Detecting spatial patterns in species composition with multiple plot similarity coefficients and singularity measures

被引:8
作者
Jurasinski, Gerald [1 ]
Jentsch, Anke [2 ]
Retzer, Vroni [2 ]
Beierkuhnlein, Carl [2 ]
机构
[1] Univ Rostock, Fac Agr & Environm Sci, DE-18059 Rostock, Germany
[2] Univ Bayreuth, DE-95440 Bayreuth, Germany
关键词
BETA-DIVERSITY; CONSISTENT TERMINOLOGY; RESERVE SELECTION; BIODIVERSITY; GRADIENTS; ALPHA; TURNOVER; DESIGN; ZONES; SIZE;
D O I
10.1111/j.1600-0587.2011.06718.x
中图分类号
X176 [生物多样性保护];
学科分类号
090705 ;
摘要
Recently, several multiple plot similarity indices have been presented that cure some of the problems associated with the approaches for the calculation of compositional similarity for groups of plots by averaging pairwise similarities. These new indices calculate the similarity between more than two plots whilst considering the species composition on all compared plots. The resulting similarity value is true for the whole group of plots considered (called neighborhood in the following). Here, we review the possibilities for multiple plot similarity calculation and additionally explore coefficients that examine multiple plot similarity between a reference plot (named focal plot in the following) and any number of surrounding plots. The latter represent measures of singularity. Further, we establish a framework for applying these two kinds of multiple plot measures to gridded data including an algorithm for testing the significance of calculated values against random expectations. The capability of multiple plot measures for detecting species compositional gradients and local/regional hotspots within this framework is tested. For this purpose, several artificial data sets with known gradients in species composition (random, gradient, central hotspot, hotspot bottom right) are constructed on the basis of a real data set from a Tundra ecosystem in northern Sweden (Abisko). The coefficients that best reflect the positions of the plots on the realized gradients in species composition are considered as performing best with regard to pattern detection. The tested measures of multiple plot similarity and singularity produced considerably different results when applied to one real and 4 artificial data sets. The newly proposed symmetric singularity coefficient has the best overall performance which makes it suitable for local/regional hotspot detection and for incorporating local to regional similarity analyses in reserve selection procedures.
引用
收藏
页码:73 / 88
页数:16
相关论文
共 63 条
[31]   Confidence intervals and hypothesis testing for beta diversity [J].
Kiflawi, M ;
Spencer, M .
ECOLOGY, 2004, 85 (10) :2895-2900
[32]   Rarefaction method for assessing plant species diversity on a regional scale [J].
Koellner, T ;
Hersperger, AM ;
Wohlgemuth, T .
ECOGRAPHY, 2004, 27 (04) :532-544
[33]   Are there latitudinal gradients in species turnover? [J].
Koleff, P ;
Lennon, JJ ;
Gaston, KJ .
GLOBAL ECOLOGY AND BIOGEOGRAPHY, 2003, 12 (06) :483-498
[34]   Measuring beta diversity for presence-absence data [J].
Koleff, P ;
Gaston, KJ ;
Lennon, JJ .
JOURNAL OF ANIMAL ECOLOGY, 2003, 72 (03) :367-382
[35]  
Lande R, 1996, OIKOS, V76, P25
[36]  
LEGENDRE L., 1983, NUMERICAL ECOLOGY
[37]   Analyzing beta diversity: Partitioning the spatial variation of community composition data [J].
Legendre, P ;
Borcard, D ;
Peres-Neto, PR .
ECOLOGICAL MONOGRAPHS, 2005, 75 (04) :435-450
[38]   The geographical structure of British bird distributions: diversity, spatial turnover and scale [J].
Lennon, JJ ;
Koleff, P ;
Greenwood, JJD ;
Gaston, KJ .
JOURNAL OF ANIMAL ECOLOGY, 2001, 70 (06) :966-979
[39]   Beta diversity metrics and the estimation of niche width via species co-occurrence data: reply to Zeleny [J].
Manthey, Michael ;
Fridley, Jason D. .
JOURNAL OF ECOLOGY, 2009, 97 (01) :18-22
[40]   A consistent terminology for quantifying species diversity? [J].
Moreno, Claudia E. ;
Rodriguez, Pilar .
OECOLOGIA, 2010, 163 (02) :279-282