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Precision agriculture in dry land: spatial variability of crop yield and roles of soil surveys aerial photos and digital elevation models

机译:干旱陆地精密农业:土壤调查鸟类照片和数字高度模型的作物产量及作物的空间变异性

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In dryland, yield of crop varies substantially in space, often changing by an order of magnitude within few meters. Precision agriculture aims at exploiting this variability by changing agriculture management practices in space according to site specific conditions. Thus instead of managing a field (typical area 50 to 100 hectares) as a single unit using average conditions, the field is partitioned into small pieces of land known as management units. The size of management units can be in the order of 100 to 1,000 m$+2$/ to capture the patterns of variation of yield in the field. Agricultural practices like seeding rate, type of crop, and tillage and fertilizers are applied at the scale of the management unit to suit local agronomic conditions in unit. If successfully practiced, precision agriculture has the potential of increasing income and minimizing environmental impacts by reducing over application of crop production inputs. In the 90s, the implementation of precision agriculture was facilitated tremendously due to the wide availability and use of three technologies: (1) the Global Positioning System (GPS), (2) the Geographic Information System (GIS), and (3) remote sensing. The introduction of the GPS allowed the farmer to determine his coordinate location as equipments are moved in the field. Thus, any piece of equipment can be easily programmed to vary agricultural practices according to coordinate location over the field. The GIS allowed the storage and manipulation of large sets of data and the production of yield maps. Yield maps can be correlated with soil attributes from soil survey, and/or topographical attributes from a Digital Elevation Model (DEM). This helps predicting variation of potential yield over the landscape based on the spatial distribution of soil and topographical attributes. Soil attributes may include soil PH, Organic Matter, porosity, and hydraulic conductivity, whereas topographical attributes involve the estimations of elevation, slope, aspect, curvature, and specific catchment area. Finally remote sensing provided a means of assessing soil and crop conditions over large scales from the air, without excessive sampling on the ground. There are two objectives for this work. The first objective is to analyze the spatial variability of yield across a spectrum of scales to identify the spatial characteristics of yield variation; in essence, we are trying to answer the following questions, at what scale of management unit we should resolve the field level variability and what is the relationship between this resolution and the observed variability form a yield map? The second objective is to identify the soil and topographical attributes that control yield variation over the landscape topography. We already know that, because erosion and deposition are major processes in the formation of a catena, soil variations occur in response to surface and subsurface flow over the landscape. Also landscape positions corresponding to low elevation tend to have high catchment area which usually results in high soil water content in the root zone and thick A horizon. Can topographical attributes explain yield variation observed in the landscape? Will topographical attributes extracted from a DEM compensate for the relatively poor spatial resolution from a soil survey?
机译:在Dryland中,作物产量基本上在太空中变化,通常在几米内的数量级变化。精密农业旨在通过根据现场特定条件改变空间的农业管理实践来利用这种可变性。因此,使用平均条件将该字段(典型区域50至100公顷)作为单个单元管理,该字段被划分为称为管理单元的小块。管理单位的大小可以是100至1,000毫元+ 2美元/以捕获现场产量的变化模式。种子率,作物类型和耕作和肥料的农业实践以管理单元的规模应用,以适应单位的局部农艺条件。如果成功练习,精密农业的潜力可能会增加收入增加,并通过减少农作物生产投入来减少环境影响。在90年代,由于三种技术的广泛可用性和使用促进了精密农业的实施:(1)全球定位系统(GPS),(2)地理信息系统(GIS),(3)遥控器传感。 GPS的引入允许农民确定他的坐标位置,因为设备在现场移动。因此,可以轻松地将任何设备易于编程为根据该领域的坐标位置改变农业实践。 GIS允许存储和操纵大量数据和产量图的生产。产量图可以与土壤调查的土壤属性相关,和/或从数字高度模型(DEM)的地形属性相关联。这有助于基于土壤和地形属性的空间分布来预测景观潜在产量的变化。土壤属性可包括土壤pH,有机物,孔隙率和液压导电性,而地形属性涉及仰角,坡,方面,曲率和特定集水区的估计。最后遥感提供了一种评估来自空气的大鳞片的土壤和作物条件的方法,而不是在地面上过度采样。这项工作有两个目标。第一个目的是分析横跨一定尺度的产量的空间变异,以识别产量变化的空间特征;从本质上讲,我们正试图回答以下问题,在什么管理单元的规模中,我们应该解决现场级别变异性,这个分辨率与观察到的可变性之间的关系是什么,形成了产量图?第二个目的是鉴定控制横向形貌的产量变化的土壤和地形属性。我们已经知道,因为侵蚀和沉积是在形成CATEA的形成中的主要过程,响应于景观的表面和地下流动发生土壤变化。此外,对应于低仰角的景观位置往往具有高集水区,通常导致根区中的高土壤含水量和厚的地平线。地形属性可以解释在景观中观察到的产量变化吗?从DEM中提取的地形属性会补偿来自土壤调查的相对较差的空间分辨率吗?

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