Burdett Christopher L, Kraus Brian R, Garza Sarah J, Miller Ryan S, Bjork Kathe E
Colorado State University, Department of Biology, Fort Collins, Colorado, United States of America.
United States Department of Agriculture, Animal and Plant Health Inspection Service, Veterinary Services, Centers for Animal Health and Epidemiology, Fort Collins, Colorado, United States of America.
PLoS One. 2015 Nov 16;10(11):e0140338. doi: 10.1371/journal.pone.0140338. eCollection 2015.
Livestock distribution in the United States (U.S.) can only be mapped at a county-level or worse resolution. We developed a spatial microsimulation model called the Farm Location and Agricultural Production Simulator (FLAPS) that simulated the distribution and populations of individual livestock farms throughout the conterminous U.S. Using domestic pigs (Sus scrofa domesticus) as an example species, we customized iterative proportional-fitting algorithms for the hierarchical structure of the U.S. Census of Agriculture and imputed unpublished state- or county-level livestock population totals that were redacted to ensure confidentiality. We used a weighted sampling design to collect data on the presence and absence of farms and used them to develop a national-scale distribution model that predicted the distribution of individual farms at a 100 m resolution. We implemented microsimulation algorithms that simulated the populations and locations of individual farms using output from our imputed Census of Agriculture dataset and distribution model. Approximately 19% of county-level pig population totals were unpublished in the 2012 Census of Agriculture and needed to be imputed. Using aerial photography, we confirmed the presence or absence of livestock farms at 10,238 locations and found livestock farms were correlated with open areas, cropland, and roads, and also areas with cooler temperatures and gentler topography. The distribution of swine farms was highly variable, but cross-validation of our distribution model produced an area under the receiver-operating characteristics curve value of 0.78, which indicated good predictive performance. Verification analyses showed FLAPS accurately imputed and simulated Census of Agriculture data based on absolute percent difference values of < 0.01% at the state-to-national scale, 3.26% for the county-to-state scale, and 0.03% for the individual farm-to-county scale. Our output data have many applications for risk management of agricultural systems including epidemiological studies, food safety, biosecurity issues, emergency-response planning, and conflicts between livestock and other natural resources.
美国牲畜分布情况只能以县级或更低分辨率进行绘制。我们开发了一种空间微观模拟模型,称为农场位置与农业生产模拟器(FLAPS),该模型模拟了美国本土范围内各个畜牧场的分布和数量。以家猪(Sus scrofa domesticus)为例,我们针对美国农业普查的层次结构定制了迭代比例拟合算法,并估算了为确保机密性而被编辑的未公布的州级或县级牲畜总数。我们采用加权抽样设计收集有关农场存在与否的数据,并利用这些数据开发了一个全国范围的分布模型,该模型以100米分辨率预测各个农场的分布。我们实施了微观模拟算法,利用估算的农业普查数据集和分布模型的输出结果来模拟各个农场的数量和位置。在2012年农业普查中,约19%的县级猪总数未公布,需要进行估算。通过航空摄影,我们确认了10238个地点是否存在畜牧场,发现畜牧场与开阔区域、农田和道路相关,也与温度较低、地形较平缓的区域相关。猪场的分布差异很大,但我们的分布模型的交叉验证产生的受试者工作特征曲线下面积值为0.78,表明预测性能良好。验证分析表明,FLAPS在州到国家尺度上基于绝对百分比差值<0.01%、县到州尺度上为3.26%、个体农场到县尺度上为0.03%,准确地估算和模拟了农业普查数据。我们的输出数据在农业系统风险管理中有许多应用,包括流行病学研究、食品安全、生物安全问题、应急响应规划以及牲畜与其他自然资源之间的冲突。