4.2 Article

Performance of Quantitative Vegetation Sampling Methods Across Gradients of Cover in Great Basin Plant Communities

期刊

RANGELAND ECOLOGY & MANAGEMENT
卷 66, 期 6, 页码 634-647

出版社

SOC RANGE MANAGEMENT
DOI: 10.2111/REM-D-13-00063.1

关键词

canopy cover; field methods; protocols; sagebrush-steppe; salt desert scrub

资金

  1. US Geological Survey Coordinated Sagebrush Studies Program

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Resource managers and scientists need efficient, reliable methods for quantifying vegetation to conduct basic research, evaluate land management actions, and monitor trends in habitat conditions. We examined three methods for quantifying vegetation in 1-ha plots among different plant communities in the northern Great Basin: photography-based grid-point intercept (GPI), line-point intercept (LPI), and point-quarter (PQ). We also evaluated each method for within-plot subsampling adequacy and effort requirements relative to information gain. We found that, for most functional groups, percent cover measurements collected with the use of LPI, GPI, and PQ methods were strongly correlated. These correlations were even stronger when we used data from the upper canopy only (i.e., top hit of pin flags) in LPI to estimate cover. PQ was best at quantifying cover of sparse plants such as shrubs in early successional habitats. As cover of a given functional group decreased within plots, the variance of the cover estimate increased substantially, which required more subsamples per plot (i.e., transect lines, quadrats) to achieve reliable precision. For GPI, we found that that six nine quadrats per hectare were sufficient to characterize the vegetation in most of the plant communities sampled. All three methods reasonably characterized the vegetation in our plots, and each has advantages depending on characteristics of the vegetation, such as cover or heterogeneity, study goals, precision of measurements required, and efficiency needed.

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