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Predicting tillage practices and agricultural soil disturbance in north central Montana with Landsat imagery

机译:利用Landsat影像预测蒙大拿州中北部的耕作实践和农业土壤扰动

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Management of agricultural soils, most notably tillage, influences wind, and water erosion, which in turn has implications for non-point source pollution of pesticides, fertilizer, and sediment in agro-ecosystems. No-till (NT) practices improve soil,water, and aquatic ecosystem quality by reducing soil erosion and chemical runoff. The ability of cropland soils to sequester C from the atmosphere might help mitigate global warming. Classification of Landsat ETM+ satellite images has the potential to identify tillage practices and soil disturbance over large areas, enabling efficient monitoring of these agricultural practices. Previous studies predicting tillage management had relatively small study areas (located in a single county), relatively low numbers of fields (6-51), and were temporally focused on non-planted fields to reduce the potential effects of crop canopy interference and/or field patterning. Our objectives were to predict in the presence of crop canopy and over a spatially large, management diverse study area (1) tillage systems (NT versus tilled) and (2) soil disturbance. A farm survey of the study area, north central Montana, was used to as a means to obtain extensive field-level farm management data. We compared logistic regression (LR), traditional classification tree analysis (CTA), and boosted classification tree analysis (BCTA) for identifying NT fields. Logistic regression had an overall accuracy of 94%, BCTA 89%, and CTA 87%, but tillage was not well distinguished. Soil disturbance was estimated using linear regression (LM), regression tree analysis (RTA), and stochastic gradient boosting (SGB), an RTA variant. Classification of soil disturbance was best achieved using RTA (predicted mean soil disturbance not significantlydifferent than known soil disturbance, p-value = 0.08). Classification of Landsat ETM+ imagery showed promise for predicting tillage and agricultural soil disturbance over large, heterogeneous areas.
机译:农业土壤的管理,尤其是耕作,会影响风和水蚀,进而对农业生态系统中的农药,肥料和沉积物的面源污染产生影响。免耕(NT)实践通过减少土壤侵蚀和化学径流来改善土壤,水和水生生态系统的质量。农田土壤从大气中隔离碳的能力可能有助于缓解全球变暖。 Landsat ETM +卫星图像的分类具有识别大面积耕作习惯和土壤扰动的潜力,从而可以有效监控这些农业实践。以前的预测耕作管理的研究涉及相对较小的研究区域(位于单个县内),相对较少的田地(6-51),并且暂时集中在非种植田地上,以减少作物冠层干扰和/或场图案化。我们的目标是在有作物冠层的情况下以及在空间上较大的,管理多样化的研究区域中进行预测(1)耕作系统(NT与耕作)和(2)土壤干扰。在蒙大拿州中北部北部对研究区进行了农场调查,以此作为获取大量田间农场管理数据的手段。我们比较了逻辑回归(LR),传统分类树分析(CTA)和增强分类树分析(BCTA)来识别NT字段。 Logistic回归的总体准确度为94%,BCTA为89%和CTA为87%,但耕作方式没有得到很好的区分。使用线性回归(LM),回归树分析(RTA)和随机梯度增强(SGB)(一种RTA变体)估算了土壤扰动。使用RTA最好地实现了土壤扰动的分类(预测的平均土壤扰动与已知土壤扰动没有显着差异,p值= 0.08)。 Landsat ETM +影像的分类显示了预测大型异质性地区耕作和农业土壤扰动的前景。

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