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A new land cover classification based stratification method for area sampling frame construction

机译:一种新的基于土地覆盖分类的分层方法进行区域采样框构建

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This paper proposes a new automated USDA National Agricultural Statistics Service (NASS) Cropland Data Layer (CDL) based method for stratifying U.S. land cover. The proposed method is used to stratify the NASS state level Area Sampling Frames (ASFs) by automatically calculating percent cultivation at the Primary Sampling Unit (PSU) level based on the CDL data. The CDL based stratification experiment was successfully conducted for Oklahoma, Ohio, Virginia, Georgia, and Arizona. The stratification accuracies of the traditional and new automated CDL stratification methods were compared based on 2010 June Area Survey (JAS) data. Experimental results indicated that the CDL based stratification method achieved higher accuracies in the intensively cropped areas while the traditional method achieved higher accuracies in low or non agricultural areas. The differences in the accuracies were statistically significant at a 95% confidence level. It is concluded that the CDL based stratification method will improve efficiency and reduce cost in NASS ASF construction, and improve the precision of NASS JAS estimates.
机译:本文提出了一种新的基于美国农业部国家农业统计局(NASS)农田数据层(CDL)的自动化方法,用于对美国土地覆盖物进行分层。通过基于CDL数据自动计算主要采样单位(PSU)级别的耕种百分比,所提出的方法用于对NASS状态级别的区域采样帧(ASF)进行分层。在俄克拉荷马州,俄亥俄,弗吉尼亚州,乔治亚州和亚利桑那州成功进行了基于CDL的分层实验。基于2010年6月的区域调查(JAS)数据,对传统和新型自动CDL分层方法的分层准确性进行了比较。实验结果表明,基于CDL的分层方法在集约种植区获得了更高的精度,而传统方法在低农业区或非农业区实现了更高的精度。在95%的置信水平下,准确性的差异在统计学上具有显着意义。结论是,基于CDL的分层方法将提高NASS ASF构建的效率并降低成本,并提高NASS JAS估计的精度。

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