synergistically accelerate evaporation in the absence of effective leaching. Consequently, a "partitioned policy + edge blocking" management strategy is proposed. This includes implementing a dual control strategy for water rights and groundwater levels in upstream areas to cut off salt sources, and strengthening salt drainage and bio-chemical reclamation measures in downstream areas. Crucially, the study advocates for constructing an ecological resilience barrier within the "farmland-grassland-bare land" ecotone. By adopting intensive management for marginal farmlands and deploying three-dimensional sand control measures, the vicious cycle of "land degradation inducing salt surface accumulation" can be effectively intercepted. This research provides a replicable paradigm for dynamic salinity monitoring and offers a scientific basis for precision governance in complex arid ecosystems.

       

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