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Appropriate Sample Sizes for Monitoring Burned Pastures in Sagebrush Steppe: How Many Plots are Enough, and Can One Size Fit All?

机译:用于监测Sagebrush Steppe中的烧伤牧场的适当样本尺寸:有多少块尺寸,并且一个尺寸适合所有?

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Statistically defensible information on vegetation conditions is needed to guide rangeland management decisions following disturbances such as wildfire, often for heterogeneous pastures. Here we evaluate sampling effort needed to achieve a robust statistical threshold using >2 000 plots sampled on the 2015 Soda Fire that burned across 75 pastures and 113 000 ha in Idaho and Oregon. We predicted that the number of plots required to generate a threshold of standard error/mean ≤ 0.2 (TSR, threshold sampling requirement) for plant cover within pasture units would vary between sampling methods (rapid ocular versus grid-point intercept) and among plot sizes (1, 6, or 531 m2), as well as relative to topography, elevation, pasture size, spatial complexity of soils, vegetation treatments (herbicide or seeding), and dominance by exotic annual or perennial grasses. Sampling was adequate for determining exotic annual and perennial grass cover in about half of the pastures. A tradeoff in number versus size of plots sampled was apparent, whereby TSR was attainable with less area searched using smaller plot sizes (1 compared with 531 m2) in spite of less variability between larger plots. TSR for both grass types decreased as their dominance increased (0.5–1.5 plots per % cover increment). TSR decreased for perennial grass but increased for exotic annual grass with higher elevations. TSR increased with standard deviation of elevation for perennial grass sampled with grid-point intercept. Sampling effort could be more reliably predicted from landscape variables for the grid-point compared with the ocular sampling method. These findings suggest that adjusting the number and size of sample plots within a pasture or burn area using easily determined landscape variables could increase monitoring efficiency and effectiveness.
机译:需要有关植被条件的统计辩护信息,以指导牧场管理决策,如野火的干扰,通常用于异质牧场。在这里,我们评估使用> 2 000个地块在2015年苏打火上取样的稳健统计阈值来实现稳健统计阈值所需的采样努力,该苏打火灾燃烧在伊达荷阿和俄勒冈州的75个牧场和113 000公顷。我们预测,在牧场单位内为植物覆盖产生标准误差/平均值≤0.2(TSR,阈值采样要求的阈值所需的曲线数将在采样方法(快速眼网网点截距)和绘图大小之间变化(1,6或531平方米),以及相对于地形,升高,牧场尺寸,土壤的空间复杂性,植被治疗(除草剂或播种),以及异国情调的年度或多年生草的优势。采样足以确定大约一半的牧场的异国情调的年度和多年生草地。数量与抽样的曲线尺寸的权衡显而易见,从而可以使用较小的绘图尺寸搜索的区域(与531平方米)搜索的区域而达到TSR,尽管较大的图之间的可变性较小。两种草类型的TSR随着它们的优势而增加(每%覆盖增量0.5-1.5个曲线)。 TSR为多年生草而减少,但随着海拔海拔高度的全年人的草地增加。 TSR随着网格点截距采样的多年生草升高的标准偏差而增加。与眼部采样方法相比,可以从网格点的景观变量更可靠地预测采样努力。这些发现表明,使用易于确定的景观变量调整牧场或烧伤区域内的样品图的数量和大小可以提高监测效率和有效性。

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