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首页> 外文期刊>Marine and Coastal Fisheries >Using Delta-Generalized Additive Models to Predict Spatial Distributions and Population Abundance of Juvenile Pink Shrimp in Tampa Bay, Florida
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Using Delta-Generalized Additive Models to Predict Spatial Distributions and Population Abundance of Juvenile Pink Shrimp in Tampa Bay, Florida

机译:使用德尔塔广义可加模型预测佛罗里达州坦帕湾幼粉红虾的空间分布和种群数量

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In this article, we present an approach based on generalized additive models (GAMs) to predict species' distributions and abundance in Florida estuaries with habitat suitability modeling. Environmental data gathered by fisheries-independent monitoring in Tampa Bay from 1998 to 2008 were interpolated to create seasonal habitat maps for temperature, salinity, and dissolved oxygen and annual maps for depth and bottom type. We used delta-GAM models assuming either zero-adjusted gamma or beta-inflated-at-zero distributions to predict catch per unit effort (CPUE) from five habitat variables plus gear type for each estuarine species by life stage and season. Bottom type and gear type were treated as categorical predictors with reference parameterization. Three spline-fitting procedures (the penalized B-spline, cubic smoothing spline, and restricted cubic spline) were applied to the continuous predictors. Two additive, linear submodels on the log and logistic scales were used to predict CPUEs >0 and CPUEs = 0, respectively, across environmental gradients. The best overall model among those estimated was identified based on the lowest Akaike information criterion. A stepwise routine was used to omit continuous predictors that had little predictive power. The model developed was then applied to interpolated habitat data to predict CPUEs across the estuary using GIS. The statistical models, coupled with the use of GIS, provide a method for predicting spatial distributions and population numbers of estuarine species' life stages. An example is presented for juvenile pink shrimp Farfantepenaeus duorarum during the summer in Tampa Bay, Florida.
机译:在本文中,我们提出一种基于广义加性模型(GAM)的方法,通过栖息地适宜性建模来预测佛罗里达河口物种的分布和丰度。对1998年至2008年坦帕湾独立于渔业的监测所收集的环境数据进行插值,以创建温度,盐度和溶解氧的季节性栖息地图,以及深度和底部类型的年度图。我们使用增量GAM模型(假设零调整的γ分布或β膨胀的零分布)从生命阶段和季节根据五个栖息地变量以及每个河口物种的渔具类型来预测每单位努力量(CPUE)。底部类型和齿轮类型被视为带有参考参数化的分类预测变量。将三个样条拟合程序(惩罚B样条,三次平滑样条和受限三次样条)应用于连续预测变量。使用对数和逻辑量表上的两个加性线性子模型分别在环境梯度上预测CPUE> 0和CPUE = 0。根据最低的Akaike信息标准,确定了估计的最佳总体模型。使用分步例程来省略具有很少预测能力的连续预测器。然后将开发的模型应用于插值栖息地数据,以使用GIS预测河口的CPUE。统计模型,再加上地理信息系统的使用,提供了一种预测河口物种生命阶段的空间分布和种群数量的方法。夏季,佛罗里达州坦帕湾的粉红色小虾Farfantepenaeus duorarum就是一个例子。

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