State Key Laboratory of Simulation and Regulation of Water Cycle in River Basin, China Institute of Water Resources and Hydropower Research, Beijing 100038, China; Department of Water Environment, China Institute of Water Resources and Hydropower Research, Beijing 100038, China.
Institut d'Investigació per a la Gestió Integrada de Zones Costaneres (IGIC), Universitat Politècnica de València, C/ Paranimf 1, Grau de Gandia, València 46730, Spain.
Sci Total Environ. 2018 Sep 1;634:749-759. doi: 10.1016/j.scitotenv.2018.04.021. Epub 2018 Apr 10.
It is essential to understand the patterning of biota and environmental influencing factors for proper rehabilitation and management at the river basin scale. The Hun-Tai River Basin was extensively sampled four times for macroinvertebrate community and environmental variables during one year. Self-Organizing Maps (SOMs) were used to reveal the aggregation patterns of the 355 samples. Three community types (i.e., clusters) were found (at the family level) based on the community composition, which showed a clearly gradient by combining them with the representative environmental variables: minimally impacted source area, intermediately anthropogenic impacted sites, and highly anthropogenic impacted downstream area, respectively. This gradient was corroborated by the decreasing trends in density and diversity of macroinvertebrates. Distance from source, total phosphorus and water temperature were identified as the most important variables that distinguished the delineated communities. In addition, the sampling season, substrate type, pH and the percentage of grassland were also identified as relevant variables. These results demonstrated that macroinvertebrates communities are structured in a hierarchical manner where geographic and water quality prevail over temporal (season) and habitat (substrate type) features at the basin scale. In addition, it implied that the local-scale environment variables affected macroinvertebrates under the longitudinal gradient of the geographical and anthropogenic pressure. More than one family was identified as the indicator for each type of community. Abundance contributed significantly for distinguishing the indicators, while Baetidae with higher density indicated minimally and intermediately impacted area and lower density indicated highly impacted area. Therefore, we suggested the use of abundance data in community patterning and classification, especially in the identification of the indicator taxa.
了解生物群和环境影响因素的分布模式对于在流域尺度上进行适当的恢复和管理至关重要。浑太河流域在一年的时间里进行了四次广泛的采样,以获取大型无脊椎动物群落和环境变量的数据。自组织映射图(SOMs)被用来揭示 355 个样本的聚集模式。根据群落组成,发现了三种群落类型(即聚类),它们与代表性的环境变量相结合,显示出明显的梯度:最小受干扰的源区、中等人为干扰的区域和高度人为干扰的下游区域。这种梯度得到了大型无脊椎动物密度和多样性下降趋势的支持。与源区的距离、总磷和水温和温度被确定为区分划定群落的最重要变量。此外,采样季节、基质类型、pH 值和草地百分比也被确定为相关变量。这些结果表明,大型无脊椎动物群落是按层次结构组织的,在流域尺度上,地理和水质优先于时间(季节)和栖息地(基质类型)特征。此外,这意味着局部尺度的环境变量在地理和人为压力的纵向梯度下影响了大型无脊椎动物。超过一个科被确定为每种类型社区的指示物。丰度对区分指示物有显著贡献,而密度较高的蜉蝣科和毛翅目科指示最小和中等干扰区域,密度较低指示高度干扰区域。因此,我们建议在群落模式和分类中使用丰度数据,特别是在识别指示生物时。