Park Young-Seuk, Verdonschot Piet F M, Chon Tae-Soo, Lek Sovan
CESAC, UMR 5576, CNRS--Université Paul Sabatier, 118 Route de Narbonne, Toulouse, Cedex 31062, France.
Water Res. 2003 Apr;37(8):1749-58. doi: 10.1016/S0043-1354(02)00557-2.
A counterpropagation neural network (CPN) was applied to predict species richness (SR) and Shannon diversity index (SH) of benthic macroinvertebrate communities using 34 environmental variables. The data were collected at 664 sites at 23 different water types such as springs, streams, rivers, canals, ditches, lakes, and pools in The Netherlands. By training the CPN, the sampling sites were classified into five groups and the classification was mainly related to pollution status and habitat type of the sampling sites. By visualizing environmental variables and diversity indices on the map of the trained model, the relationships between variables were evaluated. The trained CPN serves as a 'look-up table' for finding the corresponding values between environmental variables and community indices. The output of the model fitted SH and SR well showing a high accuracy of the prediction (r>0.90 and 0.67 for learning and testing process, respectively) for both SH and SR. Finally, the results of this study, which uses the capability of the CPN for patterning and predicting ecological data, suggest that the CPN can be effectively used as a tool for assessing ecological status and predicting water quality of target ecosystems.
应用反向传播神经网络(CPN),利用34个环境变量预测底栖大型无脊椎动物群落的物种丰富度(SR)和香农多样性指数(SH)。数据收集于荷兰23种不同水体类型的664个站点,这些水体类型包括泉水、溪流、河流、运河、沟渠、湖泊和池塘。通过训练CPN,将采样点分为五组,该分类主要与采样点的污染状况和栖息地类型有关。通过在训练模型的地图上可视化环境变量和多样性指数,评估了变量之间的关系。训练后的CPN可作为一个“查找表”,用于查找环境变量和群落指数之间的对应值。模型输出与SH和SR拟合良好,显示出对SH和SR的预测具有较高的准确性(学习和测试过程中,SH和SR的r分别>0.90和0.67)。最后,本研究利用CPN对生态数据进行模式化和预测的能力,结果表明CPN可有效地用作评估目标生态系统生态状况和预测水质的工具。