Interaction structures analysed from water-quality data

被引:7
作者
Callies, U [1 ]
机构
[1] GKSS Forschungszentrum Geesthacht GmbH, Inst Hydrophys, D-21494 Geesthacht, Germany
关键词
Elbe River; water quality data; statistical analysis; graphical modelling; conditional independences;
D O I
10.1016/j.ecolmodel.2005.01.045
中图分类号
Q14 [生态学(生物生态学)];
学科分类号
071012 ; 0713 ;
摘要
Fortnightly observations of water quality parameters, discharge and water temperature along the River Elbe have been subjected to a multivariate data analysis. In a previous study [Petersen, W., Bertino, L., Callies, U., Zorita, E., 2001. Process identification by principal component analysis of river-quality data. Ecol. Model. 138, 193-213] applied principal component analysis (PCA) to show that 60% of variability in the data set can be explained through just two linear combinations of eight original variables. In the present paper more advanced multivariate methods are applied to the same data set, which are supposed to suit better interpretations in terms of the underlying system dynamics. The first method, graphical modelling, represents interaction structures in terms of a set of conditional independence constraints between pairs of variables given the values of all other variables. Assuming data from a multinormal distribution conditional independence constraints are expressed by zero partial correlations. Different graphical structures with nodes for each variable and connecting edges between them can be assessed with regard to their likelihood. The second method, canonical correlation analysis (CCA), is applied for studying the correlation structures of external forcing and water quality parameters. Results of CCA turn out to be consistent with the dominant patterns of variability obtained from PCA. The percentages of variability explained by external forcing, however, are estimated to be smaller. Fitting graphical models allows a more detailed representation of interaction structures. For instance, for given discharge and temperature correlated variations of the concentrations of oxygen and nitrate, respectively, can be modelled as being mediated by variations of pH, which is a representer for algal activity. Considerably simplified graphical models do not much affect the outcomes of both PCA and CCA, and hence it is concluded that these graphical models successfully represent the main interaction structures represented by the covariance matrix of the data. The analysed conditional independence patterns provide constraints to be satisfied by directed probabilistic networks, for instance. (c) 2005 Elsevier B.V. All rights reserved.
引用
收藏
页码:475 / 490
页数:16
相关论文
共 28 条
[1]  
[Anonymous], 1998, Applied regression analysis, DOI 10.1002/9781118625590
[2]  
Bedford T., 2001, Mathematical tools for probabilistic risk analysis
[3]  
Behrendt H, 1993, RR931 INT I APPL SYS
[4]   A Bayesian network of eutrophication models for synthesis, prediction, and uncertainty analysis [J].
Borsuk, ME ;
Stow, CA ;
Reckhow, KH .
ECOLOGICAL MODELLING, 2004, 173 (2-3) :219-239
[5]   Utilisation of non-supervised neural networks and principal component analysis to study fish assemblages [J].
Brosse, S ;
Giraudel, JL ;
Lek, S .
ECOLOGICAL MODELLING, 2001, 146 (1-3) :159-166
[6]  
COX DR, 1996, MULTIVARIATE DPENDEN
[7]   COVARIANCE SELECTION [J].
DEMPSTER, AP .
BIOMETRICS, 1972, 28 (01) :157-&
[8]  
Duncan O. D., 2014, Introduction to Structural Equation Models
[9]   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
[10]  
Johnson RA, 1992, APPL MULTIVARIATE ST