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Digital Mapping of Soil Available Phosphorus Supported by AI Technology for Precision Agriculture

机译:AI技术支持的精准农业土壤有效磷的数字制图

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Precision agriculture has been proposed to improve the sustainability of agriculture and solve the environmental pollution of soil. In precision agriculture process, the management of water and fertilizer is carried out on agricultural operation units. Therefore, acquisition of accurate soil nutrient distribution information is a key step for precision agriculture application and digital soil mapping is an effective technology. Significant progress has been made in digital soil mapping over the past 20 years. However, the current digital soil mapping framework was implemented based on grids, which was not consistent with the operation units of precision agriculture. This paper proposed a geo-parcel based digital soil mapping framework on the support of artificial intelligence technology for precision agriculture application. Two key technologies were studied for the implementation of this framework. Geo-parcels automatic extraction was the basis of this method, and a modified VGG 16 network was used for geo-parcels' accurate boundary extraction from high resolution images. Different machine learning methods were attempted to construct the relationship between soil available phosphorus and environment on geo-parcels. We chose an agricultural region in Zhongning County, Ningxia Province as the study area, and the new digital soil mapping framework was applied for soil available phosphorus mapping. This research showed that geo-parcel based digital mapping method could reduce the number of prediction units more than 50% for fine soil mapping, and effectively improve the prediction and application efficiency. This study was an attempt to realize soil mapping based on agricultural operation units for precision agriculture application. The high resolution remote sensing images provide basic data for the realization of this idea and the development of AI technology provides technical support for it. In the future, we will carry out experiments in larger areas to further optimize this method and key technologies for the applications in more complex environments.
机译:已经提出了精确农业以改善农业的可持续性并解决土壤的环境污染。在精确农业过程中,水和肥料的管理是在农业经营单位上进行的。因此,获取准确的土壤养分分布信息是精准农业应用的关键步骤,数字化土壤测绘是一项有效的技术。在过去的20年中,数字土壤制图取得了重大进展。但是,当前的数字土壤制图框架是基于网格实现的,这与精确农业的运营单位不一致。本文在人工智能技术的支持下,提出了一种基于地理包裹的数字土壤制图框架,用于精准农业。为实现此框架,研究了两种关键技术。地理包裹自动提取是该方法的基础,并使用改进的VGG 16网络从高分辨率图像中准确提取地理包裹的边界。尝试了不同的机器学习方法来构建土壤有效磷与地质包裹环境之间的关系。我们选择了宁夏中宁县的一个农业区作为研究区域,并将新的数字土壤测绘框架应用于土壤有效磷测绘。研究表明,基于地理宗地的数字制图方法可将精细土壤制图的预测单元数减少50%以上,有效提高了预测和应用效率。这项研究是为了实现基于农业操作单元的土壤制图,以进行精确农业应用的尝试。高分辨率遥感影像为实现这一想法提供了基础数据,人工智能技术的发展为其提供了技术支持。将来,我们将在更大的范围内进行实验,以进一步优化此方法和关键技术,以适应更复杂的环境中的应用。

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