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Machine learning assessments of soil drying for agricultural planning

机译:用于农业计划的土壤干燥的机器学习评估

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The hydrologic processes of wetting and drying play a crucial role in agricultural activities involving heavy equipment on unpaved terrain. When soil conditions moisten, equipment can become mired, causing expensive delays. While experienced users may assess soil conditions before entering off-road areas, novice users or those who must remotely assess sites before traveling may have difficulty assessing conditions reliably. One means of assessing dryness is remotely-monitored in situ sensors. Unfortunately, land owners hesitate to place sensors due to monetary costs, complexity, and sometimes infeasibility of physical visits to remote locations. This work addresses these limitations by modeling the wetting/drying process through machine learning algorithms fed by hydrologic data - remotely assessing soil conditions using only publicly-accessible information. Classification trees, k-nearest-neighbors, and boosted perceptrons deliver statistical soil dryness estimates at a site located in Urbana, IL The k-nearest-neighbor and boosted perceptron algorithms both performed with 91-94% accuracy, with most misclassifications falling within calculated margins of error. These analyses demonstrate that reasonably accurate predictions of current soil conditions are possible with only precipitation and potential evaporation data. These two values are measured throughout the continental United States and are likely to be available globally from satellite sensors in the near future. Through this type of approach, agricultural management decisions can be enabled remotely, without the time and expense of on-site visitations or extensive ground-based sensory grids
机译:湿润和干燥的水文过程在农业活动中起着至关重要的作用,涉及在未铺设的地形上使用重型设备。当土壤条件变湿时,设备可能会变得泥泞不堪,造成昂贵的延误。虽然经验丰富的用户可以在进入越野区域之前评估土壤条件,但是新手用户或必须在出行之前进行远程评估的用户可能难以可靠地评估条件。评估干燥度的一种方法是远程监测原位传感器。不幸的是,由于金钱成本,复杂性以及有时无法实际访问偏远地区,土地所有者不愿放置传感器。这项工作通过利用水文数据提供的机器学习算法对润湿/干燥过程进行建模,从而解决了这些局限性-仅使用可公开访问的信息远程评估土壤状况。分类树,k近邻和增强感知器在位于伊利诺伊州厄巴纳的站点上提供了土壤干度的统计估计。k近邻和增强感知器算法均以91-94%的准确度执行,大多数错误分类均在计算范围内误差幅度。这些分析表明,仅降水量和潜在蒸发量数据,就可能对当前土壤状况进行合理准确的预测。这两个值是在美国整个大陆范围内测得的,在不久的将来很可能会在全球范围内从卫星传感器获得。通过这种方法,可以远程执行农业管理决策,而无需花费时间和金钱进行现场访问或广泛的基于地面的感官网格

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