Comparison of self-organizing maps classification approach with cluster and principal components analysis for large environmental data sets

被引:309
作者
Astel, A.
Tsakouski, S.
Barbieri, P.
Simeonov, V.
机构
[1] Pomeranian Acad, Biol & Environm Protect Inst, Environm Chem Res Unit, PL-76200 Shupsk, Poland
[2] Univ Sofia, Fac Chem, Sofia, Bulgaria
[3] Univ Trieste, Dipartimento Sci Chim, I-34127 Trieste, Italy
关键词
classification; self-organizing maps; cluster analysis; principal components analysis; water quality; monitoring; river; environmetrics;
D O I
10.1016/j.watres.2007.06.030
中图分类号
X [环境科学、安全科学];
学科分类号
08 ; 0830 ;
摘要
Three classification techniques (loading and score projections based on principal components analysis (PCA), cluster analysis (CA) and self-organizing maps (SOM)) were applied to a large environmental data set of chemical indicators of river water quality. The study was carried out by using long-term water quality monitoring data. The advantages of SOM algorithm and its classification and visualization ability for large environmental data sets are stressed. The results obtained allowed detecting natural clusters of monitoring locations with similar water quality type and identifying important discriminant variables responsible for the clustering. SOM clustering allows simultaneous observation of both spatial and temporal changes in water quality. The chemometric approach revealed different patterns of monitoring sites conditionally named "tributary", "urban", "rural" or "background". This objective separation could lead to an optimization of river monitoring nets and to a better tracing natural and anthropogenic changes along the river stream. (C) 2007 Elsevier Ltd. All rights reserved.
引用
收藏
页码:4566 / 4578
页数:13
相关论文
共 31 条
[1]   Chemometrics in the assessment of the sustainable development rule implementation [J].
Astel, Aleksander ;
Glosinska, Grazyna ;
Sobczynski, Tadeusz ;
Boszke, Leonard ;
Simeonov, Vasil ;
Siepak, Jerzy .
CENTRAL EUROPEAN JOURNAL OF CHEMISTRY, 2006, 4 (03) :543-564
[2]   Comparative performance of the FSCL neural net and K-means algorithm for market segmentation [J].
Balakrishnan, PV ;
Cooper, MC ;
Jacob, VS ;
Lewis, PA .
EUROPEAN JOURNAL OF OPERATIONAL RESEARCH, 1996, 93 (02) :346-357
[3]   Chemometrics characterisation of the quality of river water [J].
Brodnjak-Voncina, D ;
Dobcnik, D ;
Novic, M ;
Zupan, J .
ANALYTICA CHIMICA ACTA, 2002, 462 (01) :87-100
[4]   Time series analysis on chlorides, nitrates, ammonium and dissolved oxygen concentrations in the Seine river near Paris [J].
Cun, C ;
Vilagines, R .
SCIENCE OF THE TOTAL ENVIRONMENT, 1997, 208 (1-2) :59-69
[5]   River pollution data interpreted by means of chemometric methods [J].
Einax, JW ;
Truckenbrodt, D ;
Kampe, O .
MICROCHEMICAL JOURNAL, 1998, 58 (03) :315-324
[6]  
Geiss S., 1997, CHEMOMETRICS ENV ANA
[7]   A comparison of self-organizing map algorithm and some conventional statistical methods for ecological community ordination [J].
Giraudel, JL ;
Lek, S .
ECOLOGICAL MODELLING, 2001, 146 (1-3) :329-339
[8]   Dioxin (PCDD/F) in the river Elbe - Investigations of their origin by multivariate statistical methods [J].
Gotz, R ;
Steiner, B ;
Friesel, P ;
Roch, K ;
Walkow, F ;
Maass, V ;
Reincke, H ;
Stachel, B .
CHEMOSPHERE, 1998, 37 (9-12) :1987-2002
[9]   Engineering applications of the self-organizing map [J].
Kohonen, T ;
Oja, E ;
Simula, O ;
Visa, A ;
Kangas, J .
PROCEEDINGS OF THE IEEE, 1996, 84 (10) :1358-1384
[10]   SELF-ORGANIZED FORMATION OF TOPOLOGICALLY CORRECT FEATURE MAPS [J].
KOHONEN, T .
BIOLOGICAL CYBERNETICS, 1982, 43 (01) :59-69