DETECTING FIRE AND GRAZING PATTERNS IN TALLGRASS PRAIRIE USING SPECTRAL MIXTURE ANALYSIS

Citation
Ca. Wessman et al., DETECTING FIRE AND GRAZING PATTERNS IN TALLGRASS PRAIRIE USING SPECTRAL MIXTURE ANALYSIS, Ecological applications, 7(2), 1997, pp. 493-511
Citations number
64
Categorie Soggetti
Ecology
Journal title
ISSN journal
10510761
Volume
7
Issue
2
Year of publication
1997
Pages
493 - 511
Database
ISI
SICI code
1051-0761(1997)7:2<493:DFAGPI>2.0.ZU;2-U
Abstract
Global grasslands are typically under management practices (such as fi re and grazing) that alter nutrient cycling ecosystem composition and distribution if organic matter from the unmanaged condition. We evalua ted landscape-level response to fire and grazing treatments in the Kon za Tallgrass Prairie Research Natural Area, Kansas, using spectral mix ture analysis of Airborne Visible/Infrared Imaging Spectrometer (AVIRI S) data acquired 31 August 1990. Spectral mixture analysis derives the fractional abundances of spectrally unique components in the landscap e. The reflectance spectra of these components are called endmembers. Endmember fractions values were compared against ground values of live biomass, current standing dead biomass, and litter for 12 watersheds. Analysis of variance (ANOVA) was performed on 37 watersheds with know n burning and grazing histories for each of the remote sensing variabl es. Seven endmembers were selected from the AVIRIS data using a manual endmember selection method: nonphotosynthetic vegetation (NPV), soil, rock, shade, and three green vegetation endmembers (GV1, GV2, and GV3 ). Each vegetation endmember correlated differently to biomass measure ments and revealed unique relationships to management treatments. From regressions, ANOVAs, and image analysis, these three endmembers were inferred to represent canopy vertical structure or leaf area index (LA I), greenness, and fractional cover of grass, respectively. There was a stronger relationship between the sum of GV1 and GV3 fractions and l ive grass biomass values than there was with the (unsummed) individual fractions. In an ANOVA, the sum separated both burn and grazing treat ments as well as the treatment interaction. The NPV fraction was stron gly correlated with ground measurements of litter and standing dead bi omass, and significantly separated burn treatments. The soil fraction differentiated grazing treatments, and analysis of the soil fraction i mage revealed a spatial coherence of grazing patterns along drainages. Similar analysis were perfomed on the Normalized Difference Vegetatio n Index (NDVI), a commonly used two-band index computed from red and n ear-infrared reflectance. NDVI, shown in previous studies to estimate the fraction of photosynthetically active radiation absorbed by green vegetation (FPAR), was a poor indicator of canopy biomass, but it succ essfully separated fire treatments. Broad-scale assessment of the stat e and structure of managed grassland systems requires the identificati on of several indicator variables. Spectral mixture analysis, unlike N DVI, not only separated treatments but also allowed for the identifica tion of five remotely sensible factors affected by the management trea tments, namely, vertical structure, percentage cover or patchiness, gr eenness, and distribution of soil and litter.