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Generalized Additive Models Used to Predict Species Abundance in the Gulf of Mexico: An Ecosystem Modeling Tool

机译:用于预测墨西哥湾物种丰富度的广义加法模型:一种生态系统建模工具

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摘要

Spatially explicit ecosystem models of all types require an initial allocation of biomass, often in areas where fisheries independent abundance estimates do not exist. A generalized additive modelling (GAM) approach is used to describe the abundance of 40 species groups (i.e. functional groups) across the Gulf of Mexico (GoM) using a large fisheries independent data set (SEAMAP) and climate scale oceanographic conditions. Predictor variables included in the model are chlorophyll a, sediment type, dissolved oxygen, temperature, and depth. Despite the presence of a large number of zeros in the data, a single GAM using a negative binomial distribution was suitable to make predictions of abundance for multiple functional groups. We present an example case study using pink shrimp (Farfantepenaeus duroarum) and compare the results to known distributions. The model successfully predicts the known areas of high abundance in the GoM, including those areas where no data was inputted into the model fitting. Overall, the model reliably captures areas of high and low abundance for the large majority of functional groups observed in SEAMAP. The result of this method allows for the objective setting of spatial distributions for numerous functional groups across a modeling domain, even where abundance data may not exist.
机译:所有类型的空间明确的生态系统模型都需要对生物量进行初始分配,通常是在不存在独立于渔业的丰度估计的地区。使用大型渔业独立数据集(SEAMAP)和气候规模海洋学条件,使用通用加性建模(GAM)方法来描述墨西哥湾(GoM)上40个物种组(即功能组)的丰度。模型中包含的预测变量为叶绿素a,沉积物类型,溶解氧,温度和深度。尽管数据中存在大量零,但使用负二项式分布的单个GAM仍适用于预测多个功能组的丰度。我们提供了一个使用粉红色虾(Farfantepenaeus duroarum)的案例研究,并将结果与​​已知分布进行了比较。该模型成功地预测了GoM中已知的高丰度区域,包括那些没有数据输入到模型拟合中的区域。总体而言,该模型可靠地捕获了SEAMAP中观察到的大多数功能组的高和低丰度区域。此方法的结果允许跨建模域为众多功能组设置空间分布的客观设置,即使在可能不存在大量数据的情况下也是如此。

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