Park Young-Seuk, Grenouillet Gaël, Esperance Benjamin, Lek Sovan
Department of Biology, Kyung Hee University, Dongdaemun-gu, Seoul 130-701, Republic of Korea.
Sci Total Environ. 2006 Jul 15;365(1-3):140-53. doi: 10.1016/j.scitotenv.2006.02.046. Epub 2006 Apr 19.
This study focused on characterizing fish assemblages in the Adour-Garonne basin and identifying the relative influences of landscape-scale features on observed patterns in stream fish assemblages. Two different artificial neural network algorithms were used: a self-organizing map (SOM) and a multilayer perceptron (MLP). A SOM was applied to determine fish assemblage types, and a MLP was used to predict the fish assemblage types defined by the SOM. Thirty four species were collected at 191 sampling sites in a major river-system, the Adour-Garonne basin, and topographical factors, namely altitude, distance from source and surface area of drainage basin were measured. Using GIS, land cover types (agricultural land, forests and urbanized artificial surface) were calculated for each site and expressed as percentage of the surface area of basin. These variables were introduced to the MLP and factorial discriminant analysis for the prediction of assemblage types. As a result, the SOM distinguished three fish assemblage types according to the differences of species composition, and the assemblage types were better predicted with landscape-scale features by MLP than discriminant analysis. The percentages of agricultural land and the surface area of a basin showed the greatest influence on assemblage types 1 and 2, and distance from source was the most important factor to determine assemblage type 3.
本研究聚焦于刻画阿杜尔-加龙河流域的鱼类群落,并确定景观尺度特征对溪流鱼类群落中观察到的模式的相对影响。使用了两种不同的人工神经网络算法:自组织映射(SOM)和多层感知器(MLP)。应用SOM来确定鱼类群落类型,使用MLP来预测由SOM定义的鱼类群落类型。在阿杜尔-加龙河这个主要河流系统的191个采样点收集了34个物种,并测量了地形因素,即海拔、源头距离和流域表面积。利用地理信息系统(GIS),计算了每个采样点的土地覆盖类型(农业用地、森林和城市化人工表面),并表示为流域表面积的百分比。将这些变量引入到MLP和因子判别分析中,以预测群落类型。结果表明,SOM根据物种组成的差异区分出三种鱼类群落类型,并且MLP利用景观尺度特征对群落类型的预测比判别分析更好。农业用地百分比和流域表面积对群落类型1和2的影响最大,源头距离是决定群落类型3的最重要因素。