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Bayesian spatial modeling of data from avian point count surveys

机译:禽点计数调查数据的贝叶斯空间建模

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We present a unified framework for modeling bird survey data collected at spatially replicated survey sites in the form of repeated counts or detection history counts, through which we model spatial dependence in bird density and variation in detection probabilities due to changes in covariates across the landscape. The models have a complex hierarchical structure that makes them suited to Bayesian analysis using Markov chain Monte Carlo (MCMC) algorithms. For computational efficiency, we use a form of conditional autogressive model for modeling spatial dependence. We apply the models to survey data for two bird species in the Great Smoky Mountains National Park. The algorithms converge well for the more abundant and easily detected of the two species, but some simplification of the spatial model is required for convergence for the second species. We show how these methods lead to maps of estimated relative density which are an improvement over those that would follow from past approaches that ignored spatial dependence. This work also highlights the importance of good survey design for bird species mapping studies.
机译:我们提供了一个统一的框架,用于以重复计数或检测历史计数的形式对在空间复制的调查站点收集的鸟类调查数据进行建模,通过该模型,我们可以对鸟类密度的空间依赖性以及由于景观中协变量的变化而导致的检测概率变化进行建模。这些模型具有复杂的层次结构,使其适合使用马尔可夫链蒙特卡洛(MCMC)算法进行贝叶斯分析。为了提高计算效率,我们使用一种条件自激模型来建模空间依赖性。我们将模型应用于大烟山国家公园中两种鸟类的调查数据。对于两个物种的更丰富且更容易检测的算法,它们很好地收敛,但是对于第二个物种的收敛,需要对空间模型进行一些简化。我们展示了这些方法如何导致估计的相对密度图,这是对过去忽略空间依赖性的方法的改进。这项工作还强调了良好的调查设计对于鸟类物种作图研究的重要性。

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