会议专题

Self-Organizing Feature Map Clustering Based on Fuzzy Equivalence Relation and its Application in Ecological Analysis

Fuzzy equivalence clustering based on fuzzy set theory and Self organizing feature map (SOFM) clustering based on neural network are both effective methods in ecological studies. They are powerful in analyzing and solving complicated and non-linear matters and for their freedom from restrictive assumptions. The combination of Fuzzy equivalence clustering and SOFM clustering may produce better methodology. This study tried to combine them in a new method, Fuzzy equivalence SOFM clustering, and to apply it in the analysis of plant communities. The dataset was consisted of importance values of 70 species in 30 samples of 10 m x 20 m. First, we calculated fuzzy similarity matrix of samples; second, transforming fuzzy similarity matrix to fuzzy equivalence relation matrix; third, the fuzzy equivalence relation matrix was input to neural network and then SOFM was used to classified samples. The 30 samples were clustered into 5 groups, representing 5 vegetation communities. This classification result was reasonable and ecological meaningful which suggests that fuzzy equivalence SOFM clustering is effective method in ecological study. The fuzzy equivalence SOFM clustering shares both advantages of fuzzy set theory and neural network.

Fuzzy similarity fuzzy equivalence relation neural network quantitative classification vegetation

Jin-Tun Zhang Ming Li

College of Life Sciences Beijing Normal University Beijing 100875, China Institute of Loess Plateau Shanxi University Taiyuan 030006, China

国际会议

2011 Eighth International Conference on Fuzzy System and Knowledge Discovery(第八届模糊系统与知识发现国际会议 FSKD 2011)

上海

英文

908-912

2011-07-26(万方平台首次上网日期,不代表论文的发表时间)