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Uncertainty in Various Habitat Suitability Models and Its Impact on Habitat Suitability Estimates for Fish

机译:各种生境适宜性模型的不确定性及其对鱼类生境适宜性估计的影响

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Species distribution models (SDMs) are extensively used to project habitat suitability of species in stream ecological studies. Owing to complex sources of uncertainty, such models may yield projections with varying degrees of uncertainty. To better understand projected spatial distributions and the variability between habitat suitability projections, this study uses five SDMs that are based on the outputs of a two-dimensional hydraulic model to project the suitability of habitats and to evaluate the degree of variability originating from both differing model types and the split-sample procedure. The habitat suitability index (HSI) of each species is based on two stream flow variables, including current velocity (V), water depth (D), as well as the heterogeneity of these flow conditions as quantified by the information entropy of V and D. The six SDM approaches used to project fish abundance, as represented by HSI, included two stochastic models: the generalized linear model (GLM) and the generalized additive model (GAM); as well as three machine learning models: the support vector machine (SVM), random forest (RF) and the artificial neural network (ANN), and an ensemble model (where the latter is the average of the preceding five models). The target species Sicyopterus japonicas was found to prefer habitats with high current velocities. The relationship between mesohabitat diversity and fish abundance was indicated by the trends in information entropy and weighted usable area (WUA) over the study area. This study proposes a method for quantifying habitat suitability, and for assessing the uncertainties in HSI and WUA that are introduced by the various SDMs and samples. This study also demonstrated both the merits of the ensemble modeling approach and the necessity of addressing model uncertainty.
机译:物种分布模型(SDM)被广泛用于预测河流生态学研究中物种的栖息地适应性。由于不确定性的复杂来源,此类模型可能会产生具有不同程度不确定性的预测。为了更好地了解预计的空间分布和栖息地适宜性预测之间的变异性,本研究使用了五个基于二维水力模型输出的SDM来预测栖息地的适宜性并评估源自两个不同模型的变异性程度类型和分割样本过程。每个物种的栖息地适宜性指数(HSI)基于两个流流量变量,包括当前流速(V),水深(D)以及这些流条件的异质性,这些变量通过V和D的信息熵来量化以HSI为代表的用于预测鱼类丰度的六种SDM方法包括两个随机模型:广义线性模型(GLM)和广义加性模型(GAM);以及以及三种机器学习模型:支持向量机(SVM),随机森林(RF)和人工神经网络(ANN),以及集成模型(其中集成模型是前五个模型的平均值)。发现目标物种Sicyopterus japonicas更喜欢高流速的栖息地。研究区域信息熵和加权可用面积(WUA)的趋势表明了中栖息地多样性与鱼类丰度之间的关系。这项研究提出了一种量化栖息地适应性的方法,并评估了由各种SDM和样本引入的HSI和WUA中的不确定性。这项研究还证明了集成建模方法的优点以及解决模型不确定性的必要性。

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