Chin J Plant Ecol ›› 2010, Vol. 34 ›› Issue (7): 811-818.DOI: 10.3773/j.issn.1005-264x.2010.07.006

• Research Articles • Previous Articles     Next Articles

Application of self-organizing map to quantitative analysis of mountain meadow in the Songshan Nature Reserve of Beijing, China

SURI Guga1, ZHANG Jin-Tun1,*(), TIAN Shi-Guang1, ZHANG Qin-Di1, ZHANG Bin1, CHENG Jia-Jia1, LIU Su-Jun2   

  1. 1College of Life Sciences, Beijing Normal University, Beijing 100875, China
    2Quality Management Department, Inner Mongolia Autonomous Region Seed Administration Station, Hohhot 010010, China
  • Received:2009-11-16 Accepted:2010-05-21 Online:2010-11-16 Published:2010-07-01
  • Contact: ZHANG Jin-Tun

Abstract:

Aims Vegetation classification is an important topic in plant ecology, and many quantitative techniques for vegetation classification have been developed. The artificial neural network is a comparative new tool of data analysis. In this paper, self-organizing map (SOM) is applied to cluster analysis of mountain meadow data to determine whether SOM is suitable for classifying meadow vegetation.

Methods Data for 40 quadrats, 87 species, and six environment variables (elevation, slope, aspect, litter layer thickness, soil depth and soil density) from mountain meadow communities in the Sonshan Nature Reserve were analyzed. SOM was used to classify sample quadrats using importance values of species.

Important findings The trained SOM classified sample quadrats into seven groups: Saussurea nivea + Sanguisorba officinalis + Bupleurum chinensis, Sanguisorba officinalis + Artemisia annua + Vicia unijuga, Polygonum divaricatum + Sanguisorba officinalis + Carex rigescens, Carex rigescens + Sanguisorba officinalis + Saussurea nivea, Carex rigescens + Polygonum divaricatum + Rosa dahurica, Polygonum bistorta + Carex rigescens + Artemisia gmelinii and Carex rigescens + Saussurea iodostegia + Polygonum bistorta. The characteristics of community structure and species composition were significant. SOM classification and the dominant species enumeration in the meadow community data reflected the effects of elevation, slope, litter layer thickness and soil depth. SOM is suitable for classifying the mountain meadow communities and could be useful for assessing ecosystem quality and meadow community variations caused by environmental disturbances.

Key words: classification, mountain meadow, numerical method, self-organizing map, Songshan Nature Reserve