Institute of Integrative and Comparative Biology, LC Miall Building, University of Leeds, Leeds LS2 9JT, United Kingdom.
Ecol Appl. 2012 Apr;22(3):1004-14. doi: 10.1890/11-0536.1.
The measurement and prediction of species' populations at different spatial scales is crucial to spatial ecology as well as conservation biology. An efficient yet challenging goal to achieve such population estimates consists of recording empirical species' presence and absence at a specific regional scale and then trying to predict occupancies at finer scales. So far the majority of the methods have been based on particular species' distributional features deemed to be crucial for downscaling occupancy. However, only a minority of them have dealt explicitly with specific spatial features. Here we employ a wide class of spatial point processes, the shot noise Cox processes (SNCP), to model species occupancies at different spatial scales and show that species' spatial aggregation is crucial for predicting population estimates at fine scales starting from coarser ones. These models are formulated in continuous space and locate points regardless of the arbitrary resolution that one employs to study the spatial pattern. We compare the performances of nine models, calibrated at regional scales and demonstrate that a very simple class of SNCP, the Thomas process, is able to outperform other published models in predicting occupancies down to areas four orders of magnitude smaller than the ones employed for the parameterization. We conclude by explaining the ability of the approach to infer spatially explicit information from spatially implicit measures, the potential of the framework to combine niche and spatial models, and the possibility of reversing the method to allow upscaling.
在不同的空间尺度上测量和预测物种的种群数量对于空间生态学和保护生物学至关重要。实现这种种群估计的一个有效但具有挑战性的目标是在特定的区域尺度上记录物种的实际存在和不存在,然后尝试预测更细尺度上的占有情况。到目前为止,大多数方法都基于被认为对降尺度占有至关重要的特定物种分布特征。然而,只有少数方法明确涉及特定的空间特征。在这里,我们使用广泛的一类空间点过程,即射击噪声 Cox 过程(SNCP),来模拟不同空间尺度上的物种占有情况,并表明物种的空间聚集对于从较粗尺度预测细尺度上的种群估计至关重要。这些模型是在连续空间中构建的,无论研究空间模式时采用的任意分辨率如何,都可以定位点。我们比较了在区域尺度上校准的九个模型的性能,并证明了一种非常简单的 SNCP 类,即托马斯过程,能够在预测占有情况方面优于其他已发表的模型,预测范围比用于参数化的范围小四个数量级。最后,我们解释了该方法从空间隐含测度中推断空间显式信息的能力,该框架结合生态位和空间模型的潜力,以及该方法反转以允许上尺度化的可能性。