...
首页> 外文期刊>Soil Science Society of America Journal >Soil Series Mapping By Knowledge Discovery from an Ohio County Soil Map
【24h】

Soil Series Mapping By Knowledge Discovery from an Ohio County Soil Map

机译:通过俄亥俄县土壤图的知识发现进行土壤系列图

获取原文
获取原文并翻译 | 示例
   

获取外文期刊封面封底 >>

       

摘要

Machine learning can be used to derive predictive spatial models from existing soil maps, for updating soil surveys, improving efficiency of new surveys in similar landscapes, and to disaggregate map units containing multiple soil series, such as in the Soil Survey Geographic Database (SSURGO). One challenge with using aggregated soil map units as a source for training machine learning systems to map series is ambiguity in labeling the training set. Ambiguity emerges while assigning soil series to instances that would be used as training instances in modeling the data, as a map unit in SSURGO can contain more than one component soil series. Disambiguation of training instances is proposed as a technique to handle ambiguity. The k-nearest neighbor (kNN) algorithm, which classifies the training examples based on closest training examples in attribute space using the list of component soil series information available in the tabular data of SSURGO, is proposed as a viable method to assign most likely soil series to training instances. Two different learning algorithms, J48, a classification tree algorithm, and Random Forest, an ensemble classifier, were applied to evaluate soil series prediction for Monroe County, Ohio. The results showed an improvement in prediction accuracy with disambiguation using kNN. Among the two learning algorithms, Random Forest demonstrated better performance in mapping major soils. However, J48 predicted some minor soils which were not predicted by Random Forest. The maps were useful in identifying areas of uncertainty such as misplacement of polygon boundaries, presence of inclusions, and incorrect labeling, which could serve as a guide for further field investigations and for rationalizing the mapping intensity for SSURGO maps.RI Slater, Brian/D-1740-2013OI Slater, Brian/0000-0001-8111-9684
机译:机器学习可用于从现有土壤地图中获取预测性空间模型,更新土壤调查,提高类似景观中新调查的效率以及分解包含多个土壤系列的地图单位,例如在土壤调查地理数据库(SSURGO)中。使用聚合土壤地图单元作为训练机器学习系统来绘制地图序列的来源的一个挑战是在标注训练集时存在歧义。在将土壤系列分配给在数据建模中用作训练实例的实例时,会出现歧义,因为SSURGO中的地图单元可以包含多个成分土壤系列。提出消除训练实例的歧义作为处理歧义的技术。提出了一种k最近邻算法(kNN),该算法使用SSURGO表格数据中可用的分量土壤系列信息列表,基于属性空间中最接近的训练示例对训练示例进行分类,是一种分配最可能的土壤的可行方法系列训练实例。两种不同的学习算法,即分类树算法J48和整体分类器Random Forest,被用于评估俄亥俄州门罗县的土壤系列预测。结果表明,使用kNN消除歧义可提高预测精度。在这两种学习算法中,随机森林在绘制主要土壤时表现出更好的性能。但是,J48预测了一些随机森林无法预测的少量土壤。这些地图可用于识别不确定性区域,例如多边形边界的错位,内含物的存在和不正确的标注,这可以为进一步的现场调查和合理化SSURGO地图的映射强度提供指导.RI Slater,Brian / D -1740-2013OI Slater,Brian / 0000-0001-8111-9684

著录项

相似文献

  • 外文文献
  • 中文文献
  • 专利
获取原文

客服邮箱:kefu@zhangqiaokeyan.com

京公网安备:11010802029741号 ICP备案号:京ICP备15016152号-6 六维联合信息科技 (北京) 有限公司©版权所有
  • 客服微信

  • 服务号