Spatial Heterogeneity and Variability of a Large-Scale Vegetation Community Using a Power-Law Model

被引:7
|
作者
宋志远
黄大明
SHIYOMI Masae
王昱生
TAKAHASHI Shigeo
YOSHIMICHI Hori
YAMAMURU Yasuo
陈俊
机构
[1] Nishinasuno
[2] Ibaraki University
[3] Department of Biological Sciences and Biotechnology
[4] 768 Senbonmatsu
[5] Faculty of Science
[6] National Institute of Livestock and Grassland Science
[7] Bunkyo 2-1-1
[8] Northeast Agricultural University
[9] Beijing 100084
[10] Tochigi 329-2793
[11] China
[12] College of Animal Science
[13] Mito 310-8512
[14] Tsinghua University
[15] Harbin 150030
[16] Japan
基金
日本学术振兴会;
关键词
power-law model; spatial heterogeneity; community variability; leptokurtic distribution; resilience;
D O I
暂无
中图分类号
Q948.15 [地植物学(植物群落学)];
学科分类号
摘要
Spatial heterogeneity and stability are fundamental indices for describing vegetation communities. The spatial distribution characteristics of the vegetation in Nenjiang region of northeastern China were evaluated using a variance power-law model. The data fits the model well with estimates given for the levels of heterogeneity for not only single species but also the community as a whole. The linear regression indicates that the species in the community exhibit a consistently organized spatial pattern, as is often discovered in field surveys but rarely seen in artificial systems. The species deviations from the regression line, which exhibit a leptokurtic distribution, may reflect the variability of the community. Thus, the model provides a general tool for management and regulation of ecosystems, especially where there is human disturbances.
引用
收藏
页码:469 / 477
页数:9
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