Arid
DOI10.1007/978-90-481-8863-5_15
Random Forests Applied as a Soil Spatial Predictive Model in Arid Utah
Stum, A. K.1; Boettinger, J. L.2; White, M. A.3; Ramsey, R. D.4
通讯作者Stum, A. K.
会议名称3rd Global Workshop on Digital Soil Mapping
会议日期SEP 30-OCT 03, 2008
会议地点Logan, UT
英文摘要

We sought to predict soil classes by applying random forests (RF), a decision tree analysis, to predict 24 soil classes across an arid watershed of western Utah. Environmental covariates were derived from Landsat 7 Enhanced Thematic Mapper Plus (ETM+) and digital elevation models (DEM). Random forests are similar to classification and regression trees (CART). However, RF is doubly random. Many (e.g., 500) weak trees are grown (trained) independently because each tree is trained with a new randomly selected bootstrap sample, and a random subset of variables is used to split each node. To train and validate the RF trees, 561 soil descriptions were made in the field. An additional 111 points were added by case-based reasoning using photo interpretation. As RF makes classification decisions from the mode of many independently grown trees, model uncertainty can be derived. Furthermore, the probability that a pixel belongs to one or more classes in the legend can be determined. The overall out of the bag (OOB) error for discrete classes was 55.2%. The confusion matrix revealed that four soils that frequently co-occurred on land-forms were frequently misclassified as each other. These soils were combined into six soil map units. To identify pixels that might belong to one of these newly created combinations of soil classes, minimum threshold probabilities were set. Employing probability by class can be an effective and objective method of determining membership in soil map unit associations and complexes mapped at the 1:24,000 scale.


英文关键词Soil components Soil map units Digital soil mapping Digital elevation model Satellite imagery
来源出版物DIGITAL SOIL MAPPING: BRIDGING RESEARCH, ENVIRONMENTAL APPLICATION, AND OPERATION
ISSN2352-4774
出版年2010
卷号2
页码179-189
ISBN978-90-481-8862-8
EISBN978-90-481-8863-5
出版者SPRINGER
类型Proceedings Paper
语种英语
国家USA
收录类别CPCI-S
WOS记录号WOS:000391133800015
WOS类目Remote Sensing ; Soil Science
WOS研究方向Remote Sensing ; Agriculture
资源类型会议论文
条目标识符http://119.78.100.177/qdio/handle/2XILL650/298259
作者单位1.Nat Resources Conservat Serv, USDA, 340 North 600 East, Richfield, UT 84701 USA;
2.Utah State Univ, Dept Plants Soils & Climate, Logan, UT 84322 USA;
3.Utah State Univ, Dept Watershed Sci, Logan, UT 84322 USA;
4.Utah State Univ, Dept Wildland Resources, Logan, UT 84322 USA
推荐引用方式
GB/T 7714
Stum, A. K.,Boettinger, J. L.,White, M. A.,et al. Random Forests Applied as a Soil Spatial Predictive Model in Arid Utah[C]:SPRINGER,2010:179-189.
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