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Mapping stocks of soil total nitrogen using remote sensing data: A comparison of random forest models with different predictors

机译:利用遥感数据映射土壤总氮的堆积:不同预测因子随机林模型的比较

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摘要

Estimation of soil total nitrogen (STN) is important for quantifying the spatial distribution of soil N (Nitrogen) stocks, determining the amount absorbed by crops and avoiding yield losses and environmental pollution. The objective of this research was to determine the spatial distribution of STN using a remote sensing approach and to investigate the importance of different predictors under two conditions: the bare soil condition and the vegetated condition. We also investigated whether the Sentinel-2A red-edge bands and relative spectral indices were suitable for STN estimation. Soil data were collected from the topsoil (0-20 cm) at 104 sampling sites on 06/15/2016 from farmland in a black soil region in Northeast China. Two Sentinel-2A Multispectral Instrument (MSI) remote sensing images were acquired on 05/26/2016 and 08/03/2016 to represent the two conditions. Environmental variables included the terrain attributes, temperature and precipitation. Then, 21 predictors, including the original bands (O), normal spectral indices (S), red-edge indices (R) and environmental variables (E), were employed to estimate the spatial distribution of the STN content using a random forest (RF) model. Finally, different predictors were combined to construct RF models, and the prediction model with the best performance was selected to determine the spatial pattern of the STN content. The results showed that the predictors had different levels of importance under the two conditions. However, most environmental variables and normal spectral indices always play a significant role in the estimation of STN. The model with the combination of the original bands, normal spectral indices, red-edge indices and environmental variables (O + S + E + R) under the bare soil condition had the best prediction performance, and the combination of the original bands, normal spectral indices and red-edge indices (O + S + R) model had a performance similar to the O + S + E + R model. Therefore, the selection of suitable predictors is necessary to predict STN. The spatial pattern of STN was related to the crop type and elevation of the study area. The results of this study suggested that the proposed RF-based remote sensing method was able to accurately capture the variation in STN and that the performance of the prediction model can be improved by providing enough types of suitable predictors.
机译:土壤总氮(STN)的估计对于量化土壤n(氮气)股的空间分布,确定作物吸收的量并避免产量损失和环境污染。本研究的目的是利用遥感方法确定STN的空间分布,并研究不同预测因子在两个条件下的重要性:裸露的土壤条件和植被状况。我们还调查了Sentinel-2A红边频带和相对光谱指数适用于STN估计。在中国东北地区黑土地区的农田06/15/15/15/15/15/15/15/15/15/15/15/1015/15/15/107 / 2016年,从Tootsoil(0-20cm)收集土壤数据。在05/26/2016和08/03/1016中获取了两个Sentinel-2a MultiSpectral仪器(MSI)遥感图像以代表两个条件。环境变量包括地形属性,温度和降水。然后,采用21个预测器,包括原始频带(O),正常光谱索引,红边指数(R)和环境变量(e)来估计使用随机森林的STN内容的空间分布( rf)模型。最后,将不同的预测器组合以构建RF模型,并且选择具有最佳性能的预测模型来确定STN内容的空间模式。结果表明,在两个条件下,预测因子具有不同的重要性。然而,大多数环境变量和正常频谱指数总是在STN的估计中发挥重要作用。该模型具有原始频段,正常光谱索引,红边指数和环境变量(O + S + E + r)的裸机条件下的模型具有最佳的预测性能,以及原始频段的组合,正常光谱索引和红边索引(O + S + R)模型具有类似于O + S + E + R模型的性能。因此,需要选择合适的预测器以预测STN。 STN的空间模式与研究区域的作物类型和高程相关。该研究的结果表明,所提出的基于RF的遥感方法能够精确地捕获STN的变化,并且通过提供足够的合适预测器,可以改善预测模型的性能。

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