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DERIVING CROP SPECIFIC COVARIATE DATA SETS FROM MULTI-YEAR NASS GEOSPATIAL CROPLAND DATA LAYERS

机译:从多年NASS地理空间裁剪数据层获取裁剪特定的Covariate数据集

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The National Agricultural Statistics Service (NASS) Area Sampling Frames (ASFs) are based on the stratification of US land cover by percent cultivation. Recently, an automated stratification method based on the NASS Cropland Data Layer (CDL) was developed to efficiently and objectively stratify US land cover. This method achieved higher accuracies in all cultivated strata with statistical significance at a 95% confidence level. This paper proposed to develop crop specific covariate data based on 2007 - 2010 CDLs. Crop (corn, soybeans, wheat and cotton) and non crop (forest, urban and water) covariate data were derived and validated for six states. Producer and user accuracies for the covariate data sets were based on independent 2011 Farm Service Agency Common Land Unit data and 2011 CDLs. Non crop covariate data were validated using the National Land Cover Data 2006. Covariate data were used within NASS to conduct substratification of the 2013 Oklahoma ASF.
机译:国家农业统计服务(NASS)区域采样框架(ASF)基于培养百分比的美国土地覆盖的分层。最近,开发了一种基于NASS农田数据层(CDL)的自动化分层方法,以有效地,有效地地分层美国陆地覆盖。该方法在所有栽培地层中达到了更高的精度,统计显着性为95%的置信水平。本文提出基于2007 - 2010 CDL的作物特定的协变量数据。六种州获得和验证了作物(玉米,大豆,小麦和棉花)和非作物(森林,城市和水)协变量数据。协变量数据集的生产者和用户准确性基于2011年的农场服务代理公共土地单位数据和2011年CDL。使用国家土地覆盖数据2006验证了非作物协变量数据。在NASS内使用协变量数据来进行2013年俄克拉荷马州ASF的次数。

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