孙欣琪, 张蚌蚌, 柴朝卿, 牛文浩, 于强. 沙地整治下榆林土地利用及土壤有机质时空分异特征[J]. 农业工程学报, 2022, 38(24): 207-217. DOI: 10.11975/j.issn.1002-6819.2022.24.023
    引用本文: 孙欣琪, 张蚌蚌, 柴朝卿, 牛文浩, 于强. 沙地整治下榆林土地利用及土壤有机质时空分异特征[J]. 农业工程学报, 2022, 38(24): 207-217. DOI: 10.11975/j.issn.1002-6819.2022.24.023
    Sun Xinqi, Zhang Bangbang, Chai Chaoqing, Niu Wenhao, Yu Qiang. Spatial-temporal characteristics of land use and soil organic matter in Yulin under sandy land remediation[J]. Transactions of the Chinese Society of Agricultural Engineering (Transactions of the CSAE), 2022, 38(24): 207-217. DOI: 10.11975/j.issn.1002-6819.2022.24.023
    Citation: Sun Xinqi, Zhang Bangbang, Chai Chaoqing, Niu Wenhao, Yu Qiang. Spatial-temporal characteristics of land use and soil organic matter in Yulin under sandy land remediation[J]. Transactions of the Chinese Society of Agricultural Engineering (Transactions of the CSAE), 2022, 38(24): 207-217. DOI: 10.11975/j.issn.1002-6819.2022.24.023

    沙地整治下榆林土地利用及土壤有机质时空分异特征

    Spatial-temporal characteristics of land use and soil organic matter in Yulin under sandy land remediation

    • 摘要: 毛乌素沙地是典型的生态脆弱区,近年来针对其在榆林境内的沙地整治利用取得显著成效,也对土壤环境产生了深刻影响。为了探究沙地不同整治利用方式对土壤有机质的影响,该研究选取榆林市显性沙地,利用多光谱遥感影像及相关光谱指数,结合沙地土地利用变化特征,通过XGBoost机器学习方法,反演1990-2020年土壤有机质含量;分析不同土地类型下土壤有机质含量变化,通过半变异函数揭示了其空间变异性,厘清人为因素和自然环境的影响程度。结果表明,30 a间榆林5 460 km2沙地中超过半数得到整治和利用,沙地-草地是最主要的地类转变方式,建设用地面积增长最迅速;沙区土壤有机质含量上升,但整体呈现先增加后降低的趋势,有机质均值由0.34%增长至0.79%,近10年降低至0.51%;榆林沙区土壤有机质具有较强的空间自相关性。起初,人为利用对其有积极作用,但随着沙地的利用强度增大,对土壤有机质产生负向作用,进而致使其含量下降,面临土地退化危机。建议加强退化林草的修复改良,放缓建设用地开发力度,研究以期为沙地整治提供理论和实践借鉴意义,保护榆林沙地土壤环境安全。

       

      Abstract: Abstract: Yulin is one of the prefecture-level cities bordering Mu Us Sandy Land and Loess Plateau in Shaanxi Province, China. Among them, the Mu Us Sandy Land is one of the most typical ecologically fragile areas. The soil environment in Yulin City has presented the profound impact after remarkable remediation and utilization in recent years. Soil organic matter (SOM) can be an important indicator of soil fertility and productivity. The trend of SOM can also greatly contribute to the decision-making on the stability and security of soil ecosystem under different natural conditions and anthropogenic influence. It is a high demand to monitor the SOM dynamic changes from the large-scale space and long time series. Taking the conspicuous sandy land in Yulin City as the research area, the purpose of this study is to determine the characteristics of land use changes from 1990 to 2020. A systematic investigation was also performed on the variations in the SOM content under different land types that transformed from the sandy land, in order to clarify the effects of different remediation and utilization on the SOM in the sandy land. The dominant sandy land was selected to calculate the dynamic attitude of land use for the transformation characteristics of land use. Three machine learnings (decision tree, random forest, and XGBoost) were used to evaluate the factors related to the natural conditions and land use change characteristics of sandy land. The fitting accuracy was then obtained, according to each waveband of multispectral remote sensing images and related spectral indices. Finally, the XGBoost was selected to invert the SOM content. A systematic analysis was made on the SOM content and spatial distribution characteristics under different land types. After that, a semi-variance function was used to reveal the spatial variability. The average SOM content was calculated to clarify the influence of anthropogenic factors and natural environment on the desert SOM. The results show that more than half of the sandy land was remediated and utilized from 1990 to 2020, indicating the fastest transformation. Specifically, the sandy grassland was the most important land transformation, whereas, the fastest increase was found in the construction land area. The better inversion was also obtained to estimate the SOM content with the inversion error within 13% than before, according to the multispectral remote sensing using XGBoost machine learning. The average SOM of arable land and water area reached nearly 0.8% of land use types. The SOM of all land use types decreased significantly, with the average SOM of 0.51% in 2020. A strong spatial autoregulation of SOM was depended mainly on the natural environmental factors, such as temperature, precipitation, and topography. Initially, the human activities posed a positive impact. But, a negative impact was led to the decline in the SOM content and the land degradation, as the intensity of sand use increased. Some recommendations were given to strengthen the restoration and improvement of degraded forest and grass. The finding can provide the theoretical and practical implications for the sandy land remediation, particularly for the protection of the soil environmental safety of Yulin sandy land.

       

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