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Predicting fish species richness and assemblages with climatic, geographic and morphometric factors: A broad-scale study in Chinese lakes

机译:利用气候,地理和形态计量因素预测鱼类物种的丰富度和种类:在中国湖泊中的一项大规模研究

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摘要

The present study was designed to investigate the relative importance of climatic (temperature and precipitation), geographic (altitude) and morphometric (lake area) factors in predicting fish species richness and assemblages in Chinese lakes at a large spatial scale. Two recursive partitioning tree-based approaches: Classification and Regression Trees (CARTs) and Multivariate Regression Trees (MRTs) were employed to generate predictive models respectively. Six fish assemblages were thus defined from the MRT model. The results indicated that lake altitude was the main determinant for predicting fish assemblages in Chinese lakes (30.43%), followed by precipitation of the driest month (10.47%), temperature annual range (3.62%) and annual mean temperature (3.15%). Validated CART model implied that precipitation of driest month, maximum temperature of warmest month and lake area were the main predictors in determining fish species richness patterns. Overall, our results indicated that the altitudinal extent and range of climatic variation was sufficient to overshadow the area effect in predicting fish species' richness and assemblages in Chinese lakes. At the macroecological scale, the effect of temperature and precipitation on fish richness and assemblages also suggests future changes in fish diversity as a consequence of climate change. (C) 2015 Elsevier GmbH. All rights reserved.
机译:本研究旨在调查气候(温度和降水),地理(海拔)和形态(湖面)因素在大空间尺度上预测中国湖泊鱼类物种丰富度和组合的相对重要性。两种基于递归分区树的方法:分类和回归树(CART)和多元回归树(MRT)分别用于生成预测模型。因此,从MRT模型中定义了六个鱼类组合。结果表明,湖泊高度是预测中国湖泊鱼群的主要决定因素(30.43%),其次是最干燥月份的降水(10.47%),年平均气温(3.62%)和年平均气温(3.15%)。验证的CART模型表明,最干燥月份的降水,最暖月份的最高温度和湖泊面积是确定鱼类物种丰富度模式的主要预测因子。总体而言,我们的结果表明,气候变化的海拔高度和范围足以掩盖面积效应,从而无法预测中国湖泊中鱼类的丰富度和聚集度。在宏观生态学方面,温度和降水对鱼类丰富度和种群的影响还表明,由于气候变化,鱼类多样性在未来将发生变化。 (C)2015 Elsevier GmbH。版权所有。

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