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Forecasting waterfowl population dynamics under climate change Does the spatial variation of density dependence and environmental effects matter?

机译:预测气候变化下的水禽种群动态密度依赖性和环境影响的空间变化重要吗?

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Reliable ecological forecasts are essential for conservation decision-making to respond to climate change. It is challenging to forecast the spatial structure of wildlife population dynamics because density dependence and environmental effects vary spatially. We developed models that incorporated density dependence and climatic (precipitation and temperature) effects to explain pond (wetland) dynamics and models that incorporated density dependence and pond effect to explain Mallard (Anas platyrhynchos) population dynamics. We trained the models using data from 1974 to 1998 and tested their hindcast performance with data from 1999 to 2010 to examine the scale at which the spatial variation of density dependence and climatic/pond effects should be incorporated to forecast pond and Mallard population dynamics. The pond model that did not allow density dependence and climatic effects to vary spatially (Delta MSE = 0.007-0.018) and the Mallard model that incorporated the spatial variation of density dependence and pond effect at the scale of Bird Conservation Regions (Delta MSE = 0.011-0.012) had the best hindcast performance. Using these models we forecasted the largest decrease (34.7%-43.0%) of Mallard density in the northern Prairie Pothole Region under two climate change scenarios, suggesting that the local Mallard population in this area might be particularly vulnerable to potential future warming. Our results provide insight into the factors that drive the spatial structure of waterfowl population dynamics. Because the spatial variation of density dependence and environmental effects is commonly found in wildlife populations, our framework of modeling and evaluation has wide application for conservation planning in response to climate change. (C) 2015 Elsevier Ltd. All rights reserved.
机译:可靠的生态预测对于保护决策应对气候变化至关重要。预测野生动植物种群动态的空间结构具有挑战性,因为密度依赖性和环境影响在空间上是变化的。我们开发了结合密度依赖性和气候(降水和温度)效应来解释池塘(湿地)动态的模型,并结合了密度依赖性和池塘效应来解释绿头鸭(Anas platyrhynchos)种群动态的模型。我们使用1974年至1998年的数据对模型进行了训练,并使用1999年至2010年的数据测试了它们的后播性能,以检验应将密度依赖性和气候/池塘效应的空间变化纳入预测池塘和野鸭种群动态的规模。不允许密度依赖性和气候影响在空间上变化的池塘模型(Delta MSE = 0.007-0.018)和在鸟类保护区范围内纳入密度依赖性和池塘效应的空间变化的Mallard模型(Delta MSE = 0.011) -0.012)具有最佳的后播性能。使用这些模型,我们预测了在两种气候变化情景下,北部草原坑洼地区的绿头鸭密度下降幅度最大(34.7%-43.0%),这表明该地区当地的绿头鸭种群可能特别容易受到未来变暖的影响。我们的结果提供了对驱动水禽种群动态空间结构的因素的深入了解。由于野生动物种群中普遍存在密度依赖性和环境影响的空间变化,因此我们的建模和评估框架已广泛应用于应对气候变化的保护规划。 (C)2015 Elsevier Ltd.保留所有权利。

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