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Distorted-distance models for directional dispersal:a general framework with application to awind-dispersed tree

机译:定向传播的畸变距离模型:适用于风散树的通用框架

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1. Seed and pollen dispersal is often directionally biased, because of the inherent directionality of wind and many other dispersal vectors. Nevertheless, the vast majority of studies of seed and pollen dispersal fit isotropic dispersal kernels to data, implicitly assuming that dispersal is equally likely in all directions. 2. Here, we offer a flexible method for stochastic modelling of directional dispersal data. We show how anisotropic models can be constructed by combining standard dispersal functions with ‘distorted-distance functions’ that transform the circular contour lines of any isotropic dispersal kernel into non-circular shapes. Many existing anisotropic phenomenological models of seed and pollen dispersal are special cases of our framework. 3. We present functional forms for the specific case of elliptic distorted-distance functions, under which contour lines of the seed shadow become non-concentric, nested ellipses, and show how models using these functions can be constructed and parameterized. R-code is provided. 4. We applied the elliptic anisotropic models to characterize seed dispersal in the wind-dispersed Neotropical tree Luehea seemannii (Malvaceae) on Barro Colorado Island, Panama. We used inverse modelling to fit alternative models to data of seed rain into seed traps, the locations of seed traps and adult trees, and tree size. 5. Our anisotropic model performed considerably better than commonly applied isotropic models, revealing that seed dispersal of L. seemannii was strongly directional. The best-fitting model combined a 3-parameter elliptic distorted-distance function that captured the strong directional biases with a 1-parameter exponential dispersal kernel, a 1-parameter negative binomial probability distribution describing the clumping of seed rain and a 1-parameter function relating tree fecundity to tree diameter. 6. The framework presented in this paper enables more flexible and accurate modelling of directional dispersal data. It is applicable not only to studies of seed dispersal, but also to a wide range of other problems in which large numbers of particles disperse from one or more point sources.
机译:1.由于风和许多其他散布矢量的固有方向性,种子和花粉的散布通常是有方向性的。但是,绝大多数种子和花粉扩散研究都将各向同性扩散核适合于数据,隐含地假设在各个方向上扩散的可能性均等。 2.在这里,我们为定向分散数据的随机建模提供了一种灵活的方法。我们展示了如何通过将标准色散函数与“变形距离函数”相结合来构造各向异性模型,该函数将任何各向同性色散核的圆形轮廓线转换为非圆形形状。现有的许多种子和花粉扩散的各向异性现象学模型是我们框架的特例。 3.我们针对椭圆形失真距离函数的特定情况提供函数形式,在该函数形式下,种子阴影的轮廓线变为非同心的嵌套椭圆形,并说明如何构造和参数化使用这些函数的模型。提供了R代码。 4.我们应用椭圆各向异性模型来表征巴拿马巴罗科罗拉多岛上风散的新热带树Luehea seemannii(锦葵科)的种子散播。我们使用了逆向建模,以将替代模型拟合到种子陷阱中的种子雨数据,种子陷阱和成年树的位置以及树的大小。 5.我们的各向异性模型的性能比常用的各向同性模型好得多,这表明Seemannii种子的扩散是强方向性的。最佳拟合模型结合了捕获强方向偏差的3参数椭圆形失真距离函数,1参数指数弥散核,描述种子雨团聚的1参数负二项式概率分布和1参数函数将树木繁殖力与树木直径相关联。 6.本文介绍的框架使定向分散数据的建模更加灵活,准确。它不仅适用于种子散布的研究,而且适用于许多其他问题,这些问题中大量颗粒从一个或多个点源散布。

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