Predicting the species richness of aquatic insects in streams using a limited number of environmental variables

被引:67
|
作者
Céréghino, R
Park, YS
Compin, A
Lek, S
机构
[1] Univ Toulouse 3, Lab Ecol Hydrosyst, F-31062 Toulouse 4, France
[2] Univ Toulouse 3, Lab Dynam Biodivers, F-31062 Toulouse 4, France
来源
JOURNAL OF THE NORTH AMERICAN BENTHOLOGICAL SOCIETY | 2003年 / 22卷 / 03期
关键词
aquatic insects; streams; species richness; artificial neural networks; classification; ordination; prediction; bioassessment;
D O I
10.2307/1468273
中图分类号
Q14 [生态学(生物生态学)];
学科分类号
071012 ; 0713 ;
摘要
Artificial neural networks were used to predict the species richness of 4 major orders of aquatic insects (Ephemeroptera, Plecoptera, Trichoptera, and Coleoptera, i.e., EPTC) at a site, using a limited number of environmental variables. EPTC richness was recorded in the Adour-Garonne stream system (France), at 155 unstressed sampling sites, which were characterized using 4 environmental variables: elevation, stream order, distance from the source, and maximum water temperature. The EPTC and environmental data were first computed with the Self-Organizing Map (SOM) algorithm. Then, using the k-means algorithm, clusters were detected on the map and the sampling sites were classified separately for each variable and for EPTC richness. Four clusters could be identified on the SOM map, according to the 4 environmental variables, and this classification was chiefly related to stream order and elevation (i.e., the longitudinal location of sampling sites within a stream system). Similarly, 4 subsets were derived from the SOM according to a gradient of EPTC richness. There was also a high coincidence between observed (field data) and calculated (predicted from the output neurons of the SOM) species richness in each taxonomic group. Species richness relationships between Ephemeroptera, Trichoptera, and Coleoptera for both observed and predicted data were highly significant. However, correlation coefficients among species richness of Plecoptera and the other groups were low. Last, a multilayer perceptron neural network, trained using the backpropagation algorithm, was used to predict EPTC richness (output) using the 4 above-mentioned environmental variables (input). The model showed high predictability (r = 0.91 and r = 0.61 for training and test data sets, respectively), and a sensitivity analysis revealed that elevation and stream order contributed the most among the 4 input variables. Prediction of species richness using a limited number of environmental variables is, thus, a valuable tool for the assessment of disturbance in a given area. The degree to which human activities have altered EPTC richness can be determined by knowing what the EPTC richness should be under undisturbed conditions in a given area.
引用
收藏
页码:442 / 456
页数:15
相关论文
共 36 条
  • [21] Predicting vascular plant richness patterns in Catalonia (NE Spain) using species distribution models
    Perez, Nora
    Font, Xavier
    APPLIED VEGETATION SCIENCE, 2012, 15 (03) : 390 - 400
  • [22] Species richness and distribution of copepods and cladocerans and their relation to hydroperiod and other environmental variables in Donana, south-west spain
    Frisch, D
    Moreno-Ostos, E
    Green, AJ
    HYDROBIOLOGIA, 2006, 556 (1) : 327 - 340
  • [23] Using potential distributions to explore environmental correlates of bat species richness in southern Africa: Effects of model selection and taxonomy
    Schoeman, M. Corrie
    Cotterill, F. P. D.
    Taylor, Peter J.
    Monadjem, Ara
    CURRENT ZOOLOGY, 2013, 59 (03) : 279 - 293
  • [24] Patterning and predicting aquatic insect richness in four West-African coastal rivers using artificial neural networks
    Edia, E. O.
    Gevrey, M.
    Ouattara, A.
    Brosse, S.
    Gourene, G.
    Lek, S.
    KNOWLEDGE AND MANAGEMENT OF AQUATIC ECOSYSTEMS, 2010, (398) : 06p1 - 06p15
  • [25] Environmental filtering of aquatic insects in spring fens: patterns of species-specific responses related to specialist-generalist categorization
    Vanda Rádková
    Vendula Polášková
    Jindřiška Bojková
    Vít Syrovátka
    Michal Horsák
    Hydrobiologia, 2017, 797 : 159 - 170
  • [26] Environmental filtering of aquatic insects in spring fens: patterns of species-specific responses related to specialist-generalist categorization
    Radkova, Vanda
    Polaskova, Vendula
    Bojkova, Jindriska
    Syrovatka, Vit
    Horsak, Michal
    HYDROBIOLOGIA, 2017, 797 (01) : 159 - 170
  • [27] Predicting the spatial distribution of soil organic carbon using environmental similarity with limited samples
    Guo, Pengtao
    Xiao, Xiurong
    Zhao, Ju
    Li, Maofen
    Li, Bo
    Fu, Dianji
    Nongye Gongcheng Xuebao/Transactions of the Chinese Society of Agricultural Engineering, 2024, 40 (15): : 103 - 110
  • [28] Predicting malaria cases using remotely sensed environmental variables in Nkomazi, South Africa
    Adeola, Abiodun Morakinyo
    Botai, Joel Ondego
    Olwoch, Jane Mukarugwiza
    Rautenbach, Hannes Cj deW
    Adisa, Omolola Mayowa
    de Jager, Christiaan
    Botai, Christina M.
    Aaron, Mabuza
    GEOSPATIAL HEALTH, 2019, 14 (01) : 81 - 91
  • [29] Macroinvertebrate species and assemblages in the headwater streams of the River Tyne, northern England in relation to land cover and other environmental variables
    M. D. Eyre
    J. G. Pilkington
    R. P. McBlane
    S. P. Rushton
    Hydrobiologia, 2005, 544 : 229 - 240
  • [30] Species Richness and Distribution of Copepods and Cladocerans and their Relation to Hydroperiod and Other Environmental Variables in Doñana, South-west Spain
    Dagmar Frisch
    Enrique Moreno-Ostos
    Andy J. Green
    Hydrobiologia, 2006, 556 : 327 - 340