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间歇性反平方 Lévy 行走对于寻找各种大小的目标是最优的。

Intermittent inverse-square Lévy walks are optimal for finding targets of all sizes.

作者信息

Guinard Brieuc, Korman Amos

机构信息

IRIF, CNRS and University of Paris, Paris, France.

出版信息

Sci Adv. 2021 Apr 9;7(15). doi: 10.1126/sciadv.abe8211. Print 2021 Apr.

Abstract

Lévy walks are random walk processes whose step lengths follow a long-tailed power-law distribution. Because of their abundance as movement patterns of biological organisms, substantial theoretical efforts have been devoted to identifying the foraging circumstances that would make such patterns advantageous. However, despite extensive research, there is currently no mathematical proof indicating that Lévy walks are, in any manner, preferable strategies in higher dimensions than one. Here, we prove that in finite two-dimensional terrains, the inverse-square Lévy walk strategy is extremely efficient at finding sparse targets of arbitrary size and shape. Moreover, this holds even under the weak model of intermittent detection. Conversely, any other intermittent Lévy walk fails to efficiently find either large targets or small ones. Our results shed new light on the Lévy foraging hypothesis and are thus expected to affect future experiments on animals performing Lévy walks.

摘要

莱维游走是一种随机游走过程,其步长遵循长尾幂律分布。由于它们作为生物运动模式的普遍性,大量的理论工作致力于确定使这种模式具有优势的觅食环境。然而,尽管进行了广泛的研究,但目前尚无数学证明表明莱维游走在任何维度上比一维更具优势。在此,我们证明在有限的二维地形中,平方反比莱维游走策略在寻找任意大小和形状的稀疏目标时极其高效。此外,即使在间歇性检测的弱模型下也是如此。相反,任何其他间歇性莱维游走都无法有效地找到大目标或小目标。我们的结果为莱维觅食假说提供了新的见解,因此预计会影响未来对进行莱维游走的动物的实验。

https://cdn.ncbi.nlm.nih.gov/pmc/blobs/c76c/8034848/0f5159efb032/abe8211-F1.jpg

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