Fine mapping of key soil nutrient content using high resolution remote sensing image to support precision agriculture in Northwest China

Wen Dong, Yingwei Sun, Jiancheng Luo
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引用次数: 7

Abstract

The rapid development of industrialized agriculture has leads to the problems of soil pollution and water pollution. In order to solve these problems, precision agriculture (PA) has been applied to achieve precise management of agricultural water and fertilizer. In PA process, fine mapping of soil nutrient is an effective technology to acquire accurate water and fertilizer distribution information and make agricultural decision. A significant progress has been made in digital soil mapping (DSM) of soil nutrient content over the past 20 years. However, the accuracy of grid-based DSM cannot meet the practical application needs of PA. This paper proposed a fine DSM method of soil nutrient content using high resolution remote sensing images and multi-scale auxiliary data for PA application. Three key technologies were studied for the implementation of this method. The automatic extraction of fine mapping units was the basis of this method. We designed different automatic extraction methods based on high resolution remote sensing images for agricultural production units in plains and mountainous areas. The auxiliary variables in different scales were chosen and converted to construct fine-scale soil nutrient-environment relationship model. Finally, machine learning methods were used to map the spatial distribution of soil nutrients. We chose Zhongning County, Ningxia Province as the study area, which includes typical plain and mountainous agriculture. The proposed method and technologies were applied for typical soil nutrients mapping. A common grid-based spatial interpolation method was implemented with the same soil sample dataset to evaluate the effect of the proposed method. The result showed that this method could reduce the number of prediction units and effectively improve the prediction efficiency in both plain and mountainous areas for fine soil mapping and precision agriculture application. This study was an attempt to realize fine soil mapping based on PA application unit in different environments. The high-resolution remote sensing images provide basic data for the realization of this idea, and the conversion technology of multi-scale data provides better support for the spatial inference of fine soil attribute information. In the future, we will carry out experiments in larger areas to further improve the efficiency of application, and plan to expand this study to consider three-dimensional soil property prediction.
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基于高分辨率遥感影像的西北地区关键土壤养分精细制图支持精准农业
工业化农业的快速发展带来了土壤污染和水污染问题。为了解决这些问题,精准农业(PA)被应用于实现农业水肥的精准管理。在农业生产过程中,土壤养分精细制图是获取准确的水肥分布信息,进行农业生产决策的有效技术。在过去的20年中,土壤养分含量的数字土壤制图(DSM)取得了重大进展。然而,基于网格的DSM的精度不能满足PA的实际应用需求。提出了一种基于高分辨率遥感影像和多尺度辅助数据的土壤养分含量精细DSM方法。研究了实现该方法的三个关键技术。精细映射单元的自动提取是该方法的基础。针对平原和山区农业生产单位的高分辨率遥感影像,设计了不同的自动提取方法。选取不同尺度的辅助变量进行转换,构建精细尺度土壤养分-环境关系模型。最后,利用机器学习方法绘制土壤养分的空间分布图。我们选择宁夏中宁县作为研究区域,该地区包括典型的平原和山地农业。将所提出的方法和技术应用于典型土壤养分制图。在相同的土壤样本数据集上实现了一种基于网格的空间插值方法,以评估该方法的效果。结果表明,该方法可减少预测单元数量,有效提高平原和山区精细土壤制图和精准农业应用的预测效率。本研究是基于PA应用单元在不同环境下实现精细土壤制图的尝试。高分辨率遥感影像为这一思路的实现提供了基础数据,多尺度数据转换技术为精细土壤属性信息的空间推断提供了更好的支持。未来,我们将在更大的区域开展实验,进一步提高应用效率,并计划将本研究扩展到考虑三维土壤性质预测。
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