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Adaptation of regional digital soil mapping for precision agriculture

机译:区域数字土壤测绘在精密农业中的应用

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In the initial phase of a national project to map clay, sand and soil organic matter (SOM) content in arable topsoil in Sweden, a study area in south-west Sweden comprising about 100 000 ha of arable land was assessed. Models were created for texture, SOM and two estimated variables for lime requirement determination (target pH and buffering capacity), using a data mining method (multivariate adaptive regression splines). Two existing reference soil datasets were used: a grid dataset and a dataset created for individual farms. The predictor data were of three types: airborne gamma-ray spectrometry data, digital elevation from airborne laser scanning, and legacy data on Quaternary geology. Validations were designed to suit applicability assessments of prediction maps for precision agriculture. The predictor data proved applicable for regional mapping of topsoil texture at 50 x 50 m(2) spatial resolution (root mean square error: clay = 6.5 %; sand = 13.2 %). A novel modelling strategy, 'Farm Interactive', in which soil analysis data for individual farms were added to the regional data, and given extra weight, improved the map locally. SOM models were less satisfactory. Variable-rate application files for liming created from derived digital soil maps and locally interpolated soil data were compared with 'ground truth' maps created by proximal sensors on one test farm. The Farm Interactive methodology generated the best predictions and was deemed suitable for adaptation of regional digital soil maps for precision agricultural purposes.
机译:在绘制瑞典可耕表土中粘土,沙子和土壤有机物含量的国家项目的初始阶段,评估了瑞典西南部一个研究区,该研究区占地约10万公顷。使用数据挖掘方法(多元自适应回归样条)创建了用于纹理,SOM的模型以及用于石灰需求确定的两个估计变量(目标pH和缓冲能力)模型。使用了两个现有的参考土壤数据集:网格数据集和为单个农场创建的数据集。预测数据分为三种类型:机载伽马射线光谱数据,机载激光扫描产生的数字高程和第四纪地质遗留数据。验证的设计适合于精确农业预测图的适用性评估。预测数据证明可用于空间分辨率为50 x 50 m(2)的表土质地区域映射(均方根误差:黏土= 6.5%;沙子= 13.2%)。一种新颖的建模策略“ Farm Interactive”,其中将各个农场的土壤分析数据添加到区域数据中,并赋予了额外的权重,从而局部改进了地图。 SOM模型不太令人满意。从衍生的数字土壤图和本地插值土壤数据创建的用于变灰的可变速率应用文件与一个试验场中由近端传感器创建的“地面真相”图进行了比较。 “农场互动”方法学产生了最好的预测,被认为适合于为精确农业目的改编区域数字土壤图。

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