Literature DB >> 16917722

Energy-based land use predictors of proximal factors and benthic diatom composition in Florida freshwater marshes.

Charles R Lane1, Mark T Brown.   

Abstract

The Landscape Development Intensity index (LDI), which is based on non-renewable energy use and integrates diverse land use activities, was compared to other measures of LU (e.g., %agriculture, %urban) to determine its ability for predicting benthic diatom composition in freshwater marshes of peninsular Florida. In this study, 70 small, isolated herbaceous marshes located along a human disturbance gradient (generally agricultural) throughout peninsular Florida were sampled for benthic diatoms and soil and water physical/chemical parameters (i.e., TP, TKN, pH, specific conductance, etc.). Landscape measures of percent agriculture, percent urban, percent natural, and LDI index values were calculated for a 100 m buffer around each site. The strongest relationships using Mantel's r statistic, which ranges from -1 to 1, were found between benthic diatom composition, the combined soil and water variables, and LDI scores (r=0.51, P<0.0001). Although similar, soil and water variables alone (r=0.45, P<0.0001) or with percent agriculture or percent natural were not as strongly correlated (both Mantel's r=0.46, P<0.0001). Little urban land use was found in the areas surrounding the study wetlands. Diatom data were clustered using flexible beta into 2 groups, and stepwise discriminant analysis identified specific conductance, followed by LDI score, soil pH, water total phosphorus, and ammonia, as cluster-separating variables. The LDI explained slightly more of the variation in species composition than either percent agriculture or percent natural, perhaps because the LDI can combine disparate land uses into a single quantitative value. However, the ecological significance of the difference between land use metrics and diatom composition is controvertible, and additional tests including more varied land uses appear warranted.

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Year:  2006        PMID: 16917722     DOI: 10.1007/s10661-006-2766-x

Source DB:  PubMed          Journal:  Environ Monit Assess        ISSN: 0167-6369            Impact factor:   2.513


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2.  Assessing wetland condition on a watershed basis in the Mid-Atlantic region using synoptic land-cover maps.

Authors:  Robert P Brooks; Denice H Wardrop; Joseph A Bishop
Journal:  Environ Monit Assess       Date:  2004-06       Impact factor: 2.513

3.  ANALYZING TABLES OF STATISTICAL TESTS.

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4.  Landscape development intensity index.

Authors:  Mark T Brown; M Benjamin Vivas
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  4 in total

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