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分形景观法:一种测量区域受限搜索行为的替代方法。

Fractal landscape method: an alternative approach to measuring area-restricted searching behavior.

作者信息

Tremblay Yann, Roberts Antony J, Costa Daniel P

机构信息

University of California, Santa Cruz, Long Marine Laboratory, Center for Ocean Health, 100 Shaffer Road, Santa Cruz, CA 95060, USA.

出版信息

J Exp Biol. 2007 Mar;210(Pt 6):935-45. doi: 10.1242/jeb.02710.

Abstract

Quantifying spatial and temporal patterns of prey searching is of primary importance for understanding animals' critical habitat and foraging specialization. In patchy environments, animals forage by exhibiting movement patterns consisting of area-restricted searching (ARS) at various scales. Here, we present a new method, the fractal landscape method, which describes the peaks and valleys of fractal dimension along the animal path. We describe and test the method on simulated tracks, and quantify the effect of track inaccuracies. We show that the ARS zones correspond to the peaks from this fractal landscape and that the method is near error-free when analyzing high-resolution tracks, such as those obtained using the Global Positioning System (GPS). When we used tracks of lower resolution, such as those obtained with the Argos system, 9.6-16.3% of ARS were not identified, and 1-25% of the ARS were found erroneously. The later type of error can be partially flagged and corrected. In addition, track inaccuracies erroneously increased the measured ARS size by a factor of 1.2 to 2.2. Regardless, the majority of the times and locations were correctly flagged as being in or out of ARS (from 83.8 to 89.5% depending on track quality). The method provides a significant new tool for studies of animals' foraging behavior and habitat selection, because it provides a method to precisely quantify each ARS separately, which is not possible with existing methods.

摘要

量化猎物搜索的时空模式对于理解动物的关键栖息地和觅食专业化至关重要。在斑驳的环境中,动物通过展现出由不同尺度的区域限制搜索(ARS)组成的运动模式来觅食。在此,我们提出一种新方法——分形景观法,该方法描述沿着动物路径的分形维数的峰值和谷值。我们在模拟轨迹上描述并测试了该方法,并量化了轨迹误差的影响。我们表明,ARS区域对应于该分形景观的峰值,并且在分析高分辨率轨迹(例如使用全球定位系统(GPS)获得的轨迹)时,该方法几乎无误差。当我们使用较低分辨率的轨迹(例如通过Argos系统获得的轨迹)时,9.6 - 16.3%的ARS未被识别,并且1 - 25%的ARS被错误识别。后一种类型的误差可以部分标记并校正。此外,轨迹误差错误地将测量的ARS大小增加了1.2至2.2倍。尽管如此,大多数时间和位置被正确标记为处于或不处于ARS中(根据轨迹质量,从83.8%到89.5%)。该方法为动物觅食行为和栖息地选择的研究提供了一个重要的新工具,因为它提供了一种分别精确量化每个ARS的方法,这是现有方法无法做到的。

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