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Habitat selection of wintering cranes (Gruidae) in typical lake wetland in the lower reaches of the Yangtze River, China

机译:栖息地选择冬季湖泊冬季湿地冬季湖泊湖北

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摘要

Shengjin Lake is a typical lake wetland in the lower reaches of the Yangtze River. It is one of the most important wetlands in the world. It is also an important habitat for wintering cranes in China. Environmental factors play an important role in habitat selection of cranes of wetland ecosystem. In this paper, we analyzed land-use types and the four kinds of winter cranes in the Shengjin Lake from the years 1986 to 2015. Also, we adopted grey relational analysis and power function model to analyze the relevance between crane population and land-use types, and the main habitat types of cranes were obtained. We used principal component analysis method to analyze the main influence factor for habitat selection of crane. The results indicated that the main habitat type of four species of overwintering crane was reed-flat; the main factors affecting the habitat selection of cranes were water level, planktonic biomass, and distance to settlement. Among them, the weight of water level factor was the highest, which showed that water level was the most important factor affecting the habitat selection of cranes, followed by planktonic biomass, and the third was the weight of distance to settlement. The average values of them were 0.37m, 9.47mgL(-1), and 1.25km, respectively.
机译:胜金湖是长江下游的典型湖泊湿地。它是世界上最重要的湿地之一。它也是中国越冬起重机的重要栖息地。环境因素在湿地生态系统的起重机的栖息地选择中发挥着重要作用。在本文中,我们从1986年至2015年分析了胜金湖中的土地使用类型和四种冬季起重机。此外,我们采用了灰色关系分析和功率功能模型,分析了起重机人口与土地利用之间的相关性类型,并获得了主要栖息地类型的起重机。我们使用了主要成分分析方法来分析起重机栖息地选择的主要影响因素。结果表明,芦苇型越冬起重机的主要栖息地类型是芦苇平;影响起重机栖息地选择的主要因素是水位,浮游生物量和与沉降距离。其中,水位因子的重量是最高的,这表明水位是影响栖息地选择起重机的最重要因素,其次是浮游生物量,第三个是沉降距离的重量。它们的平均值分别为0.37m,9.47mg(-1)和1.25km。

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