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Monitoring the seasonal dynamics of soil salinization in the Yellow River delta of China using Landsat data

机译:利用Landsat数据监测中国黄河三角洲土壤盐渍化的季节性动态

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In regions with distinct seasons, soil salinity usually varies greatly by season. Thus, the seasonal dynamics of soil salinization must be monitored to prevent and control soil salinity hazards and to reduce ecological risk. This article took the Kenli District in the Yellow River delta (YRD) of China as the experimental area. Based on Landsat data from spring and autumn, improved vegetation indices (IVIs) were created and then applied to inversion modeling of the soil salinity content (SSC) by employing stepwise multiple linear regression, back propagation neural network and support vector machine methods. Finally, the optimal SSC model in each season was extracted, and the spatial distributions and seasonal dynamics of SSC within a year were analyzed. The results indicated that the SSC varied by season in the YRD, and the support vector machine method offered the best SSC inversion models for the precision of the calibration set (R-2 > 0.72, RMSE < 6.34 g kg(-1)) and the validation set (R-2 > 0.71, RMSE < 6.00 g kg(-1) and RPD > 1.66). The best SSC inversion model for spring could be applied to the SSC inversion in winter (R-2 of 0.66), and the best model for autumn could be applied to the SSC inversion in summer (R-2 of 0.65). The SSC exhibited a gradual increasing trend from the southwest to northeast in the Kenli District. The SSC also underwent the following seasonal dynamics: soil salinity accumulated in spring, decreased in summer, increased in autumn and reached its peak at the end of winter. This work provides data support for the control of soil salinity hazards and utilization of saline-alkali soil in the YRD.
机译:在具有明显季节的地区,土壤盐度通常在季节变化很大。因此,必须监测土壤盐渍化的季节性动态,以防止和控制土壤盐度危害并降低生态风险。本文占据了中国黄河三角洲(YRD)的Kenli区作为实验区。基于来自春季和秋季的Landsat数据,通过采用逐步多个线性回归,回到传播神经网络和支持向量机方法来创建改进的植被指数(IVIS),然后应用于土壤盐度内容(SSC)的反转建模。最后,提取了每个季节的最佳SSC模型,分析了一年内SSC的空间分布和季节性动态。结果表明,SSC在YRD中由季节变化,并且支持向量机方法提供了最佳的SSC反转模型,用于校准组的精度(R-2> 0.72,RMSE <6.34g kg(-1))和验证集(R-2> 0.71,Rmse <6.00g kg(-1)和RPD> 1.66)。弹簧的最佳SSC反转模型可以应用于冬季的SSC反转(0.66的R-2),秋季最佳型号可应用于夏季的SSC反转(R-2为0.65)。 SSC从西南到东北展出了肯尼区的逐步增加趋势。 SSC还经历了以下季节性动态:春季积聚的土壤盐度,夏季减少,秋季增加,冬季结束时达到了峰值。这项工作为控制yrd中的土壤盐度危害和利用盐水 - 碱土壤提供数据支持。

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    Shandong Agr Univ Coll Resources &

    Environm Natl Engn Lab Efficient Utilizat Soil &

    Fertilize Tai An 271018 Shandong Peoples R China;

    Shandong Agr Univ Coll Resources &

    Environm Natl Engn Lab Efficient Utilizat Soil &

    Fertilize Tai An 271018 Shandong Peoples R China;

    Shandong Agr Univ Coll Resources &

    Environm Natl Engn Lab Efficient Utilizat Soil &

    Fertilize Tai An 271018 Shandong Peoples R China;

    Shandong Agr Univ Coll Resources &

    Environm Natl Engn Lab Efficient Utilizat Soil &

    Fertilize Tai An 271018 Shandong Peoples R China;

    Shandong Agr Univ Coll Resources &

    Environm Natl Engn Lab Efficient Utilizat Soil &

    Fertilize Tai An 271018 Shandong Peoples R China;

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  • 正文语种 eng
  • 中图分类 地球物理学;
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