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首页> 外文期刊>Environmental Monitoring and Assessment >Modelling the habitat preferences of the swan mussel (Anodonta cygnea) using data-driven model
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Modelling the habitat preferences of the swan mussel (Anodonta cygnea) using data-driven model

机译:使用数据驱动模型建模天鹅贻贝(Anodonta cygnea)的栖息地偏好

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摘要

The Anzali wetland (located in northern Iran) and many parts of its catchment are considered important habitats for the swan mussel (Anodonta cygnea). The habitat of this native bioindicator mussel is being threatened in many locations of the catchment due to various anthropogenic activities. The present study aimed to apply a classification tree model (J48 algorithm) to predict the habitat preferences of A. cygnea in 12 sampling sites based on various water quality and physical-habitat variables. The species was present in 50% of sampling sites, while it was absent in the remaining of the sampling sites. In total, 144 samples of A. cygnea (72 presence and 72 absence instances) were monthly measured together with the abiotic variables during 1-year study period (2017-2018). For the CT model, two-thirds of datasets (96 instances) served as a training and the remainder was employed for the validation set (48 instances). Among 25 environmental variables introduced to the model (with pruning confidence factor=0.10, threefold cross-validation and 5 times randomization effort), the validity of 6 variables was confirmed by the model in all three subsets. Water salinity, flow velocity, water depth and water turbidity were jointly predicted by the model in three subsets. The model predicted that the absence of A. cygnea might be associated with increasing flow velocity, total phosphate and water turbidity. In contrast, the presence of A. cygnea might be related to decreased water depth and increased calcium concentration. The model also confirmed that all predicted variables for the species might be completely dependent on the water salinity. According to the chi-square test (x(2)=26.53, p0.05), the habitat condition of A. cygnea is influenced by significant variations in the spatio-temporal patterns.
机译:Anzali Wetland(位于伊朗北部)和其集水区的许多部分被认为是天鹅贻贝(Anodonta cygnea)的重要栖息地。由于各种人类学活动,这种本土生物indicator贻贝的栖息地受到了许多集水区的威胁。本研究旨在应用分类树模型(J48算法),以预测基于各种水质和物理栖息地变量的12个采样位点中A. cygnea的栖息地偏好。这些物种存在于50%的抽样位点,而在剩余的采样位点不存在。总共144个样品A. cygnea(72个存在和72个缺席实例)每月与非生物变量一起测量,在1年的研究期间(2017-2018)。对于CT模型,使用作为培训的三分之二的数据集(96实例)和剩余部分用于验证集(48实例)。在25个环境变量引入模型(具有修剪置信度因子= 0.10,三倍交叉验证和5次随机化工作)中,所有三个子集中的模型确认了6个变量的有效性。三个子集中的模型共同预测水盐度,流速,水深和水浊度。该模型预测,不存在A. cygnea可能与增加的流速,总磷酸盐和水浊度相关联。相比之下,A. cygnea的存在可能与水深降低和增加的钙浓度有关。该模型还证实,物种的所有预测变量可能完全取决于水盐度。根据Chi-Square测试(X(2)= 26.53,P <0.05),A. cygnea的栖息地受时空模式的显着变化的影响。

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